A Hybrid Model for Stock Index Forecasting Integrating Adaptive Frequency-Domain Decomposition and Enhanced Transformer Encoder
Abstract
1. Introduction
2. Related Work
2.1. Research on the Decomposition–Forecasting Paradigm in Stock Prediction
2.2. Application of Frequency-Domain Decomposition Methods to Financial Time Series
2.3. Transformer Architecture and Its Application in Stock Prediction
3. Method
3.1. Frequency-Adaptive Decomposition Module
3.2. Enhanced Transformer Predictor Module
3.3. Feature Fusion Module
3.4. The Process of the Proposed Model
| Algorithm 1: Overall Forecasting Procedure |
| Input: Historical multivariate time series ; |
| prediction horizon H; number of dominant periods k; |
| patch length P; stride S |
| Output: Forecasted sequence |
| 1 Input normalization |
| 2 |
| 3 |
| 4 |
| 5 Frequency-adaptive decomposition |
| 6 |
| 7 |
| 8 |
| 9 |
| 10 Dual-branch forecasting |
| 11 |
| 12 |
| 13 Frequency-aware fusion |
| 14 |
| 15 |
| 16 |
| 17 |
| 18 |
| 19 De-normalization |
| 20 |
| 21 |
4. Experimental Design
4.1. Data Experiment Settings
4.2. Evaluation Metrics
4.3. Baseline Models
4.4. Experiment Design and Objectives
- (1)
- Multi-step prediction accuracy comparison against baseline models. FAMS-Transformer is compared with 15 baselines—LSTM, SVR, Transformer, Autoformer, Informer, FEDformer, TimesNet, FreTS, DLinear, Koopa, LightTS, FiLM, PatchTST, iTransformer, and TiDE—across four prediction horizons (1 step, 5 steps, 10 steps, and 15 steps), to assess whether it outperforms all baselines in every setting.
- (2)
- Cross-market validation. The core comparison is replicated on the S & P 500 index under identical prediction settings to examine whether the performance advantage of FAMS-Transformer generalizes across different market environments.
- (3)
- Significance testing. Paired t-tests and Wilcoxon signed-rank tests are conducted on per-sample prediction errors to determine whether the performance advantage of FAMS-Transformer over each baseline is statistically significant.
- (4)
- Volatility-regime analysis. Test samples within each dataset are partitioned into low-volatility (below the first quartile, Q1), medium-volatility (between Q1 and the median, Q2), and high-volatility (above Q2) regimes based on historical volatility. Model performance is evaluated independently within each regime to verify whether FAMS-Transformer maintains its advantage across varying volatility conditions.
- (5)
- Ablation experiments. Three progressively structured groups of ablation variants are designed to quantify the independent contribution of each core component and to validate specific design choices.
5. Experimental Results and Discussion
5.1. Comparison with Baseline Models
5.2. Verification of S & P 500 Data Set
5.3. Significance Testing
5.4. Volatility-Regime Analysis
5.5. Ablation Experiment
- (1)
- Module necessity ablation. As shown in Table 8, the full model outperforms all ablation variants across the three datasets, confirming the complementary relationship between the two core modules. Taking SSE 15-step prediction as an example: the full model achieves R2 = 0.730; removing the decomposition module (w/o Decomp) reduces it to 0.718; removing the intermediate convolution (w/o Conv) reduces it to 0.726; and removing both (w/o Both) reduces it to 0.715. The independent R2 increment of the decomposition module (ΔR2 ≈ 0.012) and that of the convolutional module (ΔR2 ≈ 0.004) are each numerically modest. However, their joint contribution (ΔR2 = 0.015, full model vs. w/o Both) exceeds either independent increment, indicating a complementary relationship: the decomposition module provides structurally separated trend and fluctuation components, upon which the convolutional module extracts local patterns, with the combined effect exceeding the sum of their individual contributions. Among these, the decomposition module provides a modest but consistent contribution across most settings, and the model’s final performance should be understood as the result of the joint operation of multi-scale decomposition, local feature extraction, period selection, and the fusion mechanism.
- (2)
- Local-feature mechanism design ablation. As shown in Table 9, depthwise separable convolution yields better average error metrics than standard convolution across all three datasets while requiring fewer parameters and lower FLOPs, suggesting that the channel-mixing capacity of standard convolution does not translate into improved predictive performance in this setting and instead introduces additional computational overhead. Dilated depthwise convolution performs comparably to, but does not consistently surpass, the standard depthwise separable version, indicating that simply expanding the receptive field does not reliably improve forecasting performance on financial time series.
- (3)
- Period-selection strategy ablation. As shown in Table 8, the adaptive period strategy adopted in this paper yields R2 values nearly identical to those of the fixed period strategy (SSE pl = 1: 0.9592 vs. 0.9593), whereas random period assignment leads to a systematic performance degradation (a drop of 0.0020 on SSE pl = 1). This result indicates that the period information extracted by adaptive FFT captures genuine periodic structure rather than passively fitting noise specific to individual windows. If the adaptive mechanism were merely fitting noise, randomizing the period would not cause systematic degradation and cases in which random outperforms adaptive would be expected. The core value of the adaptive period strategy lies in its ability to automatically achieve strong predictive accuracy in a data-driven manner: the period parameter is determined entirely by the frequency-domain characteristics of each input window, requiring no manual specification.
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ARIMA | Autoregressive Integrated Moving Average |
| ASDH | Adaptive Selection Decomposition Hybrid |
| BiLSTM | Bidirectional Long Short-Term Memory |
| CEEMDAN | Complete Ensemble Empirical Mode Decomposition with Adaptive Noise |
| CoML | Committee of Multi-Scale Nonlinear Learning |
| CPO | Crested Porcupine Optimizer |
| EEMD | Ensemble Empirical Mode Decomposition |
| EMD | Empirical Mode Decomposition |
| FAMS | Frequency-Aware Multi-Scale |
| FEDformer | Frequency Enhanced Decomposed Transformer |
| FFT | Fast Fourier Transform |
| FiLM | Frequency Improved Legendre Memory |
| GABP | Genetic Algorithm Back Propagation |
| GARCH | Generalized Autoregressive Conditional Heteroskedasticity |
| IMF | Intrinsic Mode Function |
| KNN | K-Nearest Neighbors |
| LSTM | Long Short-Term Memory |
| MAE | Mean Absolute Error |
| MAPE | Mean Absolute Percentage Error |
| MDCM | Multi-Scale Dilated Convolution Module |
| MLP | Multilayer Perceptron |
| MSPE | Mean Square Percentage Error |
| R2 | Coefficient of Determination |
| RMSE | Root Mean Square Error |
| SME 100 | Small and Medium Enterprises 100 Index |
| SSE | Shanghai Stock Exchange Composite Index |
| SVR | Support Vector Regression |
| SZSE | Shenzhen Stock Exchange Component Index) |
| VMD | Variational Mode Decomposition |
| WT | Wavelet Transform |
Appendix A
| Model | SSE | SP500 | SZSE | SMESE | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 Step | 5 Steps | 10 Steps | 15 Steps | 1 Step | 5 Steps | 10 Steps | 15 Steps | 1 Step | 5 Steps | 10 Steps | 15 Steps | 1 Step | 5 Steps | 10 Steps | 15 Steps | |
| OurModel | 0.5206 | 0.5241 | 0.5226 | 0.5167 | 0.5267 | 0.5302 | 0.5211 | 0.5112 | 0.5245 | 0.5101 | 0.5166 | 0.5093 | 0.5245 | 0.5192 | 0.51 | 0.5173 |
| Autoformer | 0.5245 | 0.5174 | 0.5086 | 0.4876 | 0.48 | 0.4969 | 0.5044 | 0.4551 | 0.5039 | 0.5008 | 0.4954 | 0.4587 | 0.5155 | 0.4997 | 0.4986 | 0.4792 |
| DLinear | 0.5039 | 0.5197 | 0.5196 | 0.5011 | 0.48 | 0.4378 | 0.4289 | 0.4179 | 0.491 | 0.5161 | 0.5167 | 0.4809 | 0.4845 | 0.5168 | 0.516 | 0.4848 |
| FEDformer | 0.5026 | 0.5003 | 0.488 | 0.4637 | 0.4911 | 0.4738 | 0.4584 | 0.4597 | 0.4871 | 0.4617 | 0.4558 | 0.4331 | 0.4884 | 0.4754 | 0.4735 | 0.4525 |
