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Moment-Matching Conditions for Exponential Families with Conditioning or Hidden Data
Published 7 Jan 2020 in cs.LG and stat.ML | (2001.09771v1)
Abstract: Maximum likelihood learning with exponential families leads to moment-matching of the sufficient statistics, a classic result. This can be generalized to conditional exponential families and/or when there are hidden data. This document gives a first-principles explanation of these generalized moment-matching conditions, along with a self-contained derivation.
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