Ensemble feature selection with the simple Bayesian classification in medical diagnostics

A. Tsymbal, S. Puuronen, D. Patterson
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引用次数: 188

Abstract

Ensembles of simple Bayesian classifiers have traditionally not been in the focus of classification research partly because of the stability of a simple Bayesian classifier and because of the rarely valid basic assumption that the classification features are independent of each other, given the predicted value. As a way to try to circumvent these problems we suggest the use of an ensemble of simple Bayesian classifiers each concentrating on solving a sub-problem of the problem domain. Our experiments with the problem of separating acute appendicitis show that in this way it is possible to retain the comprehensibility and at the same time to increase the diagnostic accuracy, sensitivity, and specificity. The advantages of the approach include also simplicity and speed of learning, small storage space needed during the classification, speed of classification, and the possibility of incremental learning.
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医学诊断中基于简单贝叶斯分类的集成特征选择
简单贝叶斯分类器的集成历来没有成为分类研究的重点,部分原因是简单贝叶斯分类器的稳定性,以及在给定预测值的情况下,分类特征彼此独立的基本假设很少有效。作为尝试规避这些问题的一种方法,我们建议使用简单贝叶斯分类器的集合,每个分类器专注于解决问题域的一个子问题。我们对急性阑尾炎分离问题的实验表明,这种方法可以在保留可理解性的同时提高诊断的准确性、敏感性和特异性。该方法的优点还包括学习简单,学习速度快,分类过程中所需的存储空间小,分类速度快,并且可以进行增量学习。
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