| FiLM | 0.4987 | 0.4891 | 0.4967 | 0.4886 | 0.4866 | 0.4946 | 0.4583 | 0.4425 | 0.4858 | 0.4598 | 0.4802 | 0.4731 | 0.4781 | 0.4671 | 0.4949 | 0.4835 |
| FreTS | 0.4871 | 0.4992 | 0.5116 | 0.5079 | 0.4911 | 0.4993 | 0.4323 | 0.4156 | 0.4858 | 0.4738 | 0.5125 | 0.505 | 0.509 | 0.4868 | 0.5126 | 0.5007 |
| Informer | 0.509 | 0.4997 | 0.5177 | 0.5125 | 0.4543 | 0.4179 | 0.3989 | 0.3777 | 0.4729 | 0.4782 | 0.4825 | 0.4912 | 0.4961 | 0.4837 | 0.4907 | 0.5017 |
| Koopa | 0.4974 | 0.5067 | 0.5043 | 0.4932 | 0.4811 | 0.5007 | 0.4777 | 0.4668 | 0.5052 | 0.4961 | 0.4756 | 0.4801 | 0.518 | 0.4917 | 0.4832 | 0.489 |
| LightTS | 0.5116 | 0.5044 | 0.5159 | 0.525 | 0.4399 | 0.4434 | 0.4127 | 0.3925 | 0.4781 | 0.4702 | 0.537 | 0.537 | 0.4897 | 0.4782 | 0.5282 | 0.5262 |
| Lstm | 0.518 | 0.5088 | 0.5026 | 0.5297 | 0.4543 | 0.4179 | 0.3989 | 0.3777 | 0.4832 | 0.4795 | 0.4722 | 0.521 | 0.4884 | 0.4707 | 0.4836 | 0.5148 |
| PatchTST | 0.4807 | 0.4992 | 0.5025 | 0.4959 | 0.4889 | 0.4805 | 0.462 | 0.4477 | 0.4948 | 0.4801 | 0.5027 | 0.4945 | 0.5103 | 0.4917 | 0.513 | 0.5092 |
| SVR | 0.5013 | 0.5171 | 0.528 | 0.5283 | 0.4543 | 0.4179 | 0.3989 | 0.3777 | 0.4897 | 0.4982 | 0.4982 | 0.5035 | 0.5064 | 0.5039 | 0.5021 | 0.5031 |
| TiDE | 0.5193 | 0.4972 | 0.4988 | 0.4928 | 0.4967 | 0.4682 | 0.4614 | 0.4483 | 0.4974 | 0.4731 | 0.4759 | 0.4703 | 0.5013 | 0.4816 | 0.4854 | 0.4822 |
| TimesNet | 0.5116 | 0.5132 | 0.5117 | 0.5129 | 0.4911 | 0.4902 | 0.47 | 0.4925 | 0.5077 | 0.4679 | 0.4691 | 0.4809 | 0.4948 | 0.4811 | 0.4902 | 0.4738 |
| Transformer | 0.5 | 0.5026 | 0.4992 | 0.483 | 0.4543 | 0.4179 | 0.3989 | 0.3777 | 0.4729 | 0.471 | 0.4549 | 0.4476 | 0.5077 | 0.4899 | 0.4782 | 0.4823 |
| iTransformer | 0.491 | 0.5023 | 0.5168 | 0.5004 | 0.4933 | 0.4859 | 0.4659 | 0.4476 | 0.5026 | 0.4938 | 0.5134 | 0.5033 | 0.5039 | 0.5127 | 0.522 | 0.5154 |
| Model | Low | Medium | High | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | ||
| 1 step | OurModel | 0.988 | 16.777 | 21.749 | 0.540 | 0.969 | 24.630 | 30.937 | 0.766 | 0.900 | 37.794 | 54.709 | 1.199 |
| Autoformer | 0.802 | 73.504 | 90.157 | 2.380 | 0.675 | 77.240 | 100.594 | 2.393 | 0.645 | 75.690 | 103.051 | 2.367 | |
| DLinear | 0.900 | 54.631 | 64.068 | 1.796 | 0.830 | 59.378 | 72.759 | 1.855 | 0.512 | 91.005 | 120.689 | 2.876 | |
| FEDformer | 0.814 | 73.303 | 87.335 | 2.398 | 0.816 | 59.613 | 75.783 | 1.862 | 0.536 | 91.950 | 117.787 | 2.897 | |
| FiLM | 0.894 | 56.049 | 65.938 | 1.833 | 0.789 | 65.316 | 81.065 | 2.042 | 0.359 | 109.123 | 138.374 | 3.444 | |
| FreTS | 0.980 | 22.986 | 28.476 | 0.752 | 0.965 | 25.848 | 32.980 | 0.807 | 0.889 | 39.242 | 57.552 | 1.244 | |
| Informer | 0.058 | 154.710 | 196.491 | 5.210 | 0.230 | 126.328 | 154.943 | 4.018 | −0.219 | 163.563 | 190.832 | 5.288 | |
| Koopa | 0.967 | 29.309 | 36.644 | 0.941 | 0.930 | 37.506 | 46.855 | 1.161 | 0.681 | 67.787 | 97.546 | 2.134 | |
| LightTS | 0.941 | 41.245 | 49.271 | 1.344 | 0.890 | 48.702 | 58.677 | 1.526 | 0.671 | 71.192 | 99.155 | 2.245 | |
| Lstm | 0.576 | 109.657 | 131.893 | 3.577 | 0.544 | 99.418 | 119.261 | 3.092 | 0.152 | 130.071 | 159.158 | 4.080 | |
| PatchTST | 0.987 | 18.212 | 22.807 | 0.586 | 0.969 | 24.445 | 31.030 | 0.761 | 0.893 | 40.241 | 56.661 | 1.276 | |
| SVR | −1.806 | 290.832 | 339.146 | 9.698 | −0.720 | 190.430 | 231.592 | 6.061 | −1.120 | 203.285 | 251.643 | 6.652 | |
| TiDE | 0.948 | 37.938 | 46.167 | 1.230 | 0.873 | 50.547 | 62.851 | 1.572 | 0.642 | 74.823 | 103.358 | 2.369 | |
| TimesNet | 0.913 | 48.825 | 59.775 | 1.577 | 0.813 | 59.797 | 76.319 | 1.845 | 0.483 | 93.640 | 124.226 | 2.952 | |
| Transformer | 0.553 | 106.910 | 135.381 | 3.510 | 0.708 | 75.137 | 95.358 | 2.322 | 0.793 | 62.650 | 78.579 | 2.000 | |
| iTransformer | 0.986 | 18.961 | 24.027 | 0.613 | 0.966 | 25.765 | 32.611 | 0.801 | 0.893 | 38.750 | 56.601 | 1.230 | |
| 5 steps | OurModel | 0.941 | 38.819 | 47.511 | 1.262 | 0.848 | 49.694 | 62.065 | 1.553 | 0.633 | 79.280 | 114.811 | 2.503 |
| Autoformer | 0.634 | 96.348 | 118.030 | 3.115 | 0.417 | 94.092 | 121.726 | 2.919 | 0.463 | 106.637 | 139.017 | 3.330 | |
| DLinear | 0.550 | 111.394 | 130.966 | 3.494 | −0.097 | 144.965 | 166.930 | 4.445 | −0.162 | 158.419 | 204.385 | 4.897 | |
| FEDformer | 0.589 | 105.034 | 125.167 | 3.441 | 0.427 | 96.870 | 120.672 | 3.022 | 0.210 | 125.787 | 168.562 | 3.936 | |
| FiLM | 0.847 | 65.552 | 76.383 | 2.161 | 0.697 | 71.204 | 87.771 | 2.240 | 0.365 | 119.841 | 151.061 | 3.781 | |
| FreTS | 0.904 | 50.287 | 60.613 | 1.665 | 0.826 | 53.077 | 66.456 | 1.671 | 0.617 | 80.825 | 117.298 | 2.551 | |
| Informer | 0.295 | 133.330 | 163.876 | 4.386 | 0.184 | 121.745 | 143.961 | 3.801 | 0.372 | 127.499 | 150.296 | 4.045 | |
| Koopa | 0.927 | 43.802 | 52.716 | 1.432 | 0.808 | 56.693 | 69.789 | 1.777 | 0.560 | 86.769 | 125.774 | 2.737 | |
| LightTS | 0.923 | 42.829 | 54.000 | 1.381 | 0.786 | 60.295 | 73.761 | 1.874 | 0.557 | 91.159 | 126.262 | 2.861 | |
| Lstm | 0.545 | 110.688 | 131.625 | 3.554 | 0.178 | 127.006 | 144.532 | 3.920 | 0.329 | 124.680 | 155.350 | 3.878 | |
| PatchTST | 0.941 | 39.500 | 47.420 | 1.284 | 0.844 | 50.249 | 63.037 | 1.572 | 0.599 | 83.923 | 120.036 | 2.648 | |
| SVR | −1.562 | 267.112 | 312.389 | 8.919 | −0.712 | 168.247 | 208.574 | 5.367 | −0.623 | 194.300 | 241.557 | 6.307 | |
| TiDE | 0.788 | 76.083 | 89.936 | 2.479 | 0.480 | 92.746 | 114.986 | 2.890 | −0.092 | 154.645 | 198.148 | 4.846 | |
| TimesNet | 0.870 | 59.473 | 70.413 | 1.937 | 0.685 | 72.899 | 89.459 | 2.279 | 0.165 | 130.226 | 173.304 | 4.086 | |
| Transformer | 0.459 | 112.999 | 143.514 | 3.727 | 0.617 | 79.625 | 98.658 | 2.480 | 0.693 | 80.002 | 104.989 | 2.520 | |
| iTransformer | 0.936 | 41.017 | 49.400 | 1.334 | 0.847 | 50.102 | 62.347 | 1.567 | 0.597 | 80.984 | 120.376 | 2.553 | |
| 10 steps | OurModel | 0.903 | 54.038 | 63.772 | 1.758 | 0.705 | 67.408 | 83.126 | 2.122 | 0.273 | 113.955 | 154.228 | 3.587 |
| Autoformer | 0.489 | 118.347 | 146.638 | 3.805 | −0.057 | 121.489 | 157.280 | 3.797 | −0.255 | 160.337 | 202.685 | 5.047 | |
| DLinear | 0.584 | 106.098 | 132.364 | 3.295 | −0.243 | 144.522 | 170.575 | 4.438 | −0.415 | 160.943 | 215.173 | 4.979 | |
| FEDformer | 0.644 | 104.624 | 122.358 | 3.427 | 0.337 | 99.771 | 124.564 | 3.143 | −0.362 | 168.935 | 211.175 | 5.294 | |
| FiLM | 0.867 | 64.435 | 74.851 | 2.099 | 0.620 | 76.291 | 94.331 | 2.388 | 0.046 | 134.273 | 176.704 | 4.217 | |
| FreTS | 0.872 | 61.637 | 73.390 | 2.016 | 0.710 | 69.078 | 82.370 | 2.170 | 0.370 | 107.516 | 143.574 | 3.378 | |
| Informer | 0.189 | 146.963 | 184.695 | 4.796 | −0.008 | 126.121 | 153.603 | 3.958 | 0.218 | 136.159 | 159.984 | 4.324 | |
| Koopa | 0.869 | 64.018 | 74.349 | 2.091 | 0.684 | 69.525 | 85.955 | 2.189 | 0.314 | 108.309 | 149.866 | 3.429 | |
| LightTS | 0.896 | 51.323 | 66.011 | 1.652 | 0.713 | 68.915 | 81.974 | 2.158 | 0.314 | 109.281 | 149.834 | 3.432 | |
| Lstm | 0.004 | 162.253 | 204.664 | 5.433 | 0.237 | 103.728 | 133.632 | 3.320 | 0.186 | 133.283 | 163.253 | 4.299 | |
| PatchTST | 0.901 | 54.285 | 64.453 | 1.762 | 0.697 | 69.054 | 84.180 | 2.170 | 0.208 | 121.269 | 161.048 | 3.818 | |
| SVR | −0.847 | 237.443 | 278.756 | 7.876 | −0.475 | 147.288 | 185.803 | 4.711 | −0.457 | 172.179 | 218.406 | 5.593 | |
| TiDE | 0.830 | 73.379 | 84.461 | 2.402 | 0.609 | 77.855 | 95.685 | 2.439 | −0.059 | 144.377 | 186.146 | 4.538 | |
| TimesNet | 0.844 | 69.058 | 81.041 | 2.237 | 0.505 | 86.684 | 107.599 | 2.701 | −0.222 | 150.119 | 199.995 | 4.681 | |
| Transformer | 0.355 | 129.178 | 164.764 | 4.277 | 0.478 | 87.397 | 110.542 | 2.760 | 0.552 | 95.869 | 121.085 | 3.062 | |
| iTransformer | 0.892 | 58.482 | 67.425 | 1.901 | 0.716 | 66.625 | 81.574 | 2.096 | 0.243 | 113.190 | 157.448 | 3.559 | |
| 15 steps | OurModel | 0.859 | 70.479 | 80.933 | 2.294 | 0.562 | 75.809 | 93.319 | 2.387 | −0.128 | 143.975 | 184.619 | 4.536 |
| Autoformer | 0.468 | 126.041 | 157.078 | 4.026 | −0.651 | 143.326 | 181.170 | 4.499 | −0.382 | 163.779 | 204.302 | 5.123 | |
| DLinear | 0.735 | 95.309 | 110.922 | 3.148 | 0.378 | 92.015 | 111.153 | 2.903 | −0.339 | 163.920 | 201.120 | 5.160 | |
| FEDformer | 0.592 | 119.434 | 137.470 | 3.925 | 0.022 | 116.779 | 139.413 | 3.694 | −0.763 | 194.840 | 230.819 | 6.135 | |
