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A Study of Good Predecessor Programs for Reducing Fitness Evaluation Cost in Genetic Programming

机译:良好的前任计划,用于减少遗传编程中的健身评估成本

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Good Predecessor Programs (GPPs) are the ancestors of the best program found in a Genetic Programming (GP) evolution. This paper reports on an investigation into GPPs with the ultimate goal of reducing fitness evaluation cost in tree-based GP systems. A framework is developed for gathering information about GPPs and a series of experiments is conducted on a symbolic regression problem, a binary classification problem, and a multi-class classification program with increasing levels of difficulty in different domains. The analysis of the data shows that during evolution, GPPs typically constitute less than 33% of the total programs evaluated, and may constitute less than 5%. The analysis results further shows that in all evaluated programs, the proportion of GPPs is reduced by increasing tournament size and to a less extent, affected by population size. Problem difficulty seems to have no clear influence on the proportion of GPPs.
机译:良好的前身计划(GPP)是在遗传编程(GP)演进中发现的最佳程序的祖先。本文报告了对GPP进行了调查,以降低基于树的GP系统的健身评估成本的最终目标。开发了一个框架,用于收集有关GPP的信息,并且在符号回归问题,二进制分类问题和多级分类程序中进行了一系列实验,以及不同域中的难度水平的多级分类计划。数据分析表明,在进化期间,GPP通常构成不到评估总计划的33%,并且可能构成不到5%。分析结果进一步表明,在所有评估的程序中,GPP的比例通过增加锦标赛规模和受群体规模影响的程度而降低。问题难度似乎对GPP的比例没有明显影响。

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