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Wiley InterScience

Biometrics

Biometrics

Volume 59 Issue 4, Pages 955 - 961

Published Online: 11 Dec 2003

©2009 International Biometric Society



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Modeling the Dependence between Number of Trials and Success Probability in Beta-Binomial–Poisson Mixture Distributions
Jun Zhu 1 , Jens C. Eickhoff 2, *, and Mark S. Kaiser 3
  1 Department of Statistics, University of Wisconsin-Madison
  2 Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison
  3 Department of Statistics, Iowa State University
Correspondence to   * email: eickhoff@biostat.wisc.edu
Copyright The International Biometric Society, 2003
KEYWORDS
EM algorithm • Foraging behavior • Overdispersion

Summary.  

Abstract
          1. Introduction
          2. Beta-Binomial Poisson Mixture Model
          3. Example: Foraging Behavior of Herons
          4. Conclusion
          References

Summary.  Beta-binomial models are widely used for overdispersed binomial data, with the binomial success probability modeled as following a beta distribution. The number of binary trials in each binomial is assumed to be nonrandom and unrelated to the success probability. In many behavioral studies, however, binomial observations demonstrate more complex structures. In this article, a general beta-binomial–Poisson mixture model is developed, to allow for a relation between the number of trials and the success probability for overdispersed binomial data. An EM algorithm is implemented to compute both the maximum likelihood estimates of the model parameters and the corresponding standard errors. For illustration, the methodology is applied to study the feeding behavior of green-backed herons in two southeastern Missouri streams.


Received December 2002. Revised May 2003. Accepted June 2003.

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.0006-341X.2003.00110.x About DOI

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