2021
DOI: 10.1101/2021.06.30.21259753
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Human genotype-to-phenotype predictions: boosting accuracy with nonlinear models

Abstract: Genotype-to-phenotype prediction is a central problem of human genetics. In recent years, it has become possible to construct complex predictive models for phenotypes, thanks to the availability of large genome data sets as well as efficient and scalable machine learning tools. In this paper, we make a three-fold contribution to this problem. First, we ask if state-of-the-art nonlinear predictive models, such as boosted decision trees, can be more efficient for phenotype prediction than conventional linear mod… Show more

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