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Keywords = multi-trend objective price prediction

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26 pages, 4789 KB  
Article
EMAT: Enhanced Multi-Aspect Attention Transformer for Financial Time Series Forecasting
by Yingjun Chen, Wenfeng Shen, Han Liu and Xiaolin Cao
Entropy 2025, 27(10), 1029; https://doi.org/10.3390/e27101029 - 1 Oct 2025
Cited by 1 | Viewed by 1183
Abstract
Financial time series prediction remains a challenging task due to the inherent non-stationarity, noise, and complex temporal dependencies present in market data. Traditional forecasting methods often fail to capture the multifaceted nature of financial markets, where temporal proximity, trend dynamics, and volatility patterns [...] Read more.
Financial time series prediction remains a challenging task due to the inherent non-stationarity, noise, and complex temporal dependencies present in market data. Traditional forecasting methods often fail to capture the multifaceted nature of financial markets, where temporal proximity, trend dynamics, and volatility patterns simultaneously influence price movements. To address these limitations, this paper proposes the Enhanced Multi-Aspect Transformer (EMAT), a novel deep learning architecture specifically designed for stock market prediction. EMAT incorporates a Multi-Aspect Attention Mechanism that simultaneously captures temporal decay patterns, trend dynamics, and volatility regimes through specialized attention components. The model employs an encoder–decoder architecture with enhanced feed-forward networks utilizing SwiGLU activation, enabling superior modeling of complex non-linear relationships. Furthermore, we introduce a comprehensive multi-objective loss function that balances point-wise prediction accuracy with volatility consistency. Extensive experiments on multiple stock market datasets demonstrate that EMAT consistently outperforms a wide range of state-of-the-art baseline models, including various recurrent, hybrid, and Transformer architectures. Our ablation studies further validate the design, confirming that each component of the Multi-Aspect Attention Mechanism makes a critical and quantifiable contribution to the model’s predictive power. The proposed architecture’s ability to simultaneously model these distinct financial characteristics makes it a particularly effective and robust tool for financial forecasting, offering significant improvements in accuracy compared to existing approaches. Full article
(This article belongs to the Special Issue Entropy, Artificial Intelligence and the Financial Markets)
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25 pages, 1274 KB  
Review
A Systematic Literature Review of Financial Product Recommendation Systems
by Di Wu and Xuhui Li
Information 2025, 16(3), 196; https://doi.org/10.3390/info16030196 - 3 Mar 2025
Cited by 4 | Viewed by 4642
Abstract
E-finance has brought many challenges while promoting the process of financial inclusion, thus raising users’ requirements for Internet financial services, including recommendation systems. This systematic literature review examines the latest research approaches to financial product recommendation, focuses on the characteristics that distinguish financial [...] Read more.
E-finance has brought many challenges while promoting the process of financial inclusion, thus raising users’ requirements for Internet financial services, including recommendation systems. This systematic literature review examines the latest research approaches to financial product recommendation, focuses on the characteristics that distinguish financial product recommendation from other recommendation domains, proposes a financial product recommendation system framework, and organizes the literature based on this. By examining 65 publications published from 2018 to 2024, this analysis finds that current research primarily focuses on three categories of financial products: bank financial products, securities financial products, and other financial products. The financial product recommendation problem is characterized by significant features such as multi-objectivity, wide feature space, time sensitivity, and the existence of parallel interactive behaviors. Current research primarily focuses on three categories of financial products: bank financial products, securities financial products, and other financial products. With the aid of personalized recommendation methods, one can capture users’ preferences for the abstract attributes of financial products. Exploring the potential correlations among financial time series enables accurate and rapid prediction of price trends. Characterizing unstructured data using text-mining techniques can improve the accuracy of the model. Existing research methods focus on the multi-domain and time sensitivity of features and have achieved certain results in the field of financial product recommendation, but each method has its shortcomings, and future research can carry out in-depth exploration of multi-behavioral sequence recommendation, multi-task recommendation, and other aspects. Full article
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20 pages, 1485 KB  
Article
Portfolio Optimization with Multi-Trend Objective and Accelerated Quasi-Newton Method
by Caiming Lin and Xinyi He
Symmetry 2024, 16(7), 821; https://doi.org/10.3390/sym16070821 - 30 Jun 2024
Viewed by 1925
Abstract
We propose a portfolio optimization method with a multi-trend objective and an accelerated quasi-Newton method (MTO-AQNM). It leverages a BFGS-based quasi-Newton algorithm and incorporates an 1 regularization term and the self-funding constraint. The MTO is designed to identify multiple trend reversals. Different [...] Read more.
