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The low-rank hurdle model
Published 6 Sep 2017 in stat.ML and cs.LG | (1709.01860v1)
Abstract: A composite loss framework is proposed for low-rank modeling of data consisting of interesting and common values, such as excess zeros or missing values. The methodology is motivated by the generalized low-rank framework and the hurdle method which is commonly used to analyze zero-inflated counts. The model is demonstrated on a manufacturing data set and applied to the problem of missing value imputation.
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