近似q -学习:介绍

Deepshikha Pandey, Punit Pandey
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引用次数: 40

摘要

本文介绍了Zdzislaw Pawlak在1981年提出的一种基于粗糙集理论的Q-learning算法。在q学习过程中,智能体做出行动选择,努力最大化从环境中获得的奖励信号。基于奖励,agent会对未来的行为做出相应的策略调整。本文考虑的问题是对累积未来折现奖励期望值的过高估计。在强化学习过程中,这种折扣奖励用于评估智能体的行为和策略。由于对折扣奖励的高估,行动评价和政策变化不准确。该问题的解决方案来自于一种形式q -学习算法,该算法使用近似空间和q -学习的组合来估计操作的回报期望值。这可以通过考虑代理在近似空间范围内的行为模式来实现。由近似空间提供的框架使得可以度量代理行为是作为行为评估规范的一组可接受的代理行为的一部分(“覆盖”)的程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximate Q-Learning: An Introduction
This paper introduces an approach to Q-learning algorithm with rough set theory introduced by Zdzislaw Pawlak in 1981. During Q-learning, an agent makes action selections in an effort to maximize a reward signal obtained from the environment. Based on reward, agent will make changes in its policy for future actions. The problem considered in this paper is the overestimation of expected value of cumulative future discounted rewards. This discounted reward is used in evaluating agent actions and policy during reinforcement learning. Due to the overestimation of discounted reward action evaluation and policy changes are not accurate. The solution to this problem results from a form Q-learning algorithm using a combination of approximation spaces and Q-learning to estimate the expected value of returns on actions. This is made possible by considering behavior patterns of an agent in scope of approximation spaces. The framework provided by an approximation space makes it possible to measure the degree that agent behaviors are a part of (''covered by'') a set of accepted agent behaviors that serve as a behavior evaluation norm.
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