We propose a portfolio optimization method with a multi-trend objective and an accelerated quasi-Newton method (MTO-AQNM). It leverages a BFGS-based quasi-Newton algorithm and incorporates an 1 regularization term and the self-funding constraint. The MTO is designed to identify multiple trend reversals. Different trend reversals are asymmetric, and we hoped to extract rich and effective information from them. The AQNM adopts the BFGS method with the Wolfe conditions, which reduces computational complexity and improves convergence speed. We wanted to evaluate the performance of our algorithm through financial markets that were asymmetric in all respects. To this end, we conducted comprehensive experimental approaches on six benchmark data sets of real-world financial markets that were asymmetric in time, frequency, and asset type. Our method demonstrated superior performance over other state-of-the-art competitors across several mainstream evaluation metrics. Full article
(This article belongs to the Special Issue Symmetry or Asymmetry in Machine Learning)
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21 pages, 6233 KB  
Article
A Novel Deterministic Probabilistic Forecasting Framework for Gold Price with a New Pandemic Index Based on Quantile Regression Deep Learning and Multi-Objective Optimization
by Yan Wang and Tong Lin
Mathematics 2024, 12(1), 29; https://doi.org/10.3390/math12010029 - 22 Dec 2023
Cited by 6 | Viewed by 4370
Abstract
The significance of precise gold price forecasting is accentuated by its financial attributes, mirroring global economic conditions, market uncertainties, and investor risk aversion. However, predicting the gold price is challenging due to its inherent volatility, influenced by multiple factors, such as COVID-19, financial [...] Read more.
The significance of precise gold price forecasting is accentuated by its financial attributes, mirroring global economic conditions, market uncertainties, and investor risk aversion. However, predicting the gold price is challenging due to its inherent volatility, influenced by multiple factors, such as COVID-19, financial crises, geopolitical issues, and fluctuations in other metals and energy prices. These complexities often lead to non-stationary time series, rendering traditional time series modeling methods inadequate. Our paper presents a multi-objective optimization algorithm that refines the interval prediction framework with quantile regression deep learning in response to this issue. This framework comprehensively responds to gold’s financial market dynamics and uncertainties with a screening process of various factors, including pandemic-related indices, geopolitical indices, the US dollar index, and prices of various commodities. The quantile regression deep-learning models optimized by multi-objective optimization algorithms deliver robust, interpretable, and highly accurate predictions for handling non-linear relationships and complex data structures and enhance the overall predictive performance. The results demonstrate that the QRBiLSTM model, optimized using the MOALO algorithm, delivers excellent forecasting performance. The composite indicator AIS reaches −15.6240 and −11.5581 at 90% and 95% confidence levels, respectively. This underscores the model’s high forecasting accuracy and its potential to provide valuable insights for assessing future trends in gold prices. The deterministic and probabilistic forecasting framework for gold prices captures the market dynamics with the new pandemic index and comprehensively sets a new benchmark for predictive modeling in volatile market commodities like gold. Full article
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18 pages, 2284 KB  
Article
A Multi-Stage Intelligent Model for Electricity Price Prediction Based on the Beveridge–Nelson Disintegration Approach
by Haoran Zhao, Sen Guo and Huiru Zhao
Sustainability 2018, 10(5), 1568; https://doi.org/10.3390/su10051568 - 14 May 2018
Cited by 3 | Viewed by 2540
Abstract
Accurate electricity price prediction is key to the orderly operation of the electricity market. However, the uncertain, stochastic and fluctuant characteristics of electricity pricees make prediction difficult. With the aim of solving this issue, this investigation proposed a multi-stage intelligent model integrating the [...] Read more.
Accurate electricity price prediction is key to the orderly operation of the electricity market. However, the uncertain, stochastic and fluctuant characteristics of electricity pricees make prediction difficult. With the aim of solving this issue, this investigation proposed a multi-stage intelligent model integrating the Beveridge–Nelson decomposition (B-N-D) model, the least square support vector machine (LSSVM), and a nature-inspired optimization model named the whale optimization algorithm (WOA). Firstly, the B-N-D model was utilized to decompose the hourly electricity price time series into determinacy component, periodic trend, and stochastic item. Secondly, the WOA–LSSVM model was proposed to forecast the future hourly data of three components respectively, of which the optimal parameters of LSSVM were determined by using WOA. Finally, the future hourly electricity price data were computed by multiplying the forecasted data of those terms. To verify the validity of the proposed electricity price prediction model in this paper, five comparison approaches based on the B-N-D approach were selected, which are auto-regressive integrated moving average (ARIMA), single LSSVM, LSSVM optimized by the fruit-fly optimization algorithm (FOA), LSSVM optimized by particle swarm optimization (PSO) models, and WOA–LSSVM without B-N-D. By comparatively analyzing the error criteria values of the above models through testing on the objective data of the Pennsylvania–New Jersey–Maryland (PJM) electricity market collected from 11 December 2017 to 18 December 2017, from 15 January 2018 to 22 January 2018, and from 1 February 2018 to 25 February 2018, we conclude that the constructed intelligent model in this paper can greatly enhance the prediction precision of electricity prices. Full article
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