Evolutionary Robotics: Incremental Learning of Sequential Behavior

Nicolas Bredèche, L. Hugues
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引用次数: 5

Abstract

Evolutionary robotics offers an efficient and easy-to-use framework for automatically building behaviors for an autonomous robot. However, a major drawback of this approach relies in the difficulty to define the fitness function (i.e. the learning setup) in order to get satisfying results. Recent works addressed this issue either by decomposing the learning task or by endowing the agent with such capabilities that should make the goal easier to achieve. Literature in evolutionary approach shows that modifying the very nature of genetic operators and/or fitness during the course of evolution may lead to better results for complex problems. In the scope of this short paper, we are interested in the reformulation of a straightforward complex fitness function into more subtle versions using different approaches
进化机器人:顺序行为的增量学习
进化机器人技术为自动构建自主机器人的行为提供了一个高效、易用的框架。然而,这种方法的一个主要缺点在于难以定义适应度函数(即学习设置)以获得令人满意的结果。最近的研究通过分解学习任务或赋予智能体使目标更容易实现的能力来解决这个问题。进化方法的文献表明,在进化过程中修改遗传算子和/或适应度的本质可能会为复杂问题带来更好的结果。在这篇短文的范围内,我们感兴趣的是使用不同的方法将一个简单的复杂适应度函数重新表述为更微妙的版本
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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