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Behavior-Aware Auxiliary Corrections for Off-Policy Temporal-Difference Prediction

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Temporal-difference learning with function approximation can be unstable under off-policy sampling. TDC stabilizes off-policy TD through an auxiliary covariance correction, and TDRC further regularizes this correction in a single-timescale recursion. This paper studies a behavior-aware replacement of the auxiliary covariance geometry in the linear prediction setting, which is the standard local model for understanding the feature-space dynamics of value-function approximation. We first replace the TDC auxiliary matrix (C) by the behavior Bellman matrix (A_\mu), yielding BA-TDC, and then regularize the same behavior-aware equation to obtain BA-TDRC. This two-step construction separates the contribution of behavior-aware geometry from the contribution of regularization. The linear analysis also provides a tractable model for an auxiliary-geometry design question that arises in neural-network value approximation, where feature covariances and temporal transition matrices jointly shape the last-layer correction dynamics. We give a finite-state mean-system formulation, prove fixed-point preservation and almost-sure convergence under a Hurwitz stability condition on the instantiated mean system, and compare deterministic mean rates through the spectral radius of the exact linear error recursion. Experiments on the two-state counterexample, Baird's counterexample, Random Walk, and Boyan Chain show that the behavior-aware replacement can be highly beneficial by itself on some tasks, but that regularization is necessary for robust performance across harder settings.

Xingguo Chen, Zhiang He, Yuchen Shen, Shangdong Yang, Chao Li, Guang Yang, Wenhao Wang• 2026

Related benchmarks

TaskDatasetResultRank
Off-policy predictionBaird's counterexample
Steady-state AUC Error0.0151
15
Off-policy predictionRandom Walk
Steady-state AUC Error0.0236
15
Off-policy predictionBaird
Final RMSPBE0.0136
6
Off-policy predictionRandom Walk
Final RMSPBE0.0236
6
Off-policy predictionTwo-state
Steady-state AUC error9
6
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