Social Grammatical Evolution with imitation learning for real-valued function estimation

N. Le, M. O’Neill, David Fagan, A. Brabazon
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引用次数: 1

Abstract

Drawing on a rich literature concerning social learning in animals, this paper presents a variation of Grammatical Evolution (GE) which incorporates one of the most powerful forms of social learning, namely imitation learning. This replaces the traditional method of ‘communication’ between individuals in GE - crossover - which is drawn from an evolutionary metaphor. The paper provides an introduction to social learning, describes the proposed variant of GE, and tests on a series of benchmark symbolic regression problems. The results obtained are encouraging, being very competitive when compared with canonical GE. It is noted that the literature on social learning provides a number of useful meta-frameworks which can be used in the design of new search algorithms and to allow us to better understand the strengths and weaknesses of existing algorithms. Future work is indicated in this area.
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社会语法演化与实值函数估计的模仿学习
借鉴大量有关动物社会学习的文献,本文提出了一种语法进化(GE)的变体,其中包含了最强大的社会学习形式之一,即模仿学习。这取代了传统的通用电气中个体之间的“交流”方法——交叉——这是从一个进化的比喻中得出的。本文介绍了社会学习,描述了GE的变体,并对一系列基准符号回归问题进行了测试。所得结果令人鼓舞,与通用电气相比具有很强的竞争力。值得注意的是,关于社会学习的文献提供了许多有用的元框架,这些框架可用于设计新的搜索算法,并使我们能够更好地理解现有算法的优缺点。指出了这一领域今后的工作。
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