Regularized Centered Emphatic Temporal Difference Learning

📅 2026-05-02
📈 Citations: 0
Influential: 0
📄 PDF

career value

180K/year
📝 Abstract
Off-policy temporal-difference (TD) learning with function approximation faces a structural tradeoff among stability, projection geometry, and variance control. Emphatic TD (ETD) improves the off-policy projection geometry through follow-on emphasis, but the follow-on trace can have high variance. We revisit this tradeoff through Bellman-error centering. Although centering naturally removes a common drift term from TD errors, we show that a naive centered emphatic extension introduces an auxiliary coupling that can destroy the positive-definiteness of the ETD key matrix. We propose \emph{Regularized Emphatic Temporal-Difference Learning} (RETD), which preserves the follow-on trace and regularizes only the auxiliary centering recursion, corresponding to lifting the lower-right block of the coupled key matrix from \(1\) to \(1+c\). We derive the RETD core matrix, prove convergence under a conservative sufficient regularization condition, and evaluate the method on diagnostic linear off-policy prediction tasks. The experiments show that RETD avoids the instability of naive centered emphatic learning, preserves favorable emphatic geometry, and exhibits a robust intermediate regime for the regularization parameter \(c\) across the diagnostics.
Problem

Research questions and friction points this paper is trying to address.

off-policy learning
temporal-difference learning
function approximation
variance control
stability
Innovation

Methods, ideas, or system contributions that make the work stand out.

Emphatic TD
Bellman-error centering
Regularization
Off-policy learning
Function approximation
🔎 Similar Papers
No similar papers found.