Understanding the theoretical properties of projected Bellman equation, linear Q-learning, and approximate value iteration
Understanding the theoretical properties of projected Bellman equation, linear Q-learning, and approximate value iteration
In this paper, we study the theoretical properties of the projected Bellman equation (PBE) and two algorithms to solve this equation: linear Q-learning and approximate value iteration (AVI). We consider two sufficient conditions for the existence of a solution to PBE : strictly negatively row dominating diagonal (SNRDD) assumption and a condition motivated by the convergence of AVI. The SNRDD assumption also ensures the convergence of linear Q-learning, and its relationship with the convergence of AVI is examined. Lastly, several interesting observations on the solution of PBE are provided when using $\epsilon$-greedy policy.
Han-Dong Lim、Donghwan Lee
计算技术、计算机技术
Han-Dong Lim,Donghwan Lee.Understanding the theoretical properties of projected Bellman equation, linear Q-learning, and approximate value iteration[EB/OL].(2025-04-15)[2025-05-09].https://arxiv.org/abs/2504.10865.点此复制
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