Poisson regression: Difference between revisions
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Latest revision as of 23:07, 17 March 2025
Poisson regression is a form of statistical modeling used to model count data and contingency tables. It assumes that the dependent variable, Y, follows a Poisson distribution and the logarithm of its expected value can be modeled by a linear combination of unknown parameters. It is a type of generalized linear model (GLM).
Overview[edit]
Poisson regression is used when the data being analyzed are counts, which are non-negative integers (0, 1, 2, ...). The counts typically represent the number of times an event occurred in a fixed interval of time or space. The model provides a framework for understanding how the expected counts change in response to changes in the explanatory variables.
Mathematical Formulation[edit]
The basic form of Poisson regression is:
\[ \log(\mathbb{E}(Y|X)) = \beta_0 + \beta_1X_1 + