Graph convolutional network-based feature selection for high-dimensional and low-sample size data

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Abstract

Motivation: Feature selection is a powerful dimension reduction technique which selects a subset of relevant features for model construction. Numerous feature selection methods have been proposed, but most of them fail under the high-dimensional and low-sample size (HDLSS) setting due to the challenge of overfitting. Results: We present a deep learning-based method—GRAph Convolutional nEtwork feature Selector (GRACES)—to select important features for HDLSS data. GRACES exploits latent relations between samples with various overfitting-reducing techniques to iteratively find a set of optimal features which gives rise to the greatest decreases in the optimization loss. We demonstrate that GRACES significantly outperforms other feature selection methods on both synthetic and real-world datasets.

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Chen, C., Weiss, S. T., & Liu, Y. Y. (2023). Graph convolutional network-based feature selection for high-dimensional and low-sample size data. Bioinformatics, 39(4). https://doi.org/10.1093/bioinformatics/btad135

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