Le et al., 2019 - Google Patents

Statistical inference relief (STIR) feature selection

Le et al., 2019

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Document ID
9129148361133512576
Author
Le T
Urbanowicz R
Moore J
McKinney B
Publication year
Publication venue
Bioinformatics

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Motivation Relief is a family of machine learning algorithms that uses nearest-neighbors to select features whose association with an outcome may be due to epistasis or statistical interactions with other features in high-dimensional data. Relief-based estimators are non …
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