预测糖尿病发病:一种集成监督学习方法

N. Nnamoko, A. Hussain, D. England
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引用次数: 18

摘要

提出了一项探索性研究,以衡量特征选择对异构集成的影响。任务是通过从加州大学欧文分校(VCI)数据库获得的医疗数据来预测糖尿病的发病。有证据表明,准确性和多样性是实现良好组合的两个重要要求。因此,本文的研究利用了异构基分类器的多样性;以及特征子集选择的优化效果,以提高准确率。五种广泛使用的分类器用于集成,并使用元分类器对其输出进行聚合。将结果与文献中使用相同数据集的类似研究进行比较。结果表明,该方法能较好地预测糖尿病的发病情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Diabetes Onset: An Ensemble Supervised Learning Approach
An exploratory research is presented to gauge the impact of feature selection on heterogeneous ensembles. The task is to predict diabetes onset with healthcare data obtained from UC Irvine (VCI) database. Evidence suggests that accuracy and diversity are the two vital requirements to achieve good ensembles. Therefore, the research presented in this paper exploits diversity from heterogeneous base classifiers; and the optimisation effect of feature subset selection in order to improve accuracy. Five widely used classifiers are employed for the ensembles and a meta-classifier is used to aggregate their outputs. The results are presented and compared with similar studies that used the same dataset within the literature. It is shown that by using the proposed method, diabetes onset prediction can be done with higher accuracy.
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