| FiLM | 0.830 | 76.705 | 88.663 | 2.506 | 0.422 | 88.071 | 107.225 | 2.765 | −0.351 | 161.426 | 202.029 | 5.067 | |
| FreTS | 0.814 | 78.774 | 92.864 | 2.560 | 0.566 | 77.151 | 92.877 | 2.417 | 0.083 | 122.632 | 166.454 | 3.866 | |
| Informer | 0.259 | 150.509 | 185.411 | 4.871 | −0.141 | 126.888 | 150.577 | 4.000 | 0.098 | 141.386 | 165.103 | 4.486 | |
| Koopa | 0.854 | 69.565 | 82.291 | 2.259 | 0.477 | 82.905 | 101.963 | 2.595 | −0.143 | 145.579 | 185.838 | 4.577 | |
| LightTS | 0.829 | 73.144 | 89.074 | 2.377 | 0.517 | 81.317 | 97.944 | 2.549 | 0.010 | 131.664 | 172.952 | 4.155 | |
| Lstm | 0.423 | 131.572 | 163.635 | 4.314 | 0.339 | 92.704 | 114.633 | 2.942 | 0.327 | 117.800 | 142.607 | 3.775 | |
| PatchTST | 0.859 | 70.313 | 80.982 | 2.287 | 0.556 | 77.330 | 93.955 | 2.434 | −0.202 | 148.621 | 190.527 | 4.674 | |
| SVR | −0.544 | 227.195 | 267.542 | 7.475 | −0.397 | 131.167 | 166.647 | 4.224 | −0.355 | 157.203 | 202.293 | 5.115 | |
| TiDE | 0.821 | 78.313 | 91.155 | 2.561 | 0.412 | 88.901 | 108.092 | 2.793 | −0.409 | 166.162 | 206.295 | 5.219 | |
| TimesNet | 0.790 | 81.368 | 98.573 | 2.657 | 0.157 | 103.644 | 129.411 | 3.241 | −0.529 | 170.432 | 214.945 | 5.324 | |
| Transformer | 0.379 | 137.319 | 169.696 | 4.461 | 0.336 | 95.774 | 114.903 | 3.027 | 0.493 | 99.630 | 123.802 | 3.174 | |
| iTransformer | 0.857 | 70.825 | 81.297 | 2.302 | 0.563 | 76.344 | 93.251 | 2.399 | −0.107 | 139.054 | 182.843 | 4.381 | |
| Model | Low | Medium | High | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | ||
| 1 step | OurModel | 0.994 | 83.164 | 105.512 | 0.781 | 0.993 | 116.663 | 150.602 | 1.054 | 0.956 | 173.246 | 257.992 | 1.637 |
| Autoformer | 0.928 | 281.764 | 363.855 | 2.660 | 0.949 | 326.837 | 413.662 | 2.972 | 0.811 | 383.833 | 535.405 | 3.621 | |
| DLinear | 0.937 | 291.603 | 341.314 | 2.834 | 0.952 | 332.121 | 401.975 | 3.097 | 0.786 | 425.763 | 569.549 | 4.002 | |
| FEDformer | 0.919 | 315.599 | 386.191 | 3.048 | 0.947 | 344.444 | 423.296 | 3.162 | 0.778 | 453.729 | 580.416 | 4.228 | |
| FiLM | 0.927 | 309.069 | 367.309 | 2.964 | 0.933 | 387.962 | 474.707 | 3.533 | 0.692 | 524.741 | 683.426 | 4.884 | |
| FreTS | 0.990 | 112.387 | 137.032 | 1.090 | 0.992 | 129.534 | 159.479 | 1.202 | 0.953 | 181.207 | 266.976 | 1.723 | |
| Informer | −0.449 | 1421.353 | 1634.282 | 14.321 | 0.120 | 1513.941 | 1717.201 | 15.158 | −1.031 | 1627.552 | 1753.467 | 16.106 | |
| Koopa | 0.983 | 138.184 | 175.584 | 1.285 | 0.983 | 190.322 | 237.440 | 1.730 | 0.882 | 292.911 | 423.292 | 2.744 | |
| LightTS | 0.961 | 225.498 | 268.166 | 2.185 | 0.976 | 229.764 | 284.032 | 2.173 | 0.857 | 345.167 | 465.839 | 3.256 | |
| Lstm | −0.077 | 1080.988 | 1409.105 | 11.100 | 0.140 | 1465.799 | 1697.605 | 14.537 | −1.112 | 1561.856 | 1788.246 | 15.551 | |
| PatchTST | 0.993 | 87.316 | 111.166 | 0.820 | 0.994 | 110.027 | 142.569 | 0.996 | 0.954 | 184.385 | 263.243 | 1.744 | |
| SVR | −0.429 | 1259.521 | 1623.370 | 12.830 | −0.018 | 1570.417 | 1846.683 | 15.232 | −0.546 | 1240.730 | 1530.266 | 12.641 | |
| TiDE | 0.964 | 212.417 | 255.880 | 2.018 | 0.969 | 252.670 | 323.032 | 2.282 | 0.842 | 348.066 | 489.645 | 3.278 | |
| TimesNet | 0.943 | 265.625 | 324.201 | 2.496 | 0.954 | 308.161 | 391.902 | 2.781 | 0.804 | 398.501 | 545.450 | 3.737 | |
| Transformer | −0.272 | 1264.250 | 1531.305 | 12.859 | 0.178 | 1399.981 | 1659.734 | 14.079 | −0.851 | 1442.257 | 1674.261 | 14.521 | |
| iTransformer | 0.992 | 97.670 | 122.682 | 0.923 | 0.992 | 129.172 | 165.707 | 1.171 | 0.955 | 182.642 | 262.014 | 1.725 | |
| 5 steps | OurModel | 0.963 | 195.681 | 245.609 | 1.859 | 0.961 | 265.907 | 334.353 | 2.444 | 0.853 | 373.325 | 540.487 | 3.497 |
| Autoformer | 0.861 | 388.675 | 479.403 | 3.660 | 0.892 | 449.904 | 559.852 | 4.055 | 0.747 | 511.907 | 710.332 | 4.774 | |
| DLinear | 0.829 | 419.483 | 531.872 | 3.729 | 0.866 | 474.048 | 623.382 | 4.171 | 0.608 | 675.869 | 884.331 | 6.255 | |
| FEDformer | 0.777 | 520.858 | 606.666 | 5.080 | 0.867 | 518.039 | 621.548 | 4.714 | 0.665 | 618.842 | 816.636 | 5.708 | |
| FiLM | 0.889 | 363.290 | 427.669 | 3.517 | 0.895 | 449.851 | 551.129 | 4.123 | 0.706 | 587.973 | 764.968 | 5.446 | |
| FreTS | 0.940 | 262.849 | 315.140 | 2.582 | 0.958 | 283.234 | 348.091 | 2.689 | 0.848 | 384.839 | 549.774 | 3.636 | |
| Informer | −0.368 | 1201.104 | 1502.535 | 12.331 | −0.001 | 1488.158 | 1702.805 | 14.891 | −0.493 | 1596.494 | 1725.110 | 15.677 | |
| Koopa | 0.945 | 244.848 | 302.569 | 2.342 | 0.949 | 305.608 | 385.836 | 2.787 | 0.830 | 402.599 | 582.731 | 3.759 | |
| LightTS | 0.947 | 247.211 | 295.618 | 2.371 | 0.948 | 311.280 | 388.935 | 2.887 | 0.833 | 422.357 | 577.425 | 3.922 | |
| Lstm | −0.316 | 1242.099 | 1473.679 | 12.583 | 0.108 | 1377.917 | 1607.288 | 13.849 | −0.310 | 1475.723 | 1615.765 | 14.517 | |
| PatchTST | 0.964 | 195.681 | 243.913 | 1.858 | 0.960 | 275.171 | 342.374 | 2.537 | 0.839 | 394.977 | 566.997 | 3.697 | |
| SVR | −0.418 | 1185.776 | 1529.739 | 12.165 | −0.021 | 1449.971 | 1719.820 | 14.215 | −0.189 | 1242.160 | 1539.469 | 12.319 | |
| TiDE | 0.864 | 387.685 | 473.767 | 3.701 | 0.851 | 539.993 | 657.157 | 4.916 | 0.516 | 764.428 | 982.407 | 7.089 | |
| TimesNet | 0.897 | 347.596 | 411.648 | 3.328 | 0.900 | 443.257 | 539.412 | 4.018 | 0.645 | 632.676 | 840.741 | 5.888 | |
| Transformer | −0.451 | 1268.735 | 1547.812 | 12.992 | 0.036 | 1412.432 | 1670.570 | 14.327 | −0.449 | 1522.578 | 1699.601 | 15.072 | |
| iTransformer | 0.961 | 201.666 | 252.979 | 1.917 | 0.961 | 270.617 | 335.076 | 2.489 | 0.846 | 377.824 | 554.529 | 3.538 | |
| 10 steps | OurModel | 0.922 | 292.494 | 356.016 | 2.780 | 0.928 | 367.050 | 458.140 | 3.362 | 0.675 | 551.348 | 740.735 | 5.149 |
| Autoformer | 0.748 | 504.609 | 641.203 | 4.783 | 0.769 | 655.575 | 821.125 | 6.061 | 0.388 | 798.000 | 1017.013 | 7.485 | |
| DLinear | 0.801 | 437.441 | 569.832 | 3.906 | 0.847 | 505.340 | 667.032 | 4.470 | 0.472 | 708.593 | 945.138 | 6.590 | |
| FEDformer | 0.789 | 491.381 | 586.675 | 4.776 | 0.788 | 651.944 | 786.326 | 6.037 | 0.353 | 828.403 | 1046.204 | 7.672 | |
| FiLM | 0.900 | 344.525 | 404.280 | 3.277 | 0.902 | 431.014 | 534.146 | 3.950 | 0.559 | 649.633 | 863.137 | 6.052 | |
| FreTS | 0.895 | 345.946 | 413.595 | 3.370 | 0.935 | 359.606 | 434.920 | 3.433 | 0.732 | 502.619 | 673.147 | 4.749 | |
| Informer | −0.561 | 1269.006 | 1595.413 | 13.009 | −0.133 | 1609.074 | 1817.937 | 15.992 | −0.869 | 1639.881 | 1777.434 | 16.180 | |
| Koopa | 0.893 | 359.707 | 418.535 | 3.442 | 0.911 | 418.694 | 510.793 | 3.851 | 0.685 | 532.905 | 729.623 | 5.002 | |
| LightTS | 0.903 | 325.625 | 398.016 | 3.127 | 0.935 | 356.668 | 436.252 | 3.335 | 0.765 | 469.852 | 629.868 | 4.439 | |
| Lstm | −0.876 | 1460.096 | 1749.128 | 14.855 | −0.237 | 1654.682 | 1899.523 | 16.596 | −0.907 | 1603.532 | 1795.660 | 15.951 | |
| PatchTST | 0.920 | 292.083 | 360.951 | 2.769 | 0.926 | 367.631 | 463.526 | 3.361 | 0.659 | 558.828 | 759.084 | 5.229 | |
| SVR | −0.283 | 1109.155 | 1446.286 | 11.378 | 0.046 | 1396.788 | 1668.117 | 13.572 | −0.140 | 1114.316 | 1388.356 | 11.188 | |
| TiDE | 0.878 | 380.086 | 445.691 | 3.640 | 0.883 | 473.839 | 583.698 | 4.372 | 0.491 | 705.263 | 927.635 | 6.538 | |
| TimesNet | 0.883 | 364.969 | 437.338 | 3.432 | 0.879 | 489.904 | 594.911 | 4.460 | 0.362 | 790.474 | 1038.242 | 7.324 | |
| Transformer | −0.751 | 1412.339 | 1689.807 | 14.397 | −0.130 | 1558.622 | 1815.284 | 15.760 | −0.900 | 1630.318 | 1792.289 | 16.164 | |
| iTransformer | 0.920 | 300.025 | 361.479 | 2.856 | 0.928 | 372.024 | 458.590 | 3.421 | 0.667 | 537.778 | 749.907 | 5.025 | |
| 15 steps | OurModel | 0.911 | 348.887 | 422.726 | 3.291 | 0.867 | 468.858 | 575.951 | 4.351 | 0.418 | 701.957 | 919.613 | 6.531 |
| Autoformer | 0.801 | 507.611 | 630.895 | 4.894 | 0.705 | 720.542 | 858.858 | 6.769 | 0.084 | 958.787 | 1153.788 | 8.915 | |
| DLinear | 0.851 | 458.184 | 546.659 | 4.450 | 0.801 | 591.977 | 704.881 | 5.707 | 0.312 | 804.844 | 999.730 | 7.520 | |
| FEDformer | 0.779 | 561.669 | 665.343 | 5.380 | 0.716 | 729.219 | 842.973 | 6.928 | 0.008 | 990.288 | 1200.630 | 9.188 | |
| FiLM | 0.894 | 380.013 | 459.723 | 3.608 | 0.831 | 536.764 | 650.837 | 4.984 | 0.276 | 803.267 | 1025.636 | 7.446 | |
