Jan. 1, 2023, midnight | Vaidotas Simkus, Benjamin Rhodes, Michael U. Gutmann

JMLR www.jmlr.org

Statistical models are central to machine learning with broad applicability across a range of downstream tasks. The models are controlled by free parameters that are typically estimated from data by maximum-likelihood estimation or approximations thereof. However, when faced with real-world data sets many of the models run into a critical issue: they are formulated in terms of fully-observed data, whereas in practice the data sets are plagued with missing data. The theory of statistical model estimation from incomplete data is …

data data sets free gibbs incomplete data inference likelihood machine machine learning maximum-likelihood statistical world

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