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Articles

Estimation for finite mixture of mode regression models using skew-normal distribution

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Pages 7479-7501 | Received 13 Feb 2021, Accepted 08 Feb 2022, Published online: 08 Mar 2022
 

Abstract

The mode of a distribution provides a significant summary. A regression model with skew-normal errors provides a useful extension for traditional normal regression models when the data involve asymmetric outcomes. Finite mixture of regression (FMR) models are frequently used to analyze data that arise from a heterogeneous population. This work develops a new data analysis tool called finite mixture of mode regression (FMMoR) in order to explore skewed data from several subpopulations. The main virtue of considering the FMMoR models for skewed data is that this class of models has a nice hierarchical representation which allows easy implementation of inferences. A productive clustering method via mode identification is applied to select the number of components. A modified expectation-maximization algorithm facilitated by the two-point step size gradient descent method (GDEM), simultaneously, is developed for the inference. The proposed methods are evaluated through some simulation studies and illustrated by a real dataset.

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Acknowledgment

The authors greatly appreciate the editor, associate editor, and three reviewers for their thoughtful comments and suggestions, which have improved the quality of the manuscript.

Additional information

Funding

This work is partially supported by the National Natural Science Foundation of China (11861041).

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