Elsevier

Journal of Econometrics

Volume 33, Issue 3, December 1986, Pages 341-365
Journal of Econometrics

Specification and testing of some modified count data models

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Abstract

This paper explores the specification and testing of some modified count data models. These alternatives permit more flexible specification of the data-generating process (dgp) than do familiar count data models (e.g., the Poisson), and provide a natural means for modeling data that are over- or underdispersed by the standards of the basic models. In the cases considered, the familiar forms of the distributions result as parameter-restricted versions of the proposed modified distributions. Accordingly, score tests of the restrictions that use only the easily-computed ML estimates of the standard models are proposed. The tests proposed by Hausman (1978) and White (1982) are also considered. The tests are then applied to count data models estimated using survey microdata on beverage consumption.

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This paper is a substantial revision of a paper originally circulated as ‘Hurdle Models for Discrete and Grouped Dependent Variables’. The research has been supported in part by a cooperative agreement between the U.S. Environmental Protection Agency and Resources for the Future but should not be inferred to represent views of EPA. Thanks are due to two referees and Paul Portney for helpful and constructive comments on earlier drafts. Any errors that remain must be attributed to the author.