从随机游走中学习最优值

K. Lam, Hong Kong
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摘要

本文将Sutton和Barto(1998)的随机漫步例子扩展到具有折扣奖励的多阶段动态规划优化设置。利用假定动作的Bellman方程,导出了一般转移概率rho和贴现率gamma的最优值,并将原始随机漫步作为特例。具有资格迹(TD(A))的时间差分方法可以有效地预测不同rho和gamma的最优值;但是,当gamma小于1时,它们的性能严重依赖于公式中截断收益的选择
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning optimal values from random walk
In this paper we extend the random walk example of Sutton and Barto (1998) to a multistage dynamic programming optimization setting with discounted reward. Using Bellman equations on presumed action, the optimal values are derived for general transition probability rho and discount rate gamma, and include the original random walk as a special case. Temporal difference methods with eligibility traces, TD(A), are effective in predicting the optimal values for different rho and gamma; but their performances are found to depend critically on the choice of truncated return in the formulation when gamma is less than 1
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