1. Integer-Valued Autoregressive Models With Survival Probability Driven By A Stochastic Recurrence Equation
- Author
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Gorgi, Paolo, Econometrics and Operations Research, Tinbergen Institute, and Econometrics and Data Science
- Subjects
Methodology (stat.ME) ,FOS: Computer and information sciences ,score-driven models ,SDG 16 - Peace ,time-varying parameters ,SDG 16 - Peace, Justice and Strong Institutions ,INAR models ,Statistics - Methodology ,Justice and Strong Institutions ,Count time series - Abstract
This paper proposes a new class of integer-valued autoregressive models with a dynamic survival probability. The peculiarity of this class of models lies in the specification of the survival probability through a stochastic recurrence equation. The proposed models can effectively capture changing dependence over time and enhance both the in-sample and out-of-sample performance of integer-valued autoregressive models. This point is illustrated through an empirical application to a real-time series of crime reports. Additionally, this paper discusses the reliability of likelihood-based inference for the class of models. In particular, this study proves the consistency of the maximum likelihood estimator and a plug-in estimator for the conditional probability mass function in a misspecified model setting.
- Published
- 2018