2024
DOI: 10.1093/bioadv/vbae051
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Adjusting for covariates and assessing modeling fitness in machine learning using MUVR2

Yingxiao Yan,
Tessa Schillemans,
Viktor Skantze
et al.

Abstract: Motivation Machine learning (ML) methods are frequently used in Omics research to examine associations between molecular data and e.g., exposures and health conditions. ML is also used for feature selection to facilitate biological interpretation. Our previous MUVR algorithm was shown to generate predictions and variable selections at state-of-the-art performance. However, a general framework for assessing modeling fitness is still lacking. In addition, enabling to adjust for covariates is a … Show more

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