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On a New Measure of Classifier Competence Applied to the Design of Multiclassifier Systems

机译:一种用于分类器系统设计的分类器能力度量新方法

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This paper presents a new method for calculating competence of a classifier in the feature space. The idea is based on relating the response of the classifier with the response obtained by a random guessing. The measure of competence reflects this relation and rates the classifier with respect to the random guessing in a continuous manner. Two multiclassifier systems representing fusion and selection strategies were developed using proposed measure of competence. The performance of multiclassifiers was evaluated using five benchmark databases from the UCI Machine Learning Repository and Ludmila Kuncheva Collection. Classification results obtained for three simple fusion methods and one multiclassifier system with selection strategy were used for a comparison. The experimental results showed that, regardless of the strategy used by the multiclassifier system, the classification accuracy has increased when the measure of competence was employed. The improvement was most significant for simple fusion methods (sum, product and majority vote). For all databases, two developed multiclassifier systems produced the best classification scores.
机译:本文提出了一种在特征空间中计算分类器能力的新方法。该思想基于将分类器的响应与通过随机猜测获得的响应相关联。能力的度量反映了这种关系,并以连续的方式针对随机猜测对分类器进行评分。使用提议的能力测度开发了两种代表融合和选择策略的多分类器系统。使用UCI机器学习存储库和Ludmila Kuncheva Collection的五个基准数据库评估了多分类器的性能。使用三种简单融合方法和一个具有选择策略的多分类器系统获得的分类结果进行比较。实验结果表明,无论采用多分类器系统采用何种策略,采用胜任力度量方法均能提高分类精度。对于简单的融合方法(总和,乘积和多数表决),此改进最为显着。对于所有数据库,两个已开发的多分类器系统产生了最佳分类得分。

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