Deep learning versus parametric and ensemble methods for genomic prediction of complex phenotypes

Volume: 52, Issue: 1
Published: Feb 24, 2020
Abstract
Background Transforming large amounts of genomic data into valuable knowledge for predicting complex traits has been an important challenge for animal and plant breeders. Prediction of complex traits has not escaped the current excitement on machine-learning, including interest in deep learning algorithms such as multilayer perceptrons (MLP) and convolutional neural networks (CNN). The aim of this study was to compare the predictive performance...
Paper Details
Title
Deep learning versus parametric and ensemble methods for genomic prediction of complex phenotypes
Published Date
Feb 24, 2020
Volume
52
Issue
1
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