Long Memory Conditional Heteroscedasticity in Count Data
Segnon Mawuli, Stapper Manuel
            Abstract
            This paper introduces a new class of integer-valued long memory processesthat are adaptations of the well-known FIGARCH(p, d, q) process of Baillie (1996) andHYGARCH(p, d, q) process of Davidson (2004) to a count data setting. We derive thestatistical properties of the models and show that reasonable parameter estimates areeasily obtained via conditional maximum likelihood estimation. An empirical application with financial transaction data illustrates the practical importance of the models.        
            Keywords
            Count Data; Poisson Autoregression; Fractionally Integrated; INGARCH        
Publication type
            Other scientific publication
Publication status
            Published
Year
            2019
Volume
            82/2019
Title of series
            CQE-Working-Papers
Publisher
            Center for Quantitative Economics (CQE), University of Muenster
Place
            University of Muenster
Language
            English
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