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Forecasting transaction counts with integer-valued GARCH models
Journal article   Peer reviewed

Forecasting transaction counts with integer-valued GARCH models

Abdelhakim Aknouche, Bader S. Almohaimeed and Stefanos Dimitrakopoulos
Studies in nonlinear dynamics and econometrics, Vol.26(4), pp.529-539
01/09/2022

Abstract

Business & Economics Economics Mathematical Methods In Social Sciences Social Sciences Social Sciences, Mathematical Methods
Using numerous transaction data on the number of stock trades, we conduct a forecasting exercise with INGARCH models, governed by various conditional distributions; the Poisson, the linear and quadratic negative binomial, the double Poisson and the generalized Poisson. The model parameters are estimated with efficient Markov Chain Monte Carlo methods, while forecast evaluation is done by calculating point and density forecasts.

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