An analysis of diversity measures for the dynamic design of ensemble of classifiers

Jose Augusto S. Lustosa Filho, A. Canuto, J. C. Xavier
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引用次数: 4

Abstract

Researches with ensemble Systems have emerged as an attempt to obtain a computational system that works with classification tasks in an efficient way. The main goal of using ensemble systems is to improve the performance of a pattern recognition system in terms of better generalization and/or of clearer design. One of the main challenges in the design of a ensemble system is the definition of the system components. The choice of the ensemble members can become a very difficult task and, in some cases, it can lead to ensembles with no performance improvement. In order to avoid this situation, the idea of DES (Dynamic Ensemble Selection)-based method has emerged, in which the classifiers to compose the ensemble systems are chosen in a dynamic way. In this paper, we present an analysis of different diversity measures in two dynamic ensemble election methods. These two methods use accuracy and diversity as the main criteria to select classifiers dynamically. The goal of this paper is to investigate the influence of different diversity measure in the dynamic selection of classifiers.
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分类器集成动态设计的多样性测度分析
集成系统的研究已经出现,试图获得一个有效地处理分类任务的计算系统。使用集成系统的主要目标是在更好的泛化和/或更清晰的设计方面提高模式识别系统的性能。设计集成系统的主要挑战之一是系统组件的定义。集成成员的选择可能成为一项非常困难的任务,并且在某些情况下,它可能导致没有性能改进的集成。为了避免这种情况,基于DES (Dynamic Ensemble Selection)方法的思想应运而生,该方法以动态的方式选择组成集成系统的分类器。本文对两种动态集合选择方法中不同的多样性度量进行了分析。这两种方法都以准确率和多样性作为动态选择分类器的主要标准。本文的目的是研究不同的多样性测度对分类器动态选择的影响。
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