Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/13515
Title: Modelling and coherent forecasting of zero-inflated count time series
Authors: Maiti, Raju
Biswas, Atanu
Guha, Apratim
Ong, Seng Huat
Keywords: Coherent forecasting;Pegram’s operator;Zero-inflated Poisson
Issue Date: 2014
Publisher: Statistical Modelling: An International Journal
Citation: Maiti, R., Biswas, A., Guha, A., & Ong, S. H. (2014). Modelling and coherent forecasting of zero-inflated count time series. Statistical Modelling: An International Journal, 14(5), 375-398.
Abstract: In this article, a new kind of stationary zero-inflated Pegram’s operator based integervalued time series process of order p with Poisson marginal or ZIPPAR(p) process is constructed for modelling count time series consisting a large number of zeros compared to standard Poisson time series processes. Several properties like stationarity, ergodicity are examined. Estimates of the model parameters are studied using three methods of estimation, namely Yule–Walker, conditional least squares and maximum likelihood estimation. Also h-step ahead coherent forecasting distributions of the proposed process for p = 1, 2 are derived. Real data set is used to examine and illustrate the proposed process with some simulation studies.
URI: http://hdl.handle.net/11718/13515
ISSN: 1471082X
Appears in Collections:Journal Articles

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