2020
DOI: 10.48550/arxiv.2009.11360
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EPEM: Efficient Parameter Estimation for Multiple Class Monotone Missing Data

Abstract: The problem of monotone missing data has been broadly studied during the last two decades and has many applications in different fields such as bioinformatics or statistics. Commonly used imputation techniques require multiple iterations through the data before yielding convergence. Moreover, those approaches may introduce extra noises and biases to the subsequent modeling. In this work, we derive exact formulas and propose a novel algorithm to compute the maximum likelihood estimators (MLEs) of a multiple cla… Show more

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