Duration Dependence and Dispersion in Count-Data Models
- 1 October 1995
- journal article
- Published by JSTOR in Journal of Business & Economic Statistics
- Vol. 13 (4) , 467
- https://doi.org/10.2307/1392392
Abstract
This paper explores the relation between non-exponential waiting times between events and the distribution of the number of events in a fixed time interval. It is shown that within this framework the frequently observed phenomenon of overdispersion, i.e. a variance that exceeds the mean, is caused by a decreasing hazard function of the waiting times, while an increasing hazard function leads to underdispersion. Using the assumption of i.i.d. gamma distributed waiting times, a new count data model is derived. Its use is illustrated in two applications: the number of births, and the number of doctor consultationsKeywords
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