Selected article for: "maximum likelihood and time series"

Author: Altun, Emrah; Bhati, Deepesh; Khan, Naushad Mamode
Title: A new approach to model the counts of earthquakes: INARPQX(1) process
  • Cord-id: 0ofvu01o
  • Document date: 2021_2_3
  • ID: 0ofvu01o
    Snippet: This paper introduces a first-order integer-valued autoregressive process with a new innovation distribution, shortly INARPQX(1) process. A new innovation distribution is obtained by mixing Poisson distribution with quasi-xgamma distribution. The statistical properties and estimation procedure of a new distribution are studied in detail. The parameter estimation of INARPQX(1) process is discussed with two estimation methods: conditional maximum likelihood and Yule-Walker. The proposed INARPQX(1)
    Document: This paper introduces a first-order integer-valued autoregressive process with a new innovation distribution, shortly INARPQX(1) process. A new innovation distribution is obtained by mixing Poisson distribution with quasi-xgamma distribution. The statistical properties and estimation procedure of a new distribution are studied in detail. The parameter estimation of INARPQX(1) process is discussed with two estimation methods: conditional maximum likelihood and Yule-Walker. The proposed INARPQX(1) process is applied to time series of the monthly counts of earthquakes. The empirical results show that INARPQX(1) process is an important process to model over-dispersed time series of counts and can be used to predict the number of earthquakes with a magnitude greater than four.

    Search related documents:
    Co phrase search for related documents
    • Try single phrases listed below for: 1