| FreTS | 0.891 | 384.216 | 466.548 | 3.629 | 0.891 | 426.103 | 522.805 | 4.117 | 0.565 | 588.500 | 795.049 | 5.583 | |
| Informer | −0.130 | 1195.373 | 1503.123 | 11.909 | −0.236 | 1532.163 | 1758.409 | 15.563 | −0.895 | 1521.537 | 1659.832 | 15.102 | |
| Koopa | 0.909 | 346.277 | 425.734 | 3.252 | 0.862 | 475.865 | 587.058 | 4.394 | 0.370 | 753.895 | 956.705 | 7.019 | |
| LightTS | 0.866 | 421.844 | 517.397 | 4.031 | 0.867 | 463.731 | 577.593 | 4.516 | 0.600 | 598.149 | 762.161 | 5.693 | |
| Lstm | 0.165 | 932.952 | 1292.256 | 9.289 | 0.073 | 1262.565 | 1522.296 | 12.855 | −0.131 | 1084.795 | 1282.162 | 10.924 | |
| PatchTST | 0.909 | 348.204 | 426.893 | 3.281 | 0.866 | 472.356 | 579.718 | 4.384 | 0.389 | 724.806 | 942.166 | 6.739 | |
| SVR | −0.094 | 1139.857 | 1479.147 | 11.155 | −0.028 | 1343.391 | 1603.507 | 13.513 | −0.195 | 1062.589 | 1317.987 | 10.801 | |
| TiDE | 0.889 | 386.739 | 471.022 | 3.674 | 0.831 | 537.309 | 650.413 | 5.004 | 0.242 | 827.944 | 1049.836 | 7.685 | |
| TimesNet | 0.890 | 385.343 | 468.168 | 3.638 | 0.809 | 564.981 | 690.563 | 5.249 | 0.303 | 798.640 | 1006.910 | 7.375 | |
| Transformer | −0.188 | 1283.304 | 1541.541 | 12.787 | −0.277 | 1513.086 | 1787.276 | 15.609 | −0.969 | 1536.232 | 1692.021 | 15.291 | |
| iTransformer | 0.911 | 346.125 | 422.079 | 3.274 | 0.876 | 454.598 | 557.169 | 4.216 | 0.452 | 670.697 | 892.155 | 6.257 | |
| Model | Low | Medium | High | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | ||
| 1 step | OurModel | 0.994 | 54.730 | 68.879 | 0.787 | 0.994 | 75.572 | 95.223 | 1.090 | 0.984 | 114.953 | 159.521 | 1.619 |
| Autoformer | 0.934 | 186.910 | 237.242 | 2.721 | 0.961 | 194.418 | 249.636 | 2.858 | 0.935 | 244.988 | 320.028 | 3.471 | |
| DLinear | 0.943 | 185.487 | 218.913 | 2.778 | 0.958 | 213.396 | 261.493 | 3.181 | 0.921 | 279.378 | 353.560 | 3.948 | |
| FEDformer | 0.932 | 203.167 | 239.970 | 3.002 | 0.956 | 213.950 | 267.748 | 3.131 | 0.906 | 309.724 | 386.404 | 4.315 | |
| FiLM | 0.933 | 196.380 | 237.524 | 2.879 | 0.946 | 238.969 | 294.740 | 3.446 | 0.878 | 352.055 | 440.772 | 4.917 | |
| FreTS | 0.990 | 74.027 | 90.127 | 1.097 | 0.993 | 87.277 | 106.631 | 1.301 | 0.983 | 119.697 | 163.896 | 1.691 | |
| Informer | 0.010 | 705.115 | 916.003 | 11.348 | 0.155 | 989.708 | 1167.999 | 16.193 | 0.340 | 827.158 | 1023.176 | 12.987 | |
| Koopa | 0.985 | 87.495 | 111.733 | 1.258 | 0.985 | 122.966 | 157.002 | 1.763 | 0.958 | 191.803 | 258.460 | 2.702 | |
| LightTS | 0.963 | 146.808 | 176.072 | 2.178 | 0.975 | 164.908 | 201.671 | 2.476 | 0.947 | 222.976 | 289.044 | 3.166 | |
| Lstm | 0.018 | 700.085 | 912.235 | 11.188 | −0.037 | 1086.247 | 1294.147 | 17.579 | 0.195 | 899.190 | 1130.379 | 14.056 | |
| PatchTST | 0.993 | 59.118 | 74.409 | 0.852 | 0.994 | 73.214 | 95.811 | 1.057 | 0.983 | 121.230 | 163.118 | 1.708 | |
| SVR | −0.489 | 864.530 | 1123.240 | 13.798 | −0.222 | 1235.546 | 1404.887 | 19.580 | 0.041 | 1007.194 | 1233.896 | 15.160 | |
| TiDE | 0.967 | 138.479 | 168.477 | 2.008 | 0.975 | 158.329 | 200.947 | 2.276 | 0.939 | 234.881 | 310.664 | 3.304 | |
| TimesNet | 0.944 | 174.004 | 218.647 | 2.499 | 0.956 | 206.662 | 265.369 | 2.961 | 0.914 | 286.094 | 370.132 | 4.016 | |
| Transformer | −0.079 | 683.956 | 956.382 | 11.145 | 0.014 | 1040.008 | 1262.038 | 17.011 | 0.223 | 845.373 | 1110.257 | 13.342 | |
| iTransformer | 0.992 | 65.212 | 81.673 | 0.944 | 0.993 | 83.025 | 105.934 | 1.201 | 0.983 | 121.472 | 166.027 | 1.708 | |
| 5 steps | OurModel | 0.965 | 128.254 | 161.037 | 1.874 | 0.970 | 174.230 | 214.358 | 2.550 | 0.931 | 249.274 | 338.760 | 3.480 |
| Autoformer | 0.851 | 271.262 | 332.902 | 3.969 | 0.918 | 282.489 | 354.885 | 4.073 | 0.881 | 356.645 | 443.593 | 4.998 | |
| DLinear | 0.836 | 275.502 | 348.990 | 3.792 | 0.895 | 297.490 | 400.954 | 4.089 | 0.810 | 445.191 | 561.214 | 6.194 | |
| FEDformer | 0.810 | 319.217 | 375.790 | 4.756 | 0.897 | 319.034 | 396.498 | 4.606 | 0.840 | 406.757 | 514.314 | 5.641 | |
| FiLM | 0.896 | 231.853 | 277.998 | 3.422 | 0.922 | 283.436 | 344.169 | 4.118 | 0.848 | 395.872 | 501.587 | 5.478 | |
| FreTS | 0.944 | 168.828 | 203.070 | 2.534 | 0.963 | 197.032 | 236.314 | 2.968 | 0.935 | 241.759 | 328.747 | 3.421 | |
| Informer | −0.963 | 991.441 | 1207.270 | 15.774 | −0.493 | 1323.093 | 1510.494 | 21.461 | −0.064 | 1145.952 | 1328.542 | 17.687 | |
| Koopa | 0.947 | 160.308 | 198.438 | 2.347 | 0.960 | 200.379 | 247.918 | 2.914 | 0.914 | 279.096 | 377.574 | 3.881 | |
| LightTS | 0.951 | 157.358 | 190.394 | 2.316 | 0.956 | 208.087 | 260.614 | 3.075 | 0.923 | 271.026 | 356.217 | 3.765 | |
| Lstm | −0.475 | 873.934 | 1046.509 | 13.789 | −0.180 | 1150.003 | 1342.707 | 18.585 | 0.157 | 1001.016 | 1182.334 | 15.277 | |
| PatchTST | 0.965 | 130.459 | 160.600 | 1.903 | 0.968 | 180.034 | 219.441 | 2.642 | 0.926 | 256.696 | 351.019 | 3.594 | |
| SVR | −0.534 | 823.451 | 1066.928 | 13.277 | −0.185 | 1183.214 | 1346.032 | 18.778 | 0.087 | 1013.088 | 1230.246 | 14.993 | |
| TiDE | 0.874 | 249.235 | 305.506 | 3.647 | 0.895 | 323.581 | 400.289 | 4.647 | 0.769 | 499.815 | 619.300 | 7.011 | |
| TimesNet | 0.921 | 197.099 | 241.692 | 2.878 | 0.938 | 243.116 | 306.857 | 3.472 | 0.854 | 377.793 | 491.512 | 5.309 | |
| Transformer | −0.371 | 730.660 | 1008.731 | 11.951 | −0.133 | 1095.013 | 1315.705 | 17.943 | 0.214 | 906.332 | 1141.491 | 14.153 | |
| iTransformer | 0.964 | 130.004 | 163.841 | 1.891 | 0.969 | 180.486 | 218.347 | 2.642 | 0.931 | 245.568 | 339.128 | 3.430 | |
| 10 steps | OurModel | 0.931 | 188.787 | 228.249 | 2.745 | 0.953 | 228.761 | 286.945 | 3.301 | 0.844 | 366.679 | 464.328 | 5.178 |
| Autoformer | 0.792 | 325.792 | 396.388 | 4.756 | 0.878 | 373.490 | 460.484 | 5.399 | 0.635 | 559.805 | 710.358 | 7.901 | |
| DLinear | 0.825 | 276.953 | 363.673 | 3.794 | 0.885 | 333.855 | 446.775 | 4.495 | 0.753 | 452.091 | 584.552 | 6.401 | |
| FEDformer | 0.809 | 319.958 | 379.209 | 4.775 | 0.869 | 381.038 | 476.667 | 5.538 | 0.667 | 555.362 | 678.898 | 7.767 | |
| FiLM | 0.914 | 215.268 | 254.324 | 3.137 | 0.936 | 263.214 | 332.497 | 3.783 | 0.791 | 426.476 | 536.997 | 6.032 | |
| FreTS | 0.904 | 223.962 | 269.093 | 3.330 | 0.944 | 259.919 | 311.454 | 3.851 | 0.882 | 313.079 | 403.614 | 4.514 | |
| Informer | −0.775 | 923.466 | 1157.162 | 14.729 | −0.213 | 1259.793 | 1450.680 | 20.266 | −0.201 | 1131.601 | 1288.675 | 17.545 | |
| Koopa | 0.906 | 225.554 | 265.940 | 3.299 | 0.939 | 260.980 | 326.445 | 3.774 | 0.815 | 399.125 | 505.708 | 5.624 | |
| LightTS | 0.907 | 216.544 | 265.043 | 3.203 | 0.942 | 264.432 | 318.211 | 3.854 | 0.890 | 301.805 | 390.828 | 4.307 | |
| Lstm | −0.569 | 904.879 | 1087.739 | 14.265 | −0.054 | 1176.761 | 1352.345 | 18.800 | 0.023 | 955.828 | 1162.199 | 14.953 | |
| PatchTST | 0.930 | 185.873 | 229.504 | 2.710 | 0.953 | 226.338 | 286.880 | 3.264 | 0.835 | 376.798 | 478.145 | 5.326 | |
| SVR | −0.380 | 788.079 | 1020.376 | 12.660 | −0.025 | 1171.246 | 1333.410 | 18.128 | 0.083 | 927.306 | 1125.889 | 14.161 | |
| TiDE | 0.895 | 239.839 | 281.845 | 3.515 | 0.924 | 293.285 | 363.679 | 4.261 | 0.752 | 461.785 | 585.145 | 6.475 | |
| TimesNet | 0.896 | 236.105 | 279.546 | 3.433 | 0.922 | 286.359 | 368.106 | 4.054 | 0.680 | 530.108 | 665.642 | 7.478 | |
| Transformer | −0.549 | 806.564 | 1081.041 | 13.081 | −0.096 | 1158.761 | 1379.086 | 18.783 | −0.016 | 975.529 | 1185.326 | 15.356 | |
| iTransformer | 0.930 | 191.650 | 229.942 | 2.787 | 0.951 | 231.745 | 290.634 | 3.347 | 0.845 | 358.877 | 463.212 | 5.081 | |
| 15 steps | OurModel | 0.930 | 215.187 | 261.455 | 3.134 | 0.917 | 284.316 | 353.797 | 4.099 | 0.737 | 461.052 | 575.596 | 6.489 |
| Autoformer | 0.831 | 321.766 | 405.884 | 4.812 | 0.818 | 409.024 | 525.421 | 5.925 | 0.525 | 643.416 | 773.606 | 9.082 | |
| DLinear | 0.871 | 300.946 | 354.740 | 4.517 | 0.862 | 369.175 | 456.341 | 5.617 | 0.695 | 511.939 | 619.716 | 7.285 | |
| FEDformer | 0.807 | 359.110 | 434.725 | 5.328 | 0.810 | 453.760 | 536.388 | 6.709 | 0.514 | 659.922 | 782.896 | 9.288 | |
| FiLM | 0.914 | 237.474 | 289.537 | 3.486 | 0.896 | 317.106 | 396.690 | 4.594 | 0.667 | 528.816 | 647.758 | 7.432 | |
| FreTS | 0.900 | 253.271 | 312.015 | 3.649 | 0.917 | 291.983 | 354.687 | 4.313 | 0.813 | 378.851 | 485.797 | 5.514 | |
