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Evaluating an outlier generation method for training tree-based Genetic Programming applied to one-class classification

机译:评估用于一类分类的基于训练树的遗传规划的离群值生成方法

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Genetic Programming (GP) has been successfully applied to supervised classification problems. This work evaluates a tree-based GP implementation in a one-class classification scenario, using artificial outliers generated by a promising method recently developed by Bánhalmi et al. The proposed approach does not require the use of certain techniques employed by related works, thus providing a simpler yet effective strategy for one-class classification based on GP. Experiments presented herein explore parameter sensitivity of Bnhalmi''s outlier generation method and compare the proposed approach to previously published results obtained by others one-class classifiers like υ-SVM, one-class SVM and GMM.
机译:遗传规划(GP)已成功应用于有监督的分类问题。这项工作使用由Bánhalmi等人最近开发的有前途的方法生成的人工离群值,在一类分类方案中评估了基于树的GP实施。所提出的方法不需要使用相关工作所采用的某些技术,从而为基于GP的一类分类提供了一种更简单而有效的策略。本文介绍的实验探索了Bnhalmi离群值生成方法的参数敏感性,并将所提出的方法与由υ-SVM,一类SVM和GMM等其他一类分类器获得的先前发表的结果进行了比较。

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