EVALUATION OF THE KULLBACK-LEIBLER DISCREPANCY FOR MODEL SELECTION IN OPEN POPULATION CAPTURE-RECAPTURE MODELS

被引:47
作者
BURNHAM, KP
ANDERSON, DR
WHITE, GC
机构
[1] COLORADO STATE UNIV,US FISH & WILDLIFE SERV,FT COLLINS,CO 80523
[2] COLORADO STATE UNIV,DEPT FISHERY & WILDLIFE BIOL,FT COLLINS,CO 80523
关键词
AIC; AKAIKE; CAPTURE-RECAPTURE; CORMACK-JOLLY-SEBER MODEL; KULLBACK-LEIBLER DISCREPANCY; MODEL SELECTION;
D O I
10.1002/bimj.4710360308
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
The objective of this paper is to introduce the logical basis of AIC-based model selection to persons analyzing capture-recapture data and to explore the key theoretical aspect of AIC based model selection, for open-model capture-recapture, needed for AIC to perform well in this context. Almost all previous work on AIC assumes a Gaussian model; that assumption does not hold for capture-recapture models. Assuming the Cormack-Jolly-Seber model as the true model, we used numerical methods to evaluate the expectation of the log-likelihood relative to Akaike's target predictive log-likelihood. The use of this particular target criterion was motivated by the idea of using the Kullback-Leibler discrepancy for model selection, for which Akaike found the bias of the sample log-likelihood was asymptotically K, where K = the number of estimated (by MLE) parameters. In some sense, then, AIC is a bias-adjusted log-likelihood. For a set of 81 plausible cases, we evaluated this bias almost exactly. The ratio of this bias to the first order theory (bias of K) and to second order theory (K + a sample size adjustment) is essentially 1 for these 81 cases. Thus, AIC should be a suitable basis for model selection in open model capture-recapture.
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页码:299 / 315
页数:17
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