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SIGIR   2004 Annual ACM Conference on Research and Development in Information Retrieval
Wall of Fame | Most Viewed SIGIR-2004 Paper
SIGIR
2004
ACM
13 years 10 months ago
GaP: a factor model for discrete data
We present a probabilistic model for a document corpus that combines many of the desirable features of previous models. The model is called “GaP” for Gamma-Poisson, the distri...
John F. Canny
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