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The Copula Information Criteria
Authors:Steffen Grønneberg  Nils Lid Hjort
Affiliation:1. Department of Economics, BI Norwegian Business School;2. Department of Mathematics, University of Oslo
Abstract:We derive two types of Akaike information criterion (AIC)‐like model‐selection formulae for the semiparametric pseudo‐maximum likelihood procedure. We first adapt the arguments leading to the original AIC formula, related to empirical estimation of a certain Kullback–Leibler information distance. This gives a significantly different formula compared with the AIC, which we name the copula information criterion. However, we show that such a model‐selection procedure cannot exist for copula models with densities that grow very fast near the edge of the unit cube. This problem affects most popular copula models. We then derive what we call the cross‐validation copula information criterion, which exists under weak conditions and is a first‐order approximation to exact cross validation. This formula is very similar to the standard AIC formula but has slightly different motivation. A brief illustration with real data is given.
Keywords:AIC  CIC  copulae  model selection  Maximum Pseudo‐likelihood estimators  multivariate rank statistics  cross‐validation‐CIC
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