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Variable-Selection Emerges on Top in Empirical Comparison of Whole-Genome Complex-Trait Prediction Methods
by
Haws, David C.
, Karaman, Zivan
, Rish, Irina
, Kambadur, Prabhanjan
, He, Dan
, Parida, Laxmi
, Lozano, Aurelie C.
, Teyssedre, Simon
in
Algorithms
/ Animals
/ Biology
/ Computer applications
/ Computer simulation
/ Data processing
/ Datasets
/ Empirical analysis
/ Generalized linear models
/ Genetic aspects
/ Genetic markers
/ Genetic Markers - genetics
/ Genome - genetics
/ Genomes
/ Identification methods
/ Methods
/ Models, Genetic
/ Performance evaluation
/ Plant breeding
/ Population
/ Quantitative genetics
/ Quantitative Trait Loci - genetics
/ Selective breeding
/ Simulation
/ Swine
/ Zea mays - genetics
2015
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Variable-Selection Emerges on Top in Empirical Comparison of Whole-Genome Complex-Trait Prediction Methods
by
Haws, David C.
, Karaman, Zivan
, Rish, Irina
, Kambadur, Prabhanjan
, He, Dan
, Parida, Laxmi
, Lozano, Aurelie C.
, Teyssedre, Simon
in
Algorithms
/ Animals
/ Biology
/ Computer applications
/ Computer simulation
/ Data processing
/ Datasets
/ Empirical analysis
/ Generalized linear models
/ Genetic aspects
/ Genetic markers
/ Genetic Markers - genetics
/ Genome - genetics
/ Genomes
/ Identification methods
/ Methods
/ Models, Genetic
/ Performance evaluation
/ Plant breeding
/ Population
/ Quantitative genetics
/ Quantitative Trait Loci - genetics
/ Selective breeding
/ Simulation
/ Swine
/ Zea mays - genetics
2015
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Variable-Selection Emerges on Top in Empirical Comparison of Whole-Genome Complex-Trait Prediction Methods
by
Haws, David C.
, Karaman, Zivan
, Rish, Irina
, Kambadur, Prabhanjan
, He, Dan
, Parida, Laxmi
, Lozano, Aurelie C.
, Teyssedre, Simon
in
Algorithms
/ Animals
/ Biology
/ Computer applications
/ Computer simulation
/ Data processing
/ Datasets
/ Empirical analysis
/ Generalized linear models
/ Genetic aspects
/ Genetic markers
/ Genetic Markers - genetics
/ Genome - genetics
/ Genomes
/ Identification methods
/ Methods
/ Models, Genetic
/ Performance evaluation
/ Plant breeding
/ Population
/ Quantitative genetics
/ Quantitative Trait Loci - genetics
/ Selective breeding
/ Simulation
/ Swine
/ Zea mays - genetics
2015
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Variable-Selection Emerges on Top in Empirical Comparison of Whole-Genome Complex-Trait Prediction Methods
Journal Article
Variable-Selection Emerges on Top in Empirical Comparison of Whole-Genome Complex-Trait Prediction Methods
2015
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Overview
Accurate prediction of complex traits based on whole-genome data is a computational problem of paramount importance, particularly to plant and animal breeders. However, the number of genetic markers is typically orders of magnitude larger than the number of samples (p >> n), amongst other challenges. We assessed the effectiveness of a diverse set of state-of-the-art methods on publicly accessible real data. The most surprising finding was that approaches with feature selection performed better than others on average, in contrast to the expectation in the community that variable selection is mostly ineffective, i.e. that it does not improve accuracy of prediction, in spite of p >> n. We observed superior performance despite a somewhat simplistic approach to variable selection, possibly suggesting an inherent robustness. This bodes well in general since the variable selection methods usually improve interpretability without loss of prediction power. Apart from identifying a set of benchmark data sets (including one simulated data), we also discuss the performance analysis for each data set in terms of the input characteristics.
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