Factor models for multivariate count data
✍ Scribed by Michel Wedel; Ulf Böckenholt; Wagner A. Kamakura
- Publisher
- Elsevier Science
- Year
- 2003
- Tongue
- English
- Weight
- 220 KB
- Volume
- 87
- Category
- Article
- ISSN
- 0047-259X
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✦ Synopsis
We develop a general class of factor-analytic models for the analysis of multivariate (truncated) count data. Dependencies in multivariate counts are of interest in many applications, but few approaches have been proposed for their analysis. Our model class allows for a variety of distributions of the factors in the exponential family. The proposed framework includes a large number of previously proposed factor and random effect models as special cases and leads to many new models that have not been considered so far. Whereas previously these models were proposed separately as different cases, our framework unifies these models and enables one to study them simultaneously. We estimate the Poisson factor models with the method of simulated maximum likelihood. A Monte-Carlo study investigates the performance of this approach in terms of estimation bias and precision. We illustrate the approach in an analysis of TV channels data.
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