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      Reproducing kernel hilbert spaces regression methods for genomic assisted prediction of quantitative traits.

      1 ,
      Genetics
      Genetics Society of America

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          Abstract

          Reproducing kernel Hilbert spaces regression procedures for prediction of total genetic value for quantitative traits, which make use of phenotypic and genomic data simultaneously, are discussed from a theoretical perspective. It is argued that a nonparametric treatment may be needed for capturing the multiple and complex interactions potentially arising in whole-genome models, i.e., those based on thousands of single-nucleotide polymorphism (SNP) markers. After a review of reproducing kernel Hilbert spaces regression, it is shown that the statistical specification admits a standard mixed-effects linear model representation, with smoothing parameters treated as variance components. Models for capturing different forms of interaction, e.g., chromosome-specific, are presented. Implementations can be carried out using software for likelihood-based or Bayesian inference.

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          Molecular Classification of Cancer: Class Discovery and Class Prediction by Gene Expression Monitoring

          T. Golub (1999)
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            Gaussian Processes for Machine Learning

            A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, practical, probabilistic approach to learning in kernel machines. Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kernel machines. GPs have received increased attention in the machine-learning community over the past decade, and this book provides a long-needed systematic and unified treatment of theoretical and practical aspects of GPs in machine learning. The treatment is comprehensive and self-contained, targeted at researchers and students in machine learning and applied statistics. The book deals with the supervised-learning problem for both regression and classification, and includes detailed algorithms. A wide variety of covariance (kernel) functions are presented and their properties discussed. Model selection is discussed both from a Bayesian and a classical perspective. Many connections to other well-known techniques from machine learning and statistics are discussed, including support-vector machines, neural networks, splines, regularization networks, relevance vector machines and others. Theoretical issues including learning curves and the PAC-Bayesian framework are treated, and several approximation methods for learning with large datasets are discussed. The book contains illustrative examples and exercises, and code and datasets are available on the Web. Appendixes provide mathematical background and a discussion of Gaussian Markov processes.
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              Smoothing noisy data with spline functions

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                Author and article information

                Journal
                Genetics
                Genetics
                Genetics Society of America
                0016-6731
                0016-6731
                Apr 2008
                : 178
                : 4
                Affiliations
                [1 ] Department of Animal Sciences, University of Wisconsin, Madison, Wisconsin 53706, USA.
                Article
                178/4/2289
                10.1534/genetics.107.084285
                2323816
                18430950
                7d6d7a0e-8d68-4e87-9fa4-243ca17dbd41
                History

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