Soft Bellman residual minimization with weighted Lp-norm aligns the objective with Bellman contraction as p increases and yields performance error bounds.
Bellman Residual Minimization for Control: Geometry, Stationarity, and Convergence
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abstract
Markov decision problems are most commonly solved via dynamic programming. Another approach is Bellman residual minimization, which directly minimizes the squared Bellman residual objective function. However, compared to dynamic programming, this approach has received relatively less attention, mainly because it is often less efficient in practice and can be more difficult to extend to model-free settings such as reinforcement learning. Nonetheless, Bellman residual minimization has several advantages that make it worth investigating, such as more stable convergence with function approximation for value functions. While Bellman residual methods for policy evaluation have been widely studied, methods for policy optimization (control tasks) have been scarcely explored. In this paper, we establish foundational results for the control Bellman residual minimization for policy optimization.
fields
cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Contraction-Aligned Analysis of Soft Bellman Residual Minimization with Weighted Lp-Norm for Markov Decision Problem
Soft Bellman residual minimization with weighted Lp-norm aligns the objective with Bellman contraction as p increases and yields performance error bounds.