Efficient semiparametric estimation and model selection for multidimensional mixtures
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Publication:1746537
DOI10.1214/17-EJS1387zbMath1473.62106arXiv1607.05430MaRDI QIDQ1746537
Judith Rousseau, Elisabeth Gassiat, Elodie Vernet
Publication date: 25 April 2018
Published in: Electronic Journal of Statistics (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1607.05430
Related Items
Semiparametric inference for mixtures of circular data ⋮ State-by-state Minimax Adaptive Estimation for Nonparametric Hidden Markov Models ⋮ Consistency of variational Bayes inference for estimation and model selection in mixtures ⋮ An overview of semiparametric extensions of finite mixture models
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Cites Work
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