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SSC: A Classifier Combination Method Based on Signal Strength

机译:SSC:基于信号强度的分类器组合方法

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摘要

We propose a new classifier combination method, the signal strength-based combining (SSC) approach, to combine the outputs of multiple classifiers to support the decision-making process in classification tasks. As ensemble learning methods have attracted growing attention from both academia and industry recently, it is critical to understand the fundamental issues of the combining rule. Motivated by the signal strength concept, our proposed SSC algorithm can effectively integrate the individual vote from different classifiers in an ensemble learning system. Comparative studies of our method with nine major existing combining rules, namely, geometric average rule, arithmetic average rule, median value rule, majority voting rule, Borda count, max and min rule, weighted average, and weighted majority voting rules, is presented. Furthermore, we also discuss the relationship of the proposed method with respect to margin-based classifiers, including the boosting method (AdaBoost.M1 and AdaBoost.M2) and support vector machines by margin analysis. Detailed analyses of margin distribution graphs are presented to discuss the characteristics of the proposed method. Simulation results for various real-world datasets illustrate the effectiveness of the proposed method.
机译:我们提出了一种新的分类器组合方法,即基于信号强度的合并(SSC)方法,以组合多个分类器的输出以支持分类任务中的决策过程。由于集成学习方法最近已引起学术界和业界的越来越多的关注,因此了解组合规则的基本问题至关重要。受信号强度概念的启发,我们提出的SSC算法可以在集成学习系统中有效地集成来自不同分类器的单个投票。提出了我们的方法与九种主要的现有合并规则的比较研究,这些规则分别是几何平均规则,算术平均规则,中值规则,多数投票规则,Borda计数,最大和最小规则,加权平均值和加权多数投票规则。此外,我们还讨论了所提出的方法与基于边距的分类器之间的关系,包括基于边距分析的增强方法(AdaBoost.M1和AdaBoost.M2)和支持向量机。详细介绍了保证金分布图,以讨论该方法的特点。各种实际数据集的仿真结果说明了该方法的有效性。

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