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      Likelihood Estimation with Incomplete Array Variate Observations

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          Abstract

          Missing data is an important challenge when dealing with high dimensional data arranged in the form of an array. In this paper, we propose methods for estimation of the parameters of array variate normal probability model from partially observed multiway data. The methods developed here are useful for missing data imputation, estimation of mean and covariance parameters for multiway data. A multiway semi-parametric mixed effects model that allows separation of multiway covariance effects is also defined and an efficient algorithm for estimation is recommended. We provide simulation results along with real life data from genetics to demonstrate these methods.

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          Author and article information

          Journal
          2012-09-12
          2015-01-05
          Article
          1209.2669
          ac0b18ac-1908-4ae6-8bfc-c38e07c5c174

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          stat.ME math.ST stat.ML stat.TH

          Machine learning,Methodology,Statistics theory
          Machine learning, Methodology, Statistics theory

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