论文标题
课程学习具有进步功能
Curriculum Learning with a Progression Function
论文作者
论文摘要
用于加强学习的课程学习是一种越来越流行的技术,涉及在一系列中间任务(称为课程)上培训代理,以提高代理商的性能和学习速度。本文介绍了基于进展和映射函数的课程生成的新型范式。尽管进程功能在任何给定时间指定环境的复杂性,但映射功能生成了特定复杂性的环境。引入了不同的进程功能,包括基于代理商的性能的自主在线任务进度。我们的方法的好处和广泛的适用性通过经验将其性能与六个领域的两种最先进的课程学习算法进行比较。
Curriculum Learning for Reinforcement Learning is an increasingly popular technique that involves training an agent on a sequence of intermediate tasks, called a Curriculum, to increase the agent's performance and learning speed. This paper introduces a novel paradigm for curriculum generation based on progression and mapping functions. While progression functions specify the complexity of the environment at any given time, mapping functions generate environments of a specific complexity. Different progression functions are introduced, including an autonomous online task progression based on the agent's performance. Our approach's benefits and wide applicability are shown by empirically comparing its performance to two state-of-the-art Curriculum Learning algorithms on six domains.