Using the Kriging Correlation for unsupervised feature selection problems

SCIENTIFIC REPORTS(2022)

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摘要
This paper proposes a KC Score to measure feature importance in clustering analysis of high-dimensional data. The KC Score evaluates the contribution of features based on the correlation between the original features and the reconstructed features in the low dimensional latent space. A KC Score-based feature selection strategy is further developed for clustering analysis. We investigate the performance of the proposed strategy by conducting a study of four single-cell RNA sequencing (scRNA-seq) datasets. The results show that our strategy effectively selects important features for clustering. In particular, in three datasets, our proposed strategy selected less than 5% of the features and achieved the same or better clustering performance than when using all of the features.
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关键词
Classification and taxonomy,Machine learning,Statistical methods,Science,Humanities and Social Sciences,multidisciplinary
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