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Minimum Hellinger distance estimation for finite mixtures of Poisson regression models and its applications
Authors:Lu Zudi  Hui Yer Van  Lee Andy H
Institution:Institute of Systems Science, Academy of Mathematics and System Sciences, Chinese Academy of Sciences, Beijing, China.
Abstract:Minimum Hellinger distance estimation (MHDE) has been shown to discount anomalous data points in a smooth manner with first-order efficiency for a correctly specified model. An estimation approach is proposed for finite mixtures of Poisson regression models based on MHDE. Evidence from Monte Carlo simulations suggests that MHDE is a viable alternative to the maximum likelihood estimator when the mixture components are not well separated or the model parameters are near zero. Biometrical applications also illustrate the practical usefulness of the MHDE method.
Keywords:Finite mixtures of Poisson regression models  Maximum likelihood estimation  Minimum Hellinger distance  Outliers  Robustness
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