Title of article :
Parameter Estimation on Zero-Inflated Negative Binomial Regression with Right Truncated Data
Author/Authors :
Saffari, Ehsan Universiti Teknologi Malaysia - Faculty of Science - Department of Mathematical Sciences, =Malaysia , Adnan, Robiah Universiti Teknologi Malaysia - Faculty of Science - Department of Mathematical Sciences, Malaysia
From page :
1483
To page :
1487
Abstract :
A Poisson model typically is assumed for count data, but when there are so many zeroes in the response variable, because of overdispersion, a negative binomial regression is suggested as a count regression instead of Poisson regression. In this paper, a zero-inflated negative binomial regression model with right truncation count data was developed. In this model, we considered a response variable and one or more than one explanatory variables. The estimation of regression parameters using the maximum likelihood method was discussed and the goodness-of-fit for the regression model was examined. We studied the effects of truncation in terms of parameters estimation, their standard errors and the goodness-of-fit statistics via real data. The results showed a better fit by using a truncated zero-inflated negative binomial regression model when the response variable has many zeros and it was right truncated.
Keywords :
Maximum likelihood , truncated data , zero , inflated negative binomial
Record number :
2555513
Link To Document :
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