Introducing Emergent Loose Modules into the Learning Process of a Linear Genetic Programming System

Xin Li, Chi Zhou, Weimin Xiao, P. Nelson
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引用次数: 1

Abstract

Modularity and building blocks have drawn attention from the genetic programming (GP) community for a long time. The results are usually twofold: a hierarchical evolution with adequate building block reuse can accelerate the learning process, but rigidly defined and excessively employed modules may also counteract the expected advantages by confining the reachable search space. In this work, we introduce the concept of emergent loose modules based on a new linear GP system, prefix gene expression programming (P-GEP), in an attempt to balance between the stochastic exploration and the hierarchical construction for the optimal solutions. Emergent loose modules are dynamically produced by the evolution, and are reusable as sub-functions in later generations. The proposed technique is fully illustrated with a simple symbolic regression problem. The initial experimental results suggest it is a flexible approach in identifying the evolved regularity and the emergent loose modules are critical in composing the best solutions
将涌现松散模块引入线性遗传规划系统的学习过程
模块化和构建块一直是遗传编程(GP)界关注的问题。结果通常是双重的:具有适当的构建块重用的分层进化可以加速学习过程,但是严格定义和过度使用的模块也可能通过限制可访问的搜索空间而抵消预期的优势。在这项工作中,我们引入了基于一个新的线性GP系统的涌现松散模块的概念,前缀基因表达规划(P-GEP),试图在随机探索和分层构建之间取得最优解的平衡。演化过程中动态产生的涌现松散模块可作为子功能在后续迭代中重用。用一个简单的符号回归问题充分说明了所提出的技术。初步的实验结果表明,这是一种灵活的识别演化规律的方法,而出现的松散模块对于组成最佳解决方案至关重要
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