| Informer | −0.142 | 809.488 | 1056.612 | 12.782 | −0.142 | 1137.856 | 1315.131 | 18.342 | −0.073 | 1025.637 | 1163.087 | 15.961 | |
| Koopa | 0.930 | 210.591 | 261.612 | 3.056 | 0.914 | 282.808 | 360.444 | 4.066 | 0.703 | 505.073 | 612.316 | 7.130 | |
| LightTS | 0.876 | 285.651 | 348.618 | 4.209 | 0.897 | 325.478 | 395.530 | 4.880 | 0.824 | 387.341 | 471.017 | 5.636 | |
| Lstm | 0.154 | 666.577 | 909.225 | 10.409 | 0.066 | 1028.068 | 1189.068 | 16.221 | 0.217 | 848.023 | 993.697 | 12.962 | |
| PatchTST | 0.928 | 217.080 | 265.628 | 3.173 | 0.913 | 292.222 | 363.680 | 4.221 | 0.721 | 479.351 | 593.188 | 6.746 | |
| SVR | −0.175 | 835.873 | 1071.463 | 12.966 | −0.091 | 1126.431 | 1285.451 | 17.721 | 0.059 | 897.988 | 1089.131 | 13.925 | |
| TiDE | 0.910 | 238.887 | 296.152 | 3.512 | 0.896 | 318.332 | 397.369 | 4.616 | 0.653 | 542.278 | 661.264 | 7.629 | |
| TimesNet | 0.909 | 246.469 | 298.209 | 3.634 | 0.860 | 372.991 | 461.113 | 5.429 | 0.630 | 564.132 | 683.108 | 7.861 | |
| Transformer | −0.079 | 760.487 | 1026.981 | 12.125 | −0.153 | 1102.827 | 1321.512 | 17.960 | 0.017 | 929.960 | 1113.407 | 14.648 | |
| iTransformer | 0.928 | 218.934 | 265.972 | 3.194 | 0.922 | 276.768 | 342.902 | 3.990 | 0.753 | 443.067 | 558.361 | 6.249 | |
| Model | Low | Medium | High | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | ||
| 1 step | OurModel | 0.998 | 32.431 | 39.666 | 0.588 | 0.997 | 40.844 | 50.970 | 0.757 | 0.993 | 56.103 | 75.828 | 1.214 |
| Autoformer | 0.989 | 74.216 | 92.231 | 1.353 | 0.991 | 73.667 | 90.108 | 1.374 | 0.980 | 94.139 | 126.806 | 1.994 | |
| DLinear | 0.974 | 127.508 | 138.246 | 2.296 | 0.986 | 97.607 | 113.218 | 1.823 | 0.965 | 136.110 | 167.858 | 2.932 | |
| FEDformer | 0.984 | 92.261 | 108.664 | 1.679 | 0.990 | 78.154 | 94.577 | 1.489 | 0.973 | 111.171 | 148.100 | 2.393 | |
| FiLM | 0.982 | 102.759 | 114.170 | 1.891 | 0.988 | 89.132 | 104.136 | 1.706 | 0.954 | 152.704 | 192.220 | 3.327 | |
| FreTS | 0.997 | 41.884 | 50.343 | 0.737 | 0.996 | 48.120 | 59.627 | 0.882 | 0.991 | 65.128 | 84.934 | 1.382 | |
| Informer | −2.691 | 1471.585 | 1654.355 | 24.891 | −1.697 | 1345.167 | 1576.799 | 22.912 | −0.359 | 844.309 | 1046.050 | 16.365 | |
| Koopa | 0.986 | 76.329 | 100.215 | 1.406 | 0.991 | 70.771 | 91.380 | 1.317 | 0.973 | 110.876 | 146.137 | 2.425 | |
| LightTS | 0.911 | 222.279 | 256.790 | 3.754 | 0.943 | 186.551 | 228.755 | 3.211 | 0.955 | 148.631 | 191.361 | 3.025 | |
| Lstm | −2.783 | 1535.223 | 1674.817 | 26.309 | −1.787 | 1438.691 | 1602.965 | 25.100 | −0.690 | 1081.966 | 1166.537 | 22.454 | |
| PatchTST | 0.997 | 38.079 | 46.638 | 0.691 | 0.996 | 49.287 | 62.270 | 0.917 | 0.990 | 69.677 | 90.801 | 1.512 | |
| SVR | −8.920 | 2527.457 | 2712.290 | 43.577 | −6.330 | 2363.952 | 2599.587 | 41.388 | −3.630 | 1703.820 | 1931.044 | 34.200 | |
| TiDE | 0.990 | 72.055 | 86.369 | 1.305 | 0.992 | 70.789 | 87.407 | 1.328 | 0.975 | 106.213 | 143.068 | 2.298 | |
| TimesNet | 0.990 | 71.644 | 86.670 | 1.285 | 0.992 | 66.995 | 84.138 | 1.235 | 0.981 | 94.225 | 124.024 | 2.046 | |
| Transformer | −2.743 | 1469.539 | 1666.071 | 24.764 | −1.781 | 1359.824 | 1601.324 | 23.122 | −0.388 | 819.271 | 1057.223 | 15.590 | |
| iTransformer | 0.997 | 34.734 | 44.078 | 0.627 | 0.996 | 46.873 | 61.635 | 0.871 | 0.989 | 68.935 | 92.217 | 1.468 | |
| 5 steps | OurModel | 0.990 | 67.941 | 84.062 | 1.239 | 0.990 | 76.811 | 96.296 | 1.427 | 0.977 | 110.516 | 140.746 | 2.351 |
| Autoformer | 0.986 | 85.508 | 103.305 | 1.571 | 0.986 | 91.298 | 112.879 | 1.715 | 0.959 | 147.768 | 187.696 | 3.188 | |
| DLinear | 0.790 | 383.949 | 395.014 | 6.919 | 0.884 | 304.002 | 325.236 | 5.650 | 0.894 | 254.523 | 301.356 | 5.361 | |
| FEDformer | 0.974 | 117.780 | 137.936 | 2.179 | 0.984 | 95.667 | 118.876 | 1.845 | 0.951 | 155.781 | 204.458 | 3.351 | |
| FiLM | 0.985 | 91.668 | 106.212 | 1.703 | 0.987 | 88.665 | 106.863 | 1.705 | 0.950 | 157.481 | 206.966 | 3.436 | |
| FreTS | 0.991 | 68.208 | 82.767 | 1.241 | 0.989 | 77.053 | 98.776 | 1.435 | 0.975 | 114.869 | 147.653 | 2.442 | |
| Informer | −2.931 | 1554.858 | 1708.511 | 26.520 | −1.860 | 1406.096 | 1611.600 | 24.275 | −0.485 | 941.826 | 1128.144 | 18.353 | |
| Koopa | 0.987 | 84.013 | 99.572 | 1.551 | 0.988 | 87.502 | 106.089 | 1.649 | 0.970 | 124.956 | 161.406 | 2.657 | |
| LightTS | 0.853 | 298.182 | 330.504 | 5.120 | 0.914 | 236.384 | 279.536 | 4.119 | 0.935 | 182.373 | 235.720 | 3.639 | |
| Lstm | −3.842 | 1802.208 | 1896.148 | 31.395 | −2.522 | 1668.475 | 1788.173 | 29.786 | −1.218 | 1292.667 | 1378.581 | 26.696 | |
| PatchTST | 0.989 | 77.889 | 90.197 | 1.427 | 0.988 | 86.146 | 104.701 | 1.615 | 0.969 | 131.691 | 164.135 | 2.814 | |
| SVR | −9.084 | 2560.671 | 2736.250 | 44.209 | −6.400 | 2368.778 | 2592.187 | 41.771 | −3.620 | 1758.898 | 1989.762 | 35.046 | |
| TiDE | 0.959 | 158.984 | 174.170 | 2.925 | 0.979 | 113.808 | 137.255 | 2.165 | 0.952 | 158.402 | 203.424 | 3.379 | |
| TimesNet | 0.984 | 92.933 | 109.164 | 1.704 | 0.988 | 86.267 | 104.766 | 1.649 | 0.957 | 151.805 | 192.358 | 3.305 | |
| Transformer | −2.134 | 1325.352 | 1525.522 | 22.197 | −1.276 | 1193.691 | 1437.435 | 20.218 | −0.141 | 785.927 | 988.717 | 15.030 | |
| iTransformer | 0.990 | 73.623 | 86.471 | 1.348 | 0.989 | 79.318 | 99.762 | 1.493 | 0.973 | 120.548 | 152.728 | 2.571 | |
| 10 steps | OurModel | 0.981 | 97.854 | 117.873 | 1.793 | 0.981 | 106.693 | 130.314 | 2.012 | 0.958 | 148.962 | 188.168 | 3.154 |
| Autoformer | 0.958 | 133.545 | 175.316 | 2.494 | 0.972 | 124.816 | 158.728 | 2.389 | 0.924 | 202.375 | 254.095 | 4.382 | |
| DLinear | 0.707 | 453.326 | 465.480 | 8.130 | 0.839 | 356.641 | 382.625 | 6.553 | 0.869 | 279.530 | 332.354 | 5.878 | |
| FEDformer | 0.964 | 146.382 | 163.595 | 2.702 | 0.979 | 116.316 | 138.574 | 2.227 | 0.931 | 185.279 | 241.987 | 3.978 | |
| FiLM | 0.969 | 138.166 | 151.434 | 2.536 | 0.981 | 113.520 | 131.884 | 2.154 | 0.944 | 178.655 | 216.944 | 3.829 | |
| FreTS | 0.974 | 123.108 | 138.694 | 2.222 | 0.976 | 124.307 | 146.334 | 2.331 | 0.950 | 166.078 | 204.873 | 3.508 | |
| Informer | −3.380 | 1667.124 | 1799.307 | 28.619 | −2.163 | 1517.714 | 1696.017 | 26.405 | −0.732 | 1050.928 | 1210.690 | 20.840 | |
| Koopa | 0.976 | 116.990 | 132.396 | 2.162 | 0.982 | 110.780 | 129.433 | 2.095 | 0.951 | 164.281 | 203.511 | 3.516 | |
| LightTS | 0.702 | 433.342 | 469.584 | 7.459 | 0.821 | 350.752 | 403.935 | 6.094 | 0.887 | 240.465 | 308.934 | 4.800 | |
| Lstm | −4.109 | 1851.907 | 1943.212 | 32.308 | −2.711 | 1718.861 | 1837.122 | 30.665 | −1.413 | 1365.212 | 1429.046 | 28.672 | |
| PatchTST | 0.975 | 124.142 | 136.901 | 2.280 | 0.983 | 108.065 | 126.048 | 2.051 | 0.948 | 172.991 | 209.800 | 3.722 | |
| SVR | −9.416 | 2613.387 | 2774.536 | 45.231 | −6.667 | 2433.625 | 2640.578 | 42.972 | −3.756 | 1784.885 | 2006.349 | 35.709 | |
| TiDE | 0.937 | 199.273 | 215.801 | 3.657 | 0.973 | 132.912 | 157.467 | 2.564 | 0.910 | 210.025 | 276.006 | 4.535 | |
| TimesNet | 0.973 | 124.173 | 142.013 | 2.265 | 0.980 | 112.987 | 133.637 | 2.141 | 0.947 | 172.453 | 211.214 | 3.694 | |
| Transformer | −2.660 | 1469.980 | 1644.816 | 24.860 | −1.649 | 1333.538 | 1552.163 | 22.812 | −0.391 | 903.518 | 1084.893 | 17.632 | |
| iTransformer | 0.972 | 128.440 | 143.989 | 2.352 | 0.980 | 114.595 | 136.499 | 2.169 | 0.947 | 172.102 | 212.383 | 3.691 | |
| 15 steps | OurModel | 0.950 | 179.595 | 197.206 | 3.292 | 0.967 | 144.479 | 171.944 | 2.719 | 0.937 | 190.317 | 234.345 | 4.000 |
| Autoformer | 0.941 | 190.695 | 214.031 | 3.513 | 0.969 | 138.345 | 167.586 | 2.674 | 0.912 | 214.287 | 276.513 | 4.617 | |
| DLinear | 0.832 | 342.262 | 359.967 | 6.078 | 0.915 | 243.808 | 276.848 | 4.422 | 0.921 | 210.217 | 262.479 | 4.376 | |
| FEDformer | 0.938 | 197.376 | 218.391 | 3.620 | 0.971 | 133.234 | 162.904 | 2.544 | 0.921 | 198.774 | 262.079 | 4.273 | |
| FiLM | 0.956 | 169.649 | 183.220 | 3.117 | 0.977 | 124.321 | 145.303 | 2.389 | 0.929 | 201.868 | 248.381 | 4.309 | |
| FreTS | 0.941 | 198.525 | 213.625 | 3.555 | 0.957 | 167.856 | 197.079 | 3.104 | 0.929 | 203.719 | 248.573 | 4.281 | |
| Informer | −3.766 | 1808.125 | 1916.060 | 31.368 | −2.581 | 1651.082 | 1795.127 | 29.168 | −1.063 | 1184.813 | 1339.926 | 23.453 | |
