Please use this identifier to cite or link to this item: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/10593
Title: Compound Mixed Models for Over-dispersed Count Data: An Examination with Insurance Claim Dataset
Authors: Tharshan, R.
Keywords: Over-dispersion, , ,;Two-stage model;Equi-dispersion;Negative binomial,;Sample index dispersion
Issue Date: 2018
Publisher: University of Jaffna
Abstract: In practice, the proportion format data analyzing under the binomial assumption; homogeneous success probability at each trial or count data analyzing under the Poisson assumption; equi-dispersion constraint, the observed variance simply exceeds from the expected variance. This context is explained by the over-dispersion and mostly it is common in biomedical and criminology studies. In the potential solution part, two-stage models that lead to compound mixed probability models for the responses allowing over dispersion, proposed to overcome this phenomenon. Our principle goal in this research is to examine the work efficiency of the mixture of the Poisson and gamma: negative binomial (NB) and the mixture of beta and NB: beta negative binomial (BNB) into the insurance claim dataset that vary in the value of the sample index dispersion (𝜙). The Poisson, NB, and BNB models fit by the maximum likelihood estimation (MLE), tested, and compared based on the p-value of the 𝜒 2 goodness of fit test on fifteen different sets of insurance claim frequency data that obtained from R packages covering the 𝜙 ranges from 1.053 to 3.154. This study finds that NB and BNB fit better than Poisson handling over-dispersion in the insurance claim datasets. It is observed that work efficiency of NB and BNB do not consistent with 𝜙 values and comparatively for large value of 𝜙, the BNB is a better fit than NB.
URI: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/10593
Appears in Collections:VIRC-2018



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