A comparison of marginal and joint generalized quasi-likelihood estimating equations based on the Com-Poisson GLM: Application to car breakdowns data

نویسندگان

  • N. Mamode Khan
  • V. Jowaheer
چکیده

In this paper, we apply and compare two generalized estimating equation approaches to the analysis of car breakdowns data in Mauritius. Number of breakdowns experienced by a machinery is a highly under-dispersed count random variable and its value can be attributed to the factors related to the mechanical input and output of that machinery. Analyzing such under-dispersed count observation as a function of the explanatory factors has been a challenging problem. In this paper, we aim at estimating the effects of various factors on the number of breakdowns experienced by a passenger car based on a study performed in Mauritius over a year. We remark that the number of passenger car breakdowns is highly under-dispersed. These data are therefore modelled and analyzed using Com-Poisson regression model. We use the two types of quasi-likelihood estimation approaches to estimate the parameters of the model: marginal and joint generalized quasi-likelihood estimating equation approaches. Under-dispersion parameter is estimated to be around 2.14 justifying the appropriateness of Com-Poisson distribution in modelling underdispersed count responses recorded in this study. Keywords—Breakdowns, Under-dispersion, Com-Poisson, Generalized Linear Model, marginal quasi-likelihood estimation, joint quasi-likelihood estimation.

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تاریخ انتشار 2010