Copyright © 2002 Elsevier Science B.V. All rights reserved.
Asymptotic theory for maximum likelihood in nonparametric mixture models
Received 1 March 2002;
revised 1 March 2002.
Available online 24 October 2002.
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Abstract
An overview of asymptotic results is presented for the maximum likelihood estimator in mixture models. The mixing distribution is assumed to be completely unknown, so that the model considered is nonparametric. Conditions for consistency, rates of convergence and asymptotic efficiency are provided. Examples include convolution models, and the case of piecewise monotone densities.
Author Keywords: Asymptotic efficiency; Entropy; Maximum likelihood; Mixture model; Rates of convergence
Mathematical subject codes: 62-02 62G2







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