2022
DOI: 10.48550/arxiv.2202.08786
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Refined Convergence Rates for Maximum Likelihood Estimation under Finite Mixture Models

Abstract: We revisit convergence rates for maximum likelihood estimation (MLE) under finite mixture models. The Wasserstein distance has become a standard loss function for the analysis of parameter estimation in these models, due in part to its ability to circumvent label switching and to accurately characterize the behaviour of fitted mixture components with vanishing weights. However, the Wasserstein metric is only able to capture the worst-case convergence rate among the remaining fitted mixture components. We demon… Show more

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