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Feature selection and classification in genetic programming: Application to haptic-based biometric data

机译:基因编程中的特征选择和分类:应用于基于触觉的生物特征数据

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In this paper, a study is conducted in order to explore the use of genetic programming, in particular gene expression programming (GEP), in finding analytic functions that can behave as classifiers in high-dimensional haptic feature spaces. More importantly, the determined explicit functions are used in discovering minimal knowledge-preserving subsets of features from very high dimensional haptic datasets, thus acting as general dimensionality reducers. This approach is applied to the haptic-based biometrics problem; namely, in user identity verification. GEP models are initially generated using the original haptic biometric datatset, which is imbalanced in terms of the number of representative instances of each class. This procedure was repeated while considering an under-sampled (balanced) version of the datasets. The results demonstrated that for all datasets, whether imbalanced or under-sampled, a certain number (on average) of perfect classification models were determined. In addition, using GEP, great feature reduction was achieved as the generated analytic functions (classifiers) exploited only a small fraction of the available features.
机译:在本文中,进行了一项研究,以探索遗传程序,特别是基因表达程序(GEP)在寻找可以在高维触觉特征空间中充当分类器的分析功能时的用途。更重要的是,确定的显式函数用于从非常高维的触觉数据集中发现特征的最小知识保留子集,从而充当通用的维数减少器。该方法适用于基于触觉的生物特征识别问题;即在用户身份验证中。 GEP模型最初是使用原始的触觉生物统计数据集生成的,该数据集在每个类的代表性实例的数量方面是不平衡的。考虑数据集的欠采样(平衡)版本时,重复此过程。结果表明,对于所有数据集,无论是不平衡的还是抽样不足的,都确定了一定数量(平均)的理想分类模型。此外,使用GEP,由于生成的分析功能(分类器)仅利用了可用功能的一小部分,因此实现了极大的功能简化。

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