Imputation estimators for unnormalized models with missing data

Uehara, Masatoshi, Matsuda, Takeru, Kim, Jae Kwang

arXiv.org Machine Learning 

We propose estimation methods for unnormalized models with missing data. The key concept is to combine a modern imputation technique with estimators for unnormalized models including noise contrastive estimation and score matching. Further, we derive asymptotic distributions of the proposed estimators and construct the confidence intervals. The application to truncated Gaussian graphical models with missing data shows the validity of the proposed methods.

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