Towards Run-time Efficient Hierarchical Reinforcement Learning

Sasha Abramowitz, G. Nitschke
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引用次数: 1

Abstract

This paper investigates a novel method combining Scalable Evolution Strategies (S-ES) and Hierarchical Reinforcement Learning (HRL). S-ES, named for its excellent scalability, was popularised with demonstrated performance comparable to state-of-the-art policy gradient methods. However, S-ES has not been tested in conjunction with HRL methods, which empower temporal abstraction thus allowing agents to tackle more challenging problems. We introduce a novel method merging S-ES and HRL, which creates a highly scalable and efficient (compute time) algorithm. We demonstrate that the proposed method benefits from S-ES's scalability and indifference to delayed rewards. This results in our main contribution: significantly higher learning speed and competitive performance compared to gradient-based HRL methods, across a range of tasks.
迈向运行时高效的分层强化学习
本文研究了一种结合可扩展进化策略(S-ES)和层次强化学习(HRL)的新方法。S-ES因其出色的可扩展性而得名,其性能可与最先进的策略梯度方法相媲美。然而,S-ES还没有与HRL方法一起进行测试,HRL方法赋予了时间抽象能力,从而允许代理处理更具挑战性的问题。我们提出了一种新的融合S-ES和HRL的方法,该方法创建了一个高度可扩展和高效(计算时间)的算法。我们证明了所提出的方法受益于S-ES的可扩展性和对延迟奖励的漠不关心。这导致了我们的主要贡献:在一系列任务中,与基于梯度的HRL方法相比,显著提高了学习速度和竞争表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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