A class of observation-driven random coefficient INAR(1) processes based on negative binomial thinning |
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Authors: | Meiju Yu Dehui Wang Kai Yang |
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Affiliation: | 1. School of Mathematics, Jilin University, Changchun 130012, China;2. School of Mathematics, Tonghua Normal University, Tonghua 134000, China;3. School of Basic Science, Changchun University of Technology, Changchun 130012, China |
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Abstract: | Integer-valued time series models and their applications have attracted a lot of attention over the last years. In this paper, we introduce a class of observation-driven random coefficient integer-valued autoregressive processes based on negative binomial thinning, where the autoregressive parameter depends on the observed values of the previous moment. Basic probability and statistics properties of the process are established. The unknown parameters are estimated by the conditional least squares and empirical likelihood methods. Specially, we consider three aspects of the empirical likelihood method: maximum empirical likelihood estimate, confidence region and EL test. The performance of the two estimation methods is compared through simulation studies. Finally, an application to a real data example is provided. |
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Keywords: | Corresponding author. primary 62M10 secondary 62G05 Random coefficient INAR(1) models Negative binomial thinning Conditional least squares Empirical likelihood |
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