2023
DOI: 10.48550/arxiv.2302.10066
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Sharp analysis of EM for learning mixtures of pairwise differences

Abstract: We consider a symmetric mixture of linear regressions with random samples from the pairwise comparison design, which can be seen as a noisy version of a type of Euclidean distance geometry problem. We analyze the expectation-maximization (EM) algorithm locally around the ground truth and establish that the sequence converges linearly, providing an ∞ -norm guarantee on the estimation error of the iterates. Furthermore, we show that the limit of the EM sequence achieves the sharp rate of estimation in the 2 -nor… Show more

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