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-List Of Titles -Model Selection and claim frequency for workers' compensation insurance

Please use this identifier to cite or link to this item: http://hdl.handle.net/1959.14/110223

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Title
Model Selection and claim frequency for workers' compensation insurance
Related
ASTIN bulletin, Vol. 40, Issue 2 (2010), p.779-796
DOI
10.2143/AST.40.2.2061136
Publisher
Peeters Publishers
Date
2010
FoR/RFCD Code(s)
010200 Applied Mathematics  150200 Banking, Finance and Investment
Author/Creator
Cui, Jisheng
Author/Creator
Pitt, David
Author/Creator
Qian, Guoqi
Description
We consider a set of workers’ compensation insurance claim data where the aggregate number of losses (claims) reported to insurers are classified by year of occurrence of the event causing loss, the US state in which the loss event occurred and the occupation class of the insured workers to which the loss count relates. An exposure measure, equal to the total payroll of observed workers in each three-way classification, is also included in the dataset. Data are analysed across ten different states, 24 different occupation classes and seven separate observation years. A multiple linear regression model, with only predictors for main effects, could be estimated in 223+9+1+1 = 234 ways, theoretically more than 17 billion different possible models! In addition, one might expect that the number of claims recorded in each year in the same state and relating to the same occupation class, are positively correlated. Different modelling assumptions as to the nature of this correlation should also be considered. On the other hand it may reasonably be assumed that the number of losses reported from different states and from different occupation classes are independent. Our data can therefore be modelled using the statistical techniques applicable to panel data and we work with generalised estimating equations (GEE) in the paper. For model selection, Pan (2001) suggested the use of an alternative to the AIC, namely the quasi-likelihood under independence model criterion (QIC), for model comparison. This paper develops and applies a Gibbs sampling algorithm for efficiently locating, out of the more than 17 billion possible models that could be considered for the analysis, that model with the optimal (least) QIC value. The technique is illustrated using both a simulation study and using workers’ compensation insurance claim data.
Description
18 page(s)
Subject Keyword
010200 Applied Mathematics
Subject Keyword
150200 Banking, Finance and Investment
Subject Keyword
model selection
Subject Keyword
QIC
Subject Keyword
longitudinal study
Subject Keyword
workers’ compensation
Resource Type
journal article
Organisation
Macquarie University. Dept. of Actuarial Studies

Identifier
http://hdl.handle.net/1959.14/110223
Identifier
ISSN:1783-1350
Identifier
mq-rm-2009011179
Language
eng
Reviewed
Reviewed
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Subject
"ASTIN bulletin"
 
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Pitt, David

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