Tutorial III: Evolving neural networks

Risto Miikkulainen
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Abstract

Summary form only given. Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful technique for solving challenging reinforcement learning problems. Compared to traditional (e.g. value-function based) methods, neuroevolution is especially strong in domains where the state of the world is not fully known: The state can be disambiguated through recurrency, and novel situations handled through pattern matching. In this tutorial, I will review (1) neuroevolution methods that evolve fixedtopology networks, network topologies, and network construction processes, (2) ways of combining traditional neural network learning algorithms with evolutionary methods, and (3) applications of neuroevolution to creating intelligent agents in games.
教程三:进化的神经网络
只提供摘要形式。神经进化,即人工神经网络的进化,最近成为解决具有挑战性的强化学习问题的一种强大技术。与传统的(例如基于值函数的)方法相比,神经进化在世界状态不完全已知的领域尤其强大:状态可以通过递归消除歧义,通过模式匹配处理新情况。在本教程中,我将回顾(1)进化固定拓扑网络、网络拓扑和网络构建过程的神经进化方法,(2)将传统神经网络学习算法与进化方法相结合的方法,以及(3)神经进化在游戏中创建智能代理的应用。
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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