A Computational Intelligence Approach for Ranking Risk Factors in Preterm Birth

D. Zaharie, S. Holban, D. Lungeanu, D. Navolan
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引用次数: 6

Abstract

The aim of this paper is to propose a filter, based on a multi-objective evolutionary algorithm, for attributes' ranking in the context of a data mining task. The behavior of this filter is analyzed for the problem of ranking risk factors in preterm birth. The results obtained by applying the proposed evolutionary approach are compared with rankings obtained by applying some classical attributes selection methods and a logistic regression procedure. The influence of the ranking on a supervised classification (based on a radial basis function neural network) is also analyzed and the results suggest that the evolutionary approach provides a good quality ranking.
早产风险因素排序的计算智能方法
本文的目的是提出一种基于多目标进化算法的过滤器,用于数据挖掘任务背景下的属性排序。针对早产风险因素排序问题,分析了该滤波器的行为。将采用该方法得到的排序结果与采用经典属性选择方法和逻辑回归方法得到的排序结果进行了比较。分析了排序对基于径向基函数神经网络的监督分类的影响,结果表明进化方法提供了较好的排序质量。
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