| Koopa | 0.966 | 147.199 | 162.236 | 2.724 | 0.978 | 120.298 | 140.775 | 2.297 | 0.938 | 190.764 | 233.209 | 4.055 | |
| LightTS | 0.146 | 732.377 | 811.007 | 12.443 | 0.408 | 629.090 | 730.007 | 10.801 | 0.702 | 391.236 | 509.185 | 7.431 | |
| Lstm | −4.540 | 1992.091 | 2065.816 | 35.027 | −3.201 | 1843.494 | 1944.406 | 33.170 | −1.607 | 1428.461 | 1506.161 | 29.547 | |
| PatchTST | 0.963 | 153.844 | 168.016 | 2.834 | 0.978 | 120.247 | 140.662 | 2.302 | 0.936 | 196.898 | 236.553 | 4.206 | |
| SVR | −9.247 | 2655.957 | 2809.624 | 46.118 | −6.884 | 2470.190 | 2663.770 | 43.837 | −3.903 | 1841.699 | 2065.504 | 36.551 | |
| TiDE | 0.936 | 205.664 | 222.264 | 3.763 | 0.968 | 143.936 | 171.008 | 2.744 | 0.925 | 196.056 | 255.986 | 4.174 | |
| TimesNet | 0.961 | 156.808 | 173.800 | 2.895 | 0.977 | 124.534 | 145.394 | 2.392 | 0.932 | 193.550 | 243.284 | 4.125 | |
| Transformer | −2.283 | 1412.301 | 1590.272 | 23.842 | −1.466 | 1265.148 | 1489.725 | 21.586 | −0.243 | 842.167 | 1040.133 | 16.091 | |
| iTransformer | 0.964 | 153.227 | 167.289 | 2.824 | 0.977 | 123.846 | 145.073 | 2.358 | 0.937 | 191.974 | 233.472 | 4.069 | |
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| Index | Count | Max | Min | Mean | Standard Deviation | Skewness | Kurtosis |
|---|---|---|---|---|---|---|---|
| SSE | 2661 | 5166.350 | 2003.490 | 3137.932 | 404.876 | 0.344 | 3.679 |
| SZSE | 2661 | 18,098.270 | 7089.440 | 10,926.937 | 2038.115 | 0.533 | 0.009 |
| SME100 | 2661 | 11,996.520 | 4465.450 | 7131.459 | 1423.868 | 0.537 | −0.203 |
| Classification | Indicator Name | |
|---|---|---|
| Market Trading Indicators | Price-Volume Indicators | Open price, Close price, Price change, Volume |
| Technical Indicators | P/E ratio (TTM), P/B ratio (MRQ), P/S ratio (TTM), P/CF ratio (TTM), 5-day/10-day Moving Average, MACD, Momentum Indicator, Bollinger Bands, Williams Variable Accumulation/Distribution | |
| External Factor Indicators | Commodity Indicators | Carbon trading prices (Beijing, Shanghai, Shenzhen); Crude oil prices (WTI, Brent); Gold prices (Shanghai Gold Exchange closing price, London spot gold closing price) |
| Global Capital Market Indicators | Global stock indices (S & P 500, Dow Jones Industrial Average, Hang Seng Index, Nikkei 225); Foreign exchange rates (EUR/CNY, JPY/CNY, HKD/CNY) | |
| Macroeconomic Variables | Money supply and inflation (China M2 year-on-year growth rate (monthly), China CPI month-on-month, China CPI year-on-year, China CPI consumer goods year-on-year); China goods export growth rate (monthly); Interest rates and credit (China 10-year and 1-year government bond yield spread (monthly), Ratio of China net bond issuance to year-end market capitalization (monthly)) | |
| Sentiment Indicators | VIX closing price |
| Model | 1 Step | 5 Steps | 10 Steps | 15 Steps | |||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | ||
| SSE | OurModel | 26.403 | 38.406 | 0.835 | 0.959 | 42.624 | 63.142 | 1.350 | 0.889 | 56.182 | 82.315 | 1.782 | 0.808 | 67.248 | 96.728 | 2.135 | 0.730 |
| Lstm | 113.066 | 137.803 | 3.584 | 0.475 | 113.901 | 139.141 | 3.598 | 0.459 | 129.992 | 158.636 | 4.123 | 0.286 | 120.347 | 150.010 | 3.847 | 0.350 | |
| SVR | 228.231 | 278.131 | 7.472 | −1.139 | 219.559 | 268.478 | 7.185 | −1.014 | 207.981 | 255.782 | 6.801 | −0.857 | 198.637 | 245.824 | 6.493 | −0.745 | |
| Transformer | 81.574 | 105.836 | 2.611 | 0.690 | 96.165 | 120.741 | 3.089 | 0.593 | 111.527 | 139.510 | 3.596 | 0.448 | 117.328 | 143.801 | 3.756 | 0.403 | |
| Autoformer | 75.475 | 98.089 | 2.380 | 0.734 | 89.915 | 115.920 | 2.832 | 0.624 | 104.965 | 137.516 | 3.311 | 0.463 | 114.042 | 145.033 | 3.613 | 0.392 | |
| Informer | 148.229 | 181.721 | 4.840 | 0.087 | 118.590 | 145.204 | 3.744 | 0.411 | 125.345 | 155.486 | 3.977 | 0.314 | 134.265 | 165.092 | 4.228 | 0.213 | |
| FEDformer | 74.978 | 95.321 | 2.387 | 0.749 | 98.259 | 126.694 | 3.116 | 0.551 | 108.891 | 139.113 | 3.459 | 0.451 | 116.273 | 146.080 | 3.705 | 0.384 | |
| iTransformer | 27.828 | 40.193 | 0.881 | 0.955 | 44.086 | 65.581 | 1.397 | 0.880 | 57.252 | 84.704 | 1.815 | 0.796 | 67.681 | 97.868 | 2.148 | 0.723 | |
| PatchTST | 27.637 | 39.563 | 0.874 | 0.957 | 44.363 | 65.195 | 1.405 | 0.881 | 58.528 | 85.343 | 1.854 | 0.793 | 69.690 | 99.681 | 2.210 | 0.713 | |
| TimesNet | 67.430 | 90.993 | 2.125 | 0.771 | 77.410 | 105.912 | 2.455 | 0.687 | 81.024 | 109.825 | 2.566 | 0.658 | 91.405 | 122.090 | 2.899 | 0.570 | |
| FreTS | 29.363 | 41.686 | 0.934 | 0.952 | 47.729 | 68.158 | 1.516 | 0.870 | 59.180 | 83.443 | 1.884 | 0.802 | 71.048 | 98.067 | 2.263 | 0.722 | |
| DLinear | 68.350 | 89.396 | 2.176 | 0.779 | 92.096 | 122.120 | 2.882 | 0.583 | 99.533 | 131.162 | 3.131 | 0.512 | 123.005 | 154.731 | 3.903 | 0.309 | |
| Koopa | 44.877 | 65.984 | 1.412 | 0.880 | 53.735 | 77.886 | 1.702 | 0.830 | 64.802 | 91.393 | 2.061 | 0.763 | 75.712 | 105.471 | 2.402 | 0.679 | |
| LightTS | 53.720 | 72.363 | 1.706 | 0.855 | 61.871 | 83.103 | 1.959 | 0.807 | 66.245 | 93.077 | 2.087 | 0.754 | 84.518 | 112.798 | 2.669 | 0.633 | |
| TiDE | 54.441 | 74.768 | 1.724 | 0.845 | 86.072 | 117.556 | 2.722 | 0.614 | 83.925 | 115.831 | 2.657 | 0.619 | 88.312 | 120.529 | 2.799 | 0.58 | |
| FiLM | 76.844 | 100.133 | 2.440 | 0.723 | 73.577 | 97.177 | 2.346 | 0.736 | 73.727 | 103.619 | 2.332 | 0.695 | 85.964 | 117.088 | 2.724 | 0.604 | |
| SZSE | OurModel | 124.367 | 182.953 | 1.158 | 0.985 | 206.896 | 306.086 | 1.931 | 0.958 | 282.320 | 409.791 | 2.635 | 0.923 | 345.009 | 492.748 | 3.220 | 0.887 |
| Lstm | 1369.424 | 1639.565 | 13.728 | −0.190 | 1328.959 | 1558.876 | 13.353 | −0.090 | 1361.853 | 1617.977 | 13.721 | −0.195 | 1088.812 | 1370.676 | 10.873 | 0.126 | |
| SVR | 1356.614 | 1671.816 | 13.565 | −0.237 | 1328.803 | 1639.327 | 13.274 | −0.205 | 1285.854 | 1593.720 | 12.840 | −0.159 | 1256.020 | 1560.495 | 12.545 | −0.133 | |
| Transformer | 1368.789 | 1622.991 | 13.820 | −0.166 | 1500.539 | 1725.613 | 15.043 | −0.335 | 1667.031 | 1887.478 | 16.658 | −0.626 | 1580.839 | 1815.125 | 15.834 | −0.533 | |
| Autoformer | 330.818 | 443.570 | 3.084 | 0.913 | 395.564 | 518.707 | 3.655 | 0.879 | 511.272 | 679.042 | 4.747 | 0.790 | 563.955 | 724.182 | 5.251 | 0.756 | |
| Informer | 1520.958 | 1702.362 | 15.195 | −0.283 | 1233.787 | 1479.367 | 12.406 | 0.019 | 1288.809 | 1544.958 | 12.897 | −0.089 | 1179.318 | 1434.305 | 11.782 | 0.043 | |
| FEDformer | 371.260 | 470.922 | 3.479 | 0.902 | 494.360 | 624.938 | 4.611 | 0.825 | 552.153 | 698.491 | 5.155 | 0.777 | 596.261 | 751.435 | 5.588 | 0.737 | |
| iTransformer | 136.504 | 192.525 | 1.273 | 0.984 | 213.463 | 313.735 | 1.994 | 0.956 | 282.465 | 412.148 | 2.639 | 0.922 | 340.639 | 489.736 | 3.184 | 0.888 | |
| PatchTST | 127.265 | 184.421 | 1.187 | 0.985 | 216.459 | 317.364 | 2.021 | 0.955 | 286.451 | 418.211 | 2.672 | 0.920 | 352.035 | 503.643 | 3.284 | 0.882 | |
| TimesNet | 324.116 | 430.632 | 3.005 | 0.918 | 417.421 | 551.698 | 3.887 | 0.864 | 431.481 | 578.179 | 4.011 | 0.847 | 463.216 | 611.000 | 4.316 | 0.826 | |
| FreTS | 141.058 | 196.246 | 1.338 | 0.983 | 243.994 | 335.867 | 2.306 | 0.949 | 297.260 | 408.382 | 2.842 | 0.924 | 365.141 | 494.837 | 3.488 | 0.886 | |
| DLinear | 349.852 | 448.188 | 3.311 | 0.911 | 407.736 | 546.838 | 3.771 | 0.866 | 461.339 | 604.424 | 4.309 | 0.833 | 584.959 | 734.819 | 5.524 | 0.749 | |
| Koopa | 207.161 | 298.054 | 1.920 | 0.961 | 267.891 | 382.312 | 2.493 | 0.934 | 340.774 | 469.976 | 3.187 | 0.899 | 394.082 | 543.740 | 3.675 | 0.862 | |
| LightTS | 266.857 | 351.074 | 2.538 | 0.945 | 305.507 | 405.234 | 2.862 | 0.926 | 326.067 | 433.316 | 3.055 | 0.914 | 388.962 | 510.445 | 3.671 | 0.879 | |
| TiDE | 271.075 | 369.550 | 2.527 | 0.940 | 443.331 | 597.655 | 4.122 | 0.840 | 433.526 | 590.476 | 4.036 | 0.841 | 459.871 | 620.316 | 4.287 | 0.821 | |
| FiLM | 407.282 | 525.208 | 3.794 | 0.878 | 399.561 | 524.269 | 3.732 | 0.877 | 375.403 | 521.600 | 3.494 | 0.876 | 447.862 | 607.176 | 4.173 | 0.828 | |
| SME100 | OurModel | 81.759 | 114.418 | 1.165 | 0.990 | 137.772 | 194.836 | 1.972 | 0.972 | 183.906 | 257.603 | 2.632 | 0.951 | 222.256 | 308.989 | 3.179 | 0.928 |
| Lstm | 894.928 | 1122.965 | 14.270 | 0.084 | 941.185 | 1134.317 | 14.924 | 0.058 | 873.126 | 1080.850 | 13.890 | 0.134 | 862.426 | 1063.915 | 13.407 | 0.150 | |
