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Evolutionary constructive induction

机译:进化建设性归纳法

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摘要

Feature construction in classification is a preprocessing step in which one or more new attributes are constructed from the original attribute set, the object being to construct features that are more predictive than the original feature set. Genetic programming allows the construction of nonlinear combinations of the original features. We present a comprehensive analysis of genetic programming (GP) used for feature construction, in which four different fitness functions are used by the GP and four different classification techniques are subsequently used to build the classifier. Comparisons are made of the error rates and the size and complexity of the resulting trees. We also compare the overall performance of GP in feature construction with that of GP used directly to evolve a decision tree classifier, with the former proving to be a more effective use of the evolutionary paradigm.
机译:分类中的特征构造是一个预处理步骤,其中从原始属性集构造一个或多个新属性,目的是构造比原始特征集更具预测性的特征。遗传编程允许构造原始特征的非线性组合。我们介绍了用于特征构建的遗传规划(GP)的综合分析,其中GP使用了四个不同的适应度函数,随后使用了四种不同的分类技术来构建分类器。比较错误率以及结果树的大小和复杂性。我们还比较了GP在特征构造中的整体性能与直接用于决策树分类器的GP的整体性能,而前者被证明可以更有效地利用进化范式。

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