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A FLEXIBLE REGRESSION MODEL FOR COUNT DATA
by
Sellers, Kimberly F.
, Shmueli, Galit
in
Applications
/ Approximation
/ Binomials
/ Biology, psychology, social sciences
/ Coefficients
/ Conway–Maxwell-Poisson (COM-Poisson) distribution
/ Datasets
/ dispersion
/ Exact sciences and technology
/ General topics
/ generalized linear models (GLM)
/ generalized Poisson
/ Inference
/ Linear inference, regression
/ Linear regression
/ Logistic regression
/ Mathematics
/ Probability and statistics
/ Regression analysis
/ Sciences and techniques of general use
/ Standard error
/ Statistics
/ Traffic estimation
2010
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A FLEXIBLE REGRESSION MODEL FOR COUNT DATA
by
Sellers, Kimberly F.
, Shmueli, Galit
in
Applications
/ Approximation
/ Binomials
/ Biology, psychology, social sciences
/ Coefficients
/ Conway–Maxwell-Poisson (COM-Poisson) distribution
/ Datasets
/ dispersion
/ Exact sciences and technology
/ General topics
/ generalized linear models (GLM)
/ generalized Poisson
/ Inference
/ Linear inference, regression
/ Linear regression
/ Logistic regression
/ Mathematics
/ Probability and statistics
/ Regression analysis
/ Sciences and techniques of general use
/ Standard error
/ Statistics
/ Traffic estimation
2010
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Do you wish to request the book?
A FLEXIBLE REGRESSION MODEL FOR COUNT DATA
by
Sellers, Kimberly F.
, Shmueli, Galit
in
Applications
/ Approximation
/ Binomials
/ Biology, psychology, social sciences
/ Coefficients
/ Conway–Maxwell-Poisson (COM-Poisson) distribution
/ Datasets
/ dispersion
/ Exact sciences and technology
/ General topics
/ generalized linear models (GLM)
/ generalized Poisson
/ Inference
/ Linear inference, regression
/ Linear regression
/ Logistic regression
/ Mathematics
/ Probability and statistics
/ Regression analysis
/ Sciences and techniques of general use
/ Standard error
/ Statistics
/ Traffic estimation
2010
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Journal Article
A FLEXIBLE REGRESSION MODEL FOR COUNT DATA
2010
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Overview
Poisson regression is a popular tool for modeling count data and is applied in a vast array of applications from the social to the physical sciences and beyond. Real data, however, are often over- or under-dispersed and, thus, not conducive to Poisson regression. We propose a regression model based on the Conway—Maxwell-Poisson (COM-Poisson) distribution to address this problem. The COM-Poisson regression generalizes the well-known Poisson and logistic regression models, and is suitable for fitting count data with a wide range of dispersion levels. With a GLM approach that takes advantage of exponential family properties, we discuss model estimation, inference, diagnostics, and interpretation, and present a test for determining the need for a COM-Poisson regression over a standard Poisson regression. We compare the COM-Poisson to several alternatives and illustrate its advantages and usefulness using three data sets with varying dispersion.
Publisher
Institute of Mathematical Statistics,The Institute of Mathematical Statistics
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