Count-data regression models of the time to adopt new technologies
This paper presents a framework for interpreting and using the count-data model for estimating the time of technology adoption. The Bernoulli trials of the negative binomial model are interpreted as the stages involved in a potential adopter learning and updating information relevant to a new technology. Empirically, the paper estimates the Poisson, the generalized negative binomial, and the geometric models in order to identify the determinants of computer adoption on farms in California.
Year of publication: |
1998
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Authors: | Mcwilliams, Bruce ; Tsur, Yacov ; Hochman, Eithan ; Zilberman, David |
Published in: |
Applied Economics Letters. - Taylor & Francis Journals, ISSN 1350-4851. - Vol. 5.1998, 6, p. 369-373
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Publisher: |
Taylor & Francis Journals |
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