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Partitioned learning of deep Boltzmann machines for SNP data

机译:SNP数据的Deep Boltzmann机器的分区学习

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Motivation: Learning the joint distributions of measurements, and in particular identification of an appropriate low-dimensional manifold, has been found to be a powerful ingredient of deep leaning approaches. Yet, such approaches have hardly been applied to single nucleotide polymorphism (SNP) data, probably due to the high number of features typically exceeding the number of studied individuals.
机译:动机:学习测量的联合分布,特别是识别适当的低维歧管,已被发现是深度倾斜方法的强大成分。 然而,这种方法几乎没有应用于单核苷酸多态性(SNP)数据,这可能是由于通常超过所学习的个体数量的特征的大量特征。

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