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Article

Regime-Aware Stock Index Forecasting Under Latent Market States: A Hybrid Statistical Learning Framework with Cross-Market Validation

by
Chunxia Tian
1,
Roengchai Tansuchat
2,* and
Songsak Sriboonchitta
2
1
Faculty of Economics, Chiang Mai University, Chiang Mai 50200, Thailand
2
The Center of Excellence in Econometrics, Faculty of Economics, Chiang Mai University, Chiang Mai 50200, Thailand
*
Author to whom correspondence should be addressed.
Forecasting 2026, 8(3), 50; https://doi.org/10.3390/forecast8030050 (registering DOI)
Submission received: 31 March 2026 / Revised: 10 June 2026 / Accepted: 10 June 2026 / Published: 12 June 2026

Abstract

This study proposes a hybrid forecasting framework that integrates Kalman Filtering (KF), Markov Switching (MS), and nonlinear recurrent learning for stock-index prediction. The KF component smooths short-term price noise, the MS model identifies latent return–volatility regimes, and the LSTM/GRU components learn nonlinear temporal patterns from regime-conditioned information. The framework is evaluated using the CSI 300, S&P 500, and Nikkei 225 indices through forecasting-accuracy measures, Bootstrap Diebold–Mariano tests with Modified Bayes Factor evidence, out-of-sample trading simulations, and robustness checks. The empirical results show that regime conditioning is the primary source of forecasting and economic improvement. KF–MS–LSTM performs best for the CSI 300 and Standard MS performs strongest for the S&P 500, while KF–MS–LSTM and KF–MS–GRU are more competitive for the Nikkei 225. In contrast, models without regime information, including pure LSTM/GRU and the standalone Transformer, generally exhibit weaker forecasting and trading performance. The findings suggest that latent market-state information is more important than neural-network complexity alone for robust financial forecasting, while the incremental value of Kalman filtering and recurrent learning remains market dependent. Overall, the results support regime-aware forecasting as an interpretable and economically meaningful approach for stock-index prediction under heterogeneous market environments.
Keywords: stock forecasting; Kalman filtering; Markov switching; regime-aware forecasting; LSTM; GRU; cross-market validation; financial time series stock forecasting; Kalman filtering; Markov switching; regime-aware forecasting; LSTM; GRU; cross-market validation; financial time series

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MDPI and ACS Style

Tian, C.; Tansuchat, R.; Sriboonchitta, S. Regime-Aware Stock Index Forecasting Under Latent Market States: A Hybrid Statistical Learning Framework with Cross-Market Validation. Forecasting 2026, 8, 50. https://doi.org/10.3390/forecast8030050

AMA Style

Tian C, Tansuchat R, Sriboonchitta S. Regime-Aware Stock Index Forecasting Under Latent Market States: A Hybrid Statistical Learning Framework with Cross-Market Validation. Forecasting. 2026; 8(3):50. https://doi.org/10.3390/forecast8030050

Chicago/Turabian Style

Tian, Chunxia, Roengchai Tansuchat, and Songsak Sriboonchitta. 2026. "Regime-Aware Stock Index Forecasting Under Latent Market States: A Hybrid Statistical Learning Framework with Cross-Market Validation" Forecasting 8, no. 3: 50. https://doi.org/10.3390/forecast8030050

APA Style

Tian, C., Tansuchat, R., & Sriboonchitta, S. (2026). Regime-Aware Stock Index Forecasting Under Latent Market States: A Hybrid Statistical Learning Framework with Cross-Market Validation. Forecasting, 8(3), 50. https://doi.org/10.3390/forecast8030050

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