Robust mixture regression modeling using the least trimmed squares (LTS)-estimation method |
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Authors: | Fatma Zehra Doğru Olcay Arslan |
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Affiliation: | 1. Department of Econometrics, Faculty of Economics and Administrative Sciences, Giresun University, Giresun, Turkey;2. Department of Statistics, Faculty of Science, Ankara University, Ankara, Turkey |
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Abstract: | Mixture regression models are used to investigate the relationship between variables that come from unknown latent groups and to model heterogenous datasets. In general, the error terms are assumed to be normal in the mixture regression model. However, the estimators under normality assumption are sensitive to the outliers. In this article, we introduce a robust mixture regression procedure based on the LTS-estimation method to combat with the outliers in the data. We give a simulation study and a real data example to illustrate the performance of the proposed estimators over the counterparts in terms of dealing with outliers. |
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Keywords: | EM algorithm LTS-estimation method Mixture regression model Robust regression |
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