基于集成多分类器统计性能分析的加权多数投票

Retantyo Wardoyo, Aina Musdholifah, Gede Angga Pradipta, I. N. Hariyasa Sanjaya
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引用次数: 3

摘要

集成分类器方法使用多个基本分类器来预测新的测试实例,而加权多数投票则采用使用多个度量参数提供不同权重值的方案。然而,确定适当的权重值以获得适当的集成模型是一个关键问题。因此,本研究提出了一种新的加权多数投票方案,该方案涉及基于集成学习的五个基本分类器,包括随机森林、决策树(C.45)、梯度增强机、XGBosst和Bagging。通过分析从准确率、召回率、精密度和F测度等参数衡量的基分类器性能,制定加权方案。实验使用公共数据集和拥有的脐带数据进行,结果表明,与基础分类器和先前研究的方法相比,所提出的方法能够提高性能,平均准确率为86.1%,精密度为86%,召回率为86%,F测量值为86%。
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Weighted Majority Voting by Statistical Performance Analysis on Ensemble Multiclassifier
Ensemble classifier method uses several base classifiers to predict a new test instance, while weighted majority voting has a scheme providing different weight values using several measurement parameters. However, the determination of the appropriate weight value to obtain an adequate ensemble model is a critical issue. This study, therefore, proposed a novel weighted majority voting scheme involving five base classifiers based on ensemble learning, including Random Forest, Decision Tree (C.45), Gradient Boosting Machine, XGBosst, and Bagging. The weighting scheme was formulated by analyzing the base classifier performance measured from the parameters of accuracy, recall, precision, and F Measure. The experiments were conducted using public datasets and umbilical cord data owned and the results showed the proposed method has the ability to improve performance in comparison with the base classifier and methods from previous studies with the best recorded in umbilical cord dataset with an average accuracy of 86.1%, a precision of 86%, a recall of 86%, and an F measure of 86%.
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