Local dimensionality reduction within natural clusters for medical data analysis

Mykola Pechenizkiy, A. Tsymbal, S. Puuronen
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引用次数: 14

Abstract

Inductive learning systems have been successfully applied in a number of medical domains. Nevertheless, the effective use of these systems requires data preprocessing before applying a learning algorithm. Especially it is important for multidimensional heterogeneous data, presented by a large number of features of different types. Dimensionality reduction is one commonly applied approach. The goal of this paper is to study the impact of natural clustering on dimensionality reduction for classification. We compare several data mining strategies that apply dimensionality reduction by means of feature extraction or feature selection for subsequent classification. We show experimentally on microbiological data that local dimensionality reduction within natural clusters results in a better feature space for classification in comparison with the global search in terms of generalization accuracy.
用于医疗数据分析的自然聚类局部降维
归纳学习系统已经成功地应用于许多医学领域。然而,这些系统的有效使用需要在应用学习算法之前对数据进行预处理。特别是对于由大量不同类型的特征组成的多维异构数据,它显得尤为重要。降维是一种常用的方法。本文的目的是研究自然聚类对分类降维的影响。我们比较了几种通过特征提取或特征选择进行降维的数据挖掘策略。我们在微生物数据上的实验表明,与全局搜索相比,自然聚类中的局部降维可以在泛化精度方面获得更好的分类特征空间。
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