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Investigating a Predictive Certainty measure for Ensemble Based HIV Classification Systems

机译:研究基于集合的HIV分类系统的预测确定性度量

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This paper investigates whether there is a correlation between the predictive certainty measure for ensemble based classifiers and the prediction accuracy. The predictive certainty measure is the percentage of most dominant outcome from all the possible outcomes for the ensemble of classifiers. Three neural network ensemble classifiers were created using Bagging, Boosting and Bayesian Methods. All three ensembles are used to classify a patients HIV status using demographic variables obtained from an antenatal seroprevalence survey. All three ensembles perform equally well for the HIV classification but the ensemble obtained using Bayesian training method is most suited for giving a relevant predictive certainty measure. The predictive certainty measures obtained for the Bagging and Boosting ensembles are not suitable to use as a confidence measure because the prediction accuracy is low for cases that have high predictive certainty. The Bayesian ensemble is more suitable for making decisions.
机译:本文研究了基于集成的分类器的预测确定性度量与预测准确性之间是否存在相关性。预测确定性度量是分类器集合中所有可能结果中最主要结果的百分比。使用Bagging,Boosting和Bayesian方法创建了三个神经网络集成分类器。使用这三个合奏,使用从产前血清阳性率调查中获得的人口统计学变量对患者的HIV状况进行分类。这三个合奏在HIV分类中的表现均相同,但是使用贝叶斯训练方法获得的合奏最适合于提供相关的预测确定性度量。对于套袋和增强合奏获得的预测确定性度量值不适合用作置信度度量,因为对于具有较高预测确定性的情况,预测准确性较低。贝叶斯合奏更适合于决策。

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