EACImpute:一种基于聚类的进化算法

J. Silva, Eduardo R. Hruschka
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引用次数: 6

摘要

我们描述了一种基于进化聚类算法的归算方法(EACImpute)。这种方法依赖于一个假设,即(部分未知的)数据簇可以为代入目的提供有用的信息。在5个数据集中获得的实验结果说明了EACImpute与广泛使用的imputation方法相似的不同场景,因此有资格加入实际应用中使用的方法池。特别是,传统上仅通过对其预测能力的某些度量来评估估算方法。虽然这种评价是有用的,但我们在这里也讨论了输入值在分类任务中的影响。最后,我们的实证结果表明,更好的预测结果并不一定意味着更少的分类偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EACImpute: An Evolutionary Algorithm for Clustering-Based Imputation
We describe an imputation method (EACImpute) that is based on an evolutionary algorithm for clustering. This method relies on the assumption that clusters of (partially unknown) data can provide useful information for imputation purposes. Experimental results obtained in 5 data sets illustrate different scenarios in which EACImpute performs similarly to widely used imputation methods, thus becoming eligible to join a pool of methods to be used in practical applications. In particular, imputation methods have been traditionally only assessed by some measures of their prediction capability. Although this evaluation is useful, we here also discuss the influence of imputed values in the classification task. Finally, our empirical results suggest that better prediction results do not necessarily imply in less classification bias.
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