Feb. 2, 2024, 3:46 p.m. | Siqiao Mu Diego Klabjan

cs.LG updates on arXiv.org arxiv.org

Since the objective functions of reinforcement learning problems are typically highly nonconvex, it is desirable that policy gradient, the most popular algorithm, escapes saddle points and arrives at second-order stationary points. Existing results only consider vanilla policy gradient algorithms with unbiased gradient estimators, but practical implementations under the infinite-horizon discounted reward setting are biased due to finite-horizon sampling. Moreover, actor-critic methods, whose second-order convergence has not yet been established, are also biased due to the critic approximation of the value …

algorithm algorithms convergence cs.lg functions gradient horizon policy popular practical reinforcement reinforcement learning unbiased

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