二值特征选择与分类器组合的新方法

A. Asaithambi, V. Valev, A. Krzyżak, V. Zeljkovic
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引用次数: 2

摘要

本文探讨了在使用二值特征时的特征选择和组合分类器。引入了二元特征的不可约描述符的概念。nrd是不包含任何冗余信息的模式描述符。本方法的基础数学模型是基于布尔公式的学习,布尔公式用于将nrd表示为连词。首先描述了构造一个模式的所有nrd的计算过程,然后给出了特征选择问题的两步求解方法。该方法在第一步NRDs的构建过程中计算特征的权重。然后,该方法的第二步根据构造的nrd中重复出现的特征更新这些权重。然后,本文提出了一种基于对不同分类器计算的投票来组合分类器的新方法。这个过程使用三种不同的方法来获得单个组合分类器,使用多数、平均和随机投票。
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A new approach for binary feature selection and combining classifiers
This paper explores feature selection and combining classifiers when binary features are used. The concept of Non-Reducible Descriptors (NRDs) for binary features is introduced. NRDs are descriptors of patterns that do not contain any redundant information. The underlying mathematical model for the present approach is based on learning Boolean formulas which are used to represent NRDs as conjunctions. Starting with a description of a computational procedure for the construction of all NRDs for a pattern, a two-step solution method is presented for the feature selection problem. The method computes weights of features during the construction of NRDs in the first step. The second step in the method then updates these weights based on repeated occurrences of features in the constructed NRDs. The paper then proceeds to present a new procedure for combining classifiers based on the votes computed for different classifiers. This procedure uses three different approaches for obtaining the single combined classifier, using majority, averaging, and randomized vote.
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