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   a seasonal integer-valued ar(1) model with delaporte marginal distribution  
   
نویسنده shalbaf maryam ,parham gholamali ,chinipardaz rahim
منبع مدل سازي پيشرفته رياضي - 2024 - دوره : 14 - شماره : 3 - صفحه:16 -40
چکیده    Real-count data time series often show the phenomenon of over-dispersion. in this paper, we introduce the first-order integer-valued autoregressive process with seasonal structure. the univariate marginal distribution is derived from the delaporte distribution and the innovations are convolution of poisson with α-fold zero modified geometric distribution, based on binomial thinning operator, for modeling integer-valued time series with over-dispersion. some properties of the model are derived. the methods of yule-walker, conditional least squares, and conditional maximum likelihood are used to estimate the parameters. the monte carlo experiment is conducted to evaluate the performances of these estimators in finite samples. at the end, this model is illustrated using a real data set and is compared to some inar(1) models.
کلیدواژه seasonality ,count time series ,delaporte distribution ,inar(1) models ,overdispersion
آدرس shahid chamran university of ahvaz, faculty of mathematics and computer science, department of statistics, iran, shahid chamran university of ahvaz, faculty of mathematics and computer science, department of statistics, iran, shahid chamran university of ahvaz, faculty of mathematics and computer science, department of statistics, iran
پست الکترونیکی chinipardaz_r@scu.ac.ir
 
   a seasonal integer-valued ar(1) model with delaporte marginal distribution  
   
Authors
Abstract    real-count data time series often show the phenomenon of over-dispersion. in this paper, we introduce the first-order integer-valued autoregressive process with seasonal structure. the univariate marginal distribution is derived from the delaporte distribution and the innovations are convolution of poisson with α-fold zero modified geometric distribution, based on binomial thinning operator, for modeling integer-valued time series with over-dispersion. some properties of the model are derived. the methods of yule-walker, conditional least squares, and conditional maximum likelihood are used to estimate the parameters. the monte carlo experiment is conducted to evaluate the performances of these estimators in finite samples. at the end, this model is illustrated using a real data set and is compared to some inar(1) models.
Keywords seasonality ,count time series ,delaporte distribution ,inar(1) models ,overdispersion
 
 

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