| SVR | 1035.499 | 1259.150 | 16.175 | −0.151 | 1023.054 | 1241.835 | 15.955 | −0.129 | 1001.112 | 1215.803 | 15.599 | −0.095 | 987.008 | 1198.412 | 15.376 | −0.079 | |
| Transformer | 856.209 | 1116.354 | 13.829 | 0.095 | 890.111 | 1144.961 | 14.382 | 0.040 | 951.746 | 1199.412 | 15.305 | −0.066 | 895.266 | 1138.797 | 14.391 | 0.026 | |
| Autoformer | 208.789 | 271.455 | 3.017 | 0.947 | 268.800 | 346.569 | 3.835 | 0.912 | 327.340 | 424.967 | 4.688 | 0.866 | 351.160 | 453.881 | 5.023 | 0.845 | |
| Informer | 840.468 | 1040.687 | 13.506 | 0.214 | 942.630 | 1164.505 | 15.039 | 0.007 | 908.386 | 1120.765 | 14.420 | 0.069 | 817.880 | 1018.858 | 12.925 | 0.220 | |
| FEDformer | 242.317 | 304.776 | 3.483 | 0.933 | 322.260 | 400.957 | 4.611 | 0.882 | 353.874 | 442.420 | 5.071 | 0.855 | 383.527 | 481.322 | 5.511 | 0.826 | |
| iTransformer | 89.912 | 123.116 | 1.285 | 0.989 | 140.043 | 197.208 | 2.004 | 0.972 | 184.316 | 257.680 | 2.640 | 0.951 | 220.359 | 306.320 | 3.157 | 0.930 | |
| PatchTST | 84.535 | 117.391 | 1.205 | 0.990 | 142.360 | 200.222 | 2.038 | 0.971 | 187.066 | 262.563 | 2.679 | 0.949 | 228.014 | 316.611 | 3.264 | 0.925 | |
| TimesNet | 222.274 | 291.709 | 3.159 | 0.938 | 257.510 | 340.329 | 3.667 | 0.915 | 278.991 | 371.423 | 3.968 | 0.898 | 336.187 | 434.568 | 4.806 | 0.858 | |
| FreTS | 93.675 | 124.326 | 1.363 | 0.989 | 160.229 | 213.114 | 2.318 | 0.967 | 195.697 | 258.518 | 2.868 | 0.950 | 241.419 | 315.305 | 3.542 | 0.925 | |
| DLinear | 226.103 | 283.639 | 3.303 | 0.942 | 263.217 | 346.951 | 3.743 | 0.912 | 298.706 | 385.267 | 4.292 | 0.890 | 380.595 | 472.080 | 5.551 | 0.833 | |
| Koopa | 134.102 | 186.166 | 1.908 | 0.975 | 176.521 | 242.306 | 2.518 | 0.957 | 224.024 | 301.377 | 3.208 | 0.933 | 254.150 | 342.975 | 3.634 | 0.912 | |
| LightTS | 178.248 | 227.495 | 2.607 | 0.962 | 200.543 | 260.122 | 2.889 | 0.950 | 221.059 | 284.139 | 3.183 | 0.940 | 264.035 | 334.520 | 3.826 | 0.916 | |
| TiDE | 177.254 | 234.757 | 2.530 | 0.960 | 284.586 | 375.160 | 4.063 | 0.897 | 277.809 | 369.460 | 3.971 | 0.899 | 293.102 | 388.366 | 4.193 | 0.887 | |
| FiLM | 262.498 | 335.494 | 3.748 | 0.918 | 260.354 | 339.592 | 3.720 | 0.916 | 241.051 | 325.202 | 3.445 | 0.922 | 285.604 | 380.603 | 4.084 | 0.891 | |
| Model | 1 Step | 5 Steps | 10 Steps | 15 Steps | |||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | ||
| SP500 | OurModel | 43.114 | 57.491 | 0.853 | 0.997 | 64.302 | 87.986 | 1.268 | 0.992 | 84.765 | 113.812 | 1.671 | 0.987 | 107.485 | 139.476 | 2.118 | 0.98 |
| Lstm | 1352.164 | 1498.576 | 24.623 | −1.295 | 1621.364 | 1727.415 | 30.065 | −2.063 | 1582.292 | 1691.607 | 29.385 | −1.952 | 1662.456 | 1763.336 | 30.959 | −2.225 | |
| SVR | 2198.776 | 2439.126 | 39.726 | −5.081 | 2217.17 | 2451.434 | 40.134 | −5.168 | 2243.873 | 2469.67 | 40.721 | −5.293 | 2271.16 | 2489.939 | 41.31 | −5.43 | |
| Transformer | 1216.485 | 1467.396 | 21.162 | −1.201 | 1255.306 | 1479.128 | 22.099 | −1.246 | 1352.903 | 1570.076 | 23.964 | −1.543 | 1393.996 | 1612.991 | 24.723 | −1.698 | |
| Autoformer | 80.666 | 104.397 | 1.573 | 0.989 | 90.395 | 118.882 | 1.787 | 0.985 | 114.539 | 153.451 | 2.277 | 0.976 | 142.943 | 178.802 | 2.85 | 0.967 | |
| Informer | 1219.263 | 1450.294 | 21.367 | −1.15 | 1366.067 | 1571.478 | 24.289 | −1.535 | 1440.401 | 1626.381 | 25.858 | −1.729 | 1508.868 | 1684.644 | 27.224 | −1.943 | |
| FEDformer | 93.871 | 119.282 | 1.854 | 0.985 | 118.862 | 149.092 | 2.354 | 0.977 | 129.942 | 163.07 | 2.582 | 0.973 | 140.929 | 176.762 | 2.809 | 0.968 | |
| iTransformer | 50.164 | 68.887 | 0.988 | 0.995 | 74.752 | 98.108 | 1.479 | 0.99 | 99.394 | 126.75 | 1.967 | 0.983 | 117.723 | 147.656 | 2.329 | 0.977 | |
| PatchTST | 52.332 | 69.014 | 1.039 | 0.995 | 86.849 | 110.171 | 1.719 | 0.988 | 108.755 | 135.802 | 2.156 | 0.981 | 126.124 | 155.279 | 2.494 | 0.975 | |
| TimesNet | 77.614 | 99.941 | 1.522 | 0.99 | 102.721 | 130.621 | 2.051 | 0.982 | 110.861 | 140.114 | 2.185 | 0.98 | 116.517 | 150.913 | 2.318 | 0.976 | |
| FreTS | 51.7 | 66.576 | 1.000 | 0.995 | 69.798 | 93.321 | 1.374 | 0.991 | 103.543 | 130.962 | 2.009 | 0.982 | 127.498 | 160.504 | 2.463 | 0.973 | |
| DLinear | 120.416 | 141.543 | 2.35 | 0.98 | 198.175 | 232.915 | 3.797 | 0.944 | 214.181 | 257.551 | 4.093 | 0.932 | 215.072 | 263.01 | 4.122 | 0.928 | |
| Koopa | 85.981 | 115.093 | 1.716 | 0.986 | 80.151 | 106.269 | 1.59 | 0.988 | 99.812 | 128.455 | 1.979 | 0.983 | 116.081 | 146.047 | 2.299 | 0.978 | |
| LightTS | 185.861 | 227.257 | 3.331 | 0.947 | 184.166 | 229.792 | 3.344 | 0.946 | 339.258 | 428.274 | 6.075 | 0.811 | 414.287 | 524.201 | 7.333 | 0.715 | |
| TiDE | 83.007 | 108.863 | 1.643 | 0.988 | 126.585 | 157.964 | 2.509 | 0.974 | 136.07 | 171.541 | 2.693 | 0.97 | 151.568 | 188.284 | 2.993 | 0.963 | |
| FiLM | 114.851 | 142.365 | 2.308 | 0.979 | 96.874 | 131.728 | 1.966 | 0.982 | 117.246 | 144.812 | 2.327 | 0.978 | 130.626 | 161.699 | 2.603 | 0.973 | |
| Baseline | SSE | SZSE | SMESE | SP500 | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | |
| Autoformer | *** | *** | ** | *** | * | ns | *** | *** | *** | ns | *** | *** | *** | ns | *** | *** |
| DLinear | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| FEDformer | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ns | *** |
| FiLM | *** | *** | *** | ns | *** | *** | ns | * | *** | *** | ns | *** | *** | *** | *** | *** |
| FreTS | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ns | *** | *** |
| Informer | *** | *** | *** | ** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| iTransformer | ns | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| Koopa | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ns | *** |
| LightTS | *** | *** | *** | *** | *** | ns | *** | * | *** | ns | *** | ns | *** | *** | *** | *** |
| Lstm | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| PatchTST | ns | *** | *** | *** | *** | *** | *** | *** | ns | *** | *** | * | *** | *** | * | *** |
| SVR | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| TiDE | *** | ** | *** | ns | *** | *** | *** | ns | *** | *** | *** | *** | *** | *** | *** | ** |
| TimesNet | ns | ns | *** | *** | ** | *** | *** | *** | *** | *** | *** | *** | *** | * | ** | *** |
| Transformer | ** | ns | *** | ns | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| Baseline | SSE | SZSE | SMESE | SP500 | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | pl = 1 | pl = 5 | pl = 10 | pl = 15 | |
| Autoformer | *** | ** | ns | *** | ns | ns | *** | ns | *** | ns | *** | *** | *** | ns | *** | *** |
| DLinear | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| FEDformer | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ns | * | *** |
| FiLM | *** | *** | *** | *** | *** | *** | *** | * | *** | *** | *** | ns | *** | *** | *** | *** |
| FreTS | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ns | *** | *** |
| Informer | *** | *** | *** | ** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| iTransformer | ns | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ** | * | ** | *** |
| Koopa | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | ** | *** |
| LightTS | * | *** | *** | *** | *** | ns | *** | *** | *** | ns | *** | *** | *** | *** | *** | *** |
| Lstm | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| PatchTST | ns | *** | *** | *** | * | *** | *** | *** | ns | * | *** | ns | *** | *** | ns | *** |
| SVR | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| TiDE | * | ns | *** | ** | *** | *** | *** | ns | *** | *** | *** | ns | ** | *** | *** | *** |
| TimesNet | ** | ns | *** | *** | ns | *** | *** | *** | *** | ns | *** | *** | *** | ns | ns | *** |
| Transformer | ns | ns | *** | ns | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** | *** |
| Model | SSE | SZSE | SMESE | SP500 | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Low | Medium | High | Low | Medium | High | Low | Medium | High | Low | Medium | High | |
| FAMS-Transformer (Ours) | 0.988 | 0.969 | 0.900 | 0.994 | 0.993 | 0.956 | 0.994 | 0.994 | 0.984 | 0.998 | 0.997 | 0.993 |
| Autoformer | 0.802 | 0.675 | 0.645 | 0.928 | 0.949 | 0.811 | 0.934 | 0.961 | 0.935 | 0.989 | 0.991 | 0.980 |
