Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

DRL-STAF: A Deep Reinforcement Learning Framework for State-Aware Forecasting of Complex Multivariate Hidden Markov Processes

About

Forecasting multivariate hidden Markov processes is challenging due to nonlinear and nonstationary observations, latent state transitions, and cross-sequence dependencies. While deep learning methods achieve strong predictive accuracy, they typically lack explicit state modeling, whereas Hidden Markov Models (HMMs) provide interpretable latent states but struggle with complex nonlinear emissions and scalability. To address these limitations, we propose DRL-STAF, a Deep Reinforcement Learning based STate-Aware Forecasting framework that jointly predicts next-step observations and estimates the corresponding hidden states for complex multivariate hidden Markov processes. Specifically, DRL-STAF models complex nonlinear emissions using deep neural networks and estimates discrete hidden states using reinforcement learning, reducing the reliance on predefined transition structures and enabling flexible adaptation to diverse temporal dynamics. In particular, DRL-STAF mitigates the state-space explosion encountered by typical multivariate HMM-based methods. Extensive experiments demonstrate that DRL-STAF outperforms HMM variants, standalone deep learning models, and existing DL-HMM hybrids in most cases, while also providing reliable hidden-state estimates.

Manrui Jiang, Jingru Huang, Yong Chen, Chen Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Multivariate ForecastingTraffic
MSE6.461
141
ForecastingExchange (test)
MSE13.2381
63
Time Series ForecastingTraffic
MAE1.5193
58
Forecasting and state estimation10-variable simulated dataset (infrequent transitions)
Accuracy96.15
18
State estimation3-variable simulated dataset (No. 2) with frequent transitions v1 (test)
Accuracy93.24
18
ForecastingExchange dataset
MAE1.6438
13
Forecasting3-variable simulated dataset with infrequent transitions (test)
MAE0.0889
9
ForecastingSMachine
MAE0.0189
9
Forecasting3-variable simulated dataset frequent transitions v1 (test)
MAE0.107
9
Forecasting3-variable simulated dataset (No. 2) with frequent transitions v1 (test)
MAE0.1012
9
Showing 10 of 21 rows

Other info

Follow for update