Model comparison for generalized linear models with dependent observations
The stochastic expansion of the marginal quasi-likelihood function associated with a class of generalized linear models is shown. Based on the expansion, a quasi-Bayesian information criterion is proposed that is able to deal with misspecified models and dependent data, resulting in a theoretical ex...
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Zusammenfassung: | The stochastic expansion of the marginal quasi-likelihood function associated
with a class of generalized linear models is shown. Based on the expansion, a
quasi-Bayesian information criterion is proposed that is able to deal with
misspecified models and dependent data, resulting in a theoretical extension of
the classical Schwarz's Bayesian information criterion. It is also proved that
the proposed criterion has model selection consistency with respect to the
optimal model. Some illustrative numerical examples and a real data example are
presented. |
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DOI: | 10.48550/arxiv.1601.01082 |