| DLinear | 0.900 | 0.830 | 0.512 | 0.937 | 0.952 | 0.786 | 0.943 | 0.958 | 0.921 | 0.974 | 0.986 | 0.965 |
| FEDformer | 0.814 | 0.816 | 0.536 | 0.919 | 0.947 | 0.778 | 0.932 | 0.956 | 0.906 | 0.984 | 0.990 | 0.973 |
| FiLM | 0.894 | 0.789 | 0.359 | 0.927 | 0.933 | 0.692 | 0.933 | 0.946 | 0.878 | 0.982 | 0.988 | 0.954 |
| FreTS | 0.980 | 0.965 | 0.889 | 0.990 | 0.992 | 0.953 | 0.990 | 0.993 | 0.983 | 0.997 | 0.996 | 0.991 |
| Informer | 0.058 | 0.230 | −0.219 | −0.449 | 0.120 | −1.031 | 0.010 | 0.155 | 0.340 | −2.691 | −1.697 | −0.359 |
| Koopa | 0.967 | 0.930 | 0.681 | 0.983 | 0.983 | 0.882 | 0.985 | 0.985 | 0.958 | 0.986 | 0.991 | 0.973 |
| LightTS | 0.941 | 0.890 | 0.671 | 0.961 | 0.976 | 0.857 | 0.963 | 0.975 | 0.947 | 0.911 | 0.943 | 0.955 |
| Lstm | 0.576 | 0.544 | 0.152 | −0.077 | 0.140 | −1.112 | 0.018 | −0.037 | 0.195 | −2.783 | −1.787 | −0.690 |
| PatchTST | 0.987 | 0.969 | 0.893 | 0.993 | 0.994 | 0.954 | 0.993 | 0.994 | 0.983 | 0.997 | 0.996 | 0.990 |
| SVR | −1.806 | −0.720 | −1.120 | −0.429 | −0.018 | −0.546 | −0.489 | −0.222 | 0.041 | −8.920 | −6.330 | −3.630 |
| TiDE | 0.948 | 0.873 | 0.642 | 0.964 | 0.969 | 0.842 | 0.967 | 0.975 | 0.939 | 0.990 | 0.992 | 0.975 |
| TimesNet | 0.913 | 0.813 | 0.483 | 0.943 | 0.954 | 0.804 | 0.944 | 0.956 | 0.914 | 0.990 | 0.992 | 0.981 |
| Transformer | 0.553 | 0.708 | 0.793 | −0.272 | 0.178 | −0.851 | −0.079 | 0.014 | 0.223 | −2.743 | −1.781 | −0.388 |
| iTransformer | 0.986 | 0.966 | 0.893 | 0.992 | 0.992 | 0.955 | 0.992 | 0.993 | 0.983 | 0.997 | 0.996 | 0.989 |
| Model | 1 Step | 5 Steps | 10 Steps | 15 Steps | |||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | MAE | RMSE | MAPE (%) | R2 | ||
| OurModel | 26.403 | 38.406 | 0.835 | 0.9592 | 42.624 | 63.142 | 1.35 | 0.8886 | 56.182 | 82.315 | 1.782 | 0.8077 | 67.248 | 96.728 | 2.135 | 0.7298 | |
| w/o Conv | 26.341 | 38.206 | 0.834 | 0.9596 | 42.911 | 63.483 | 1.359 | 0.8874 | 56.693 | 82.89 | 1.799 | 0.805 | 67.879 | 97.439 | 2.155 | 0.7258 | |
| w/o Decomp | 27.322 | 39.86 | 0.866 | 0.9561 | 43.87 | 64.89 | 1.391 | 0.8823 | 57.939 | 84.761 | 1.839 | 0.7961 | 69.002 | 98.756 | 2.191 | 0.7183 | |
| w/o Both | 26.925 | 39.237 | 0.853 | 0.9574 | 44.044 | 64.908 | 1.396 | 0.8823 | 56.928 | 83.472 | 1.806 | 0.8023 | 69.561 | 99.354 | 2.208 | 0.7149 | |
| SSE | Standard Conv1D | 27.394 | 40.217 | 0.868 | 0.9553 | 44.239 | 65.789 | 1.403 | 0.879 | 58.133 | 85.086 | 1.844 | 0.7946 | 69.65 | 99.51 | 2.212 | 0.714 |
| Dilated Depthwise Conv1D | 27.809 | 41.132 | 0.88 | 0.9532 | 44.166 | 65.416 | 1.4 | 0.8804 | 57.734 | 84.516 | 1.832 | 0.7973 | 69.015 | 98.927 | 2.191 | 0.7174 | |
| Original Transformer | 27.222 | 39.817 | 0.861 | 0.9562 | 44.367 | 65.445 | 1.406 | 0.8803 | 57.57 | 84.092 | 1.826 | 0.7993 | 69.709 | 99.518 | 2.213 | 0.714 | |
| Fixed-period | 26.377 | 38.38 | 0.834 | 0.9593 | 42.653 | 63.032 | 1.351 | 0.889 | 56.135 | 82.398 | 1.78 | 0.8073 | 67.346 | 96.942 | 2.138 | 0.7286 | |
| Random-period | 26.957 | 39.36 | 0.851 | 0.9572 | 42.968 | 63.962 | 1.36 | 0.8857 | 57.262 | 83.497 | 1.816 | 0.8022 | 68.401 | 98.487 | 2.171 | 0.7199 | |
| OurModel | 124.367 | 182.953 | 1.158 | 0.9852 | 206.896 | 306.086 | 1.931 | 0.958 | 282.32 | 409.791 | 2.635 | 0.9234 | 345.009 | 492.748 | 3.22 | 0.887 | |
| w/o Conv | 129.113 | 186.939 | 1.204 | 0.9845 | 211.057 | 310.648 | 1.971 | 0.9567 | 285.788 | 414.583 | 2.667 | 0.9216 | 348.847 | 497.872 | 3.255 | 0.8846 | |
| w/o Decomp | 128.602 | 188.944 | 1.201 | 0.9842 | 214.322 | 315.395 | 2.003 | 0.9554 | 290.062 | 420.557 | 2.709 | 0.9193 | 350.837 | 500.619 | 3.276 | 0.8834 | |
| w/o Both | 128.596 | 186.089 | 1.201 | 0.9847 | 214.9 | 315.425 | 2.007 | 0.9554 | 281.854 | 408.257 | 2.631 | 0.9239 | 354.938 | 505.683 | 3.314 | 0.881 | |
| SZSE | Standard Conv1D | 132.816 | 193.178 | 1.24 | 0.9835 | 216.269 | 317.52 | 2.022 | 0.9548 | 291.147 | 421.924 | 2.719 | 0.9187 | 354.817 | 503.229 | 3.315 | 0.8821 |
| Dilated Depthwise Conv1D | 126.984 | 187.337 | 1.183 | 0.9845 | 215.772 | 317.705 | 2.017 | 0.9547 | 290.415 | 420.392 | 2.713 | 0.9193 | 351.059 | 501.037 | 3.278 | 0.8832 | |
| Original Transformer | 130.853 | 190.965 | 1.22 | 0.9839 | 217.147 | 318.273 | 2.029 | 0.9546 | 285.112 | 414.542 | 2.663 | 0.9216 | 354.491 | 505.042 | 3.31 | 0.8813 | |
| Fixed-period | 124.701 | 183.676 | 1.16 | 0.9851 | 208.842 | 307.783 | 1.95 | 0.9575 | 281.837 | 409.472 | 2.63 | 0.9235 | 344.511 | 492.87 | 3.215 | 0.8869 | |
| Random-period | 126.882 | 186.047 | 1.182 | 0.9847 | 208.908 | 308.895 | 1.946 | 0.9572 | 284.202 | 411.84 | 2.658 | 0.9226 | 346.931 | 493.677 | 3.242 | 0.8866 | |
| OurModel | 81.759 | 114.418 | 1.165 | 0.9905 | 137.772 | 194.836 | 1.972 | 0.9722 | 183.906 | 257.603 | 2.632 | 0.9508 | 222.256 | 308.989 | 3.179 | 0.9283 | |
| w/o Conv | 85.914 | 119.689 | 1.226 | 0.9896 | 138.094 | 195.156 | 1.975 | 0.9721 | 185.729 | 260.403 | 2.658 | 0.9498 | 224.789 | 312.302 | 3.216 | 0.9267 | |
| w/o Decomp | 85.878 | 119.839 | 1.229 | 0.9896 | 140.45 | 198.42 | 2.013 | 0.9712 | 188.856 | 264.447 | 2.707 | 0.9482 | 223.462 | 308.316 | 3.203 | 0.9286 | |
| w/o Both | 86.682 | 119.18 | 1.237 | 0.9897 | 141.599 | 199.557 | 2.029 | 0.9708 | 187.238 | 262.251 | 2.683 | 0.949 | 229.306 | 317.643 | 3.286 | 0.9242 | |
| SME 100 | Standard Conv1D | 88.166 | 123.075 | 1.26 | 0.989 | 142.748 | 200.979 | 2.047 | 0.9704 | 190.583 | 266.748 | 2.733 | 0.9473 | 229.608 | 316.871 | 3.291 | 0.9246 |
| Dilated Depthwise Conv1D | 86.426 | 121.321 | 1.235 | 0.9893 | 141.619 | 200.107 | 2.029 | 0.9707 | 189.504 | 265.043 | 2.716 | 0.9479 | 227.539 | 315.249 | 3.26 | 0.9254 | |
| Original Transformer | 88.303 | 123.087 | 1.262 | 0.989 | 142.142 | 200.195 | 2.037 | 0.9707 | 186.055 | 260.411 | 2.666 | 0.9497 | 229.023 | 316.948 | 3.281 | 0.9245 | |
| Fixed-period | 82.287 | 115.509 | 1.172 | 0.9903 | 135.977 | 192.44 | 1.945 | 0.9729 | 183.93 | 257.645 | 2.632 | 0.9508 | 223.328 | 310.15 | 3.195 | 0.9277 | |
| Random-period | 86.47 | 118.653 | 1.232 | 0.9898 | 137.047 | 193.691 | 1.966 | 0.9725 | 182.277 | 255.674 | 2.616 | 0.9516 | 224.551 | 310.251 | 3.216 | 0.9277 | |
| Model | 1 Step | 5 Steps | 10 Steps | 15 Steps | ||||
|---|---|---|---|---|---|---|---|---|
| Params | FLOPs | Params | FLOPs | Params | FLOPs | Params | FLOPs | |
| Standard Conv1D | 7.891 M | 1.538 G | 7.898 M | 1.538 G | 7.905 M | 1.539 G | 7.913 M | 1.539 G |
| w/o Decomp | 6.322 M | 1.232 G | 6.328 M | 1.232 G | 6.335 M | 1.233 G | 6.343 M | 1.233 G |
| Dilated Depthwise Conv1D | 6.322 M | 1.232 G | 6.328 M | 1.232 G | 6.335 M | 1.233 G | 6.343 M | 1.233 G |
| Original Transformer | 6.316 M | 1.231 G | 6.322 M | 1.231 G | 6.329 M | 1.231 G | 6.337 M | 1.232 G |
| Dataset | Num. Windows | Mean Jaccard | Median Jaccard | Full-Overlap Ratio | Most Frequent Periods |
|---|---|---|---|---|---|
| SSE | 762 | 0.9693 | 1 | 0.9528 | 29, 15, 11 |
| SZSE | 762 | 0.9693 | 1 | 0.9528 | 29, 15, 11 |
| SMESE | 762 | 0.9693 | 1 | 0.9528 | 29, 15, 11 |
| S&P500 | 884 | 0.92 | 1 | 0.879 | 29, 15, 11, 7, 5 |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
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Zheng, H.; Zeng, X.; Hu, G.; Zhang, T. A Hybrid Model for Stock Index Forecasting Integrating Adaptive Frequency-Domain Decomposition and Enhanced Transformer Encoder. Mathematics 2026, 14, 2202. https://doi.org/10.3390/math14122202
Zheng H, Zeng X, Hu G, Zhang T. A Hybrid Model for Stock Index Forecasting Integrating Adaptive Frequency-Domain Decomposition and Enhanced Transformer Encoder. Mathematics. 2026; 14(12):2202. https://doi.org/10.3390/math14122202
Chicago/Turabian StyleZheng, Hairong, Xiaozheng Zeng, Guoyu Hu, and Tingting Zhang. 2026. "A Hybrid Model for Stock Index Forecasting Integrating Adaptive Frequency-Domain Decomposition and Enhanced Transformer Encoder" Mathematics 14, no. 12: 2202. https://doi.org/10.3390/math14122202
APA StyleZheng, H., Zeng, X., Hu, G., & Zhang, T. (2026). A Hybrid Model for Stock Index Forecasting Integrating Adaptive Frequency-Domain Decomposition and Enhanced Transformer Encoder. Mathematics, 14(12), 2202. https://doi.org/10.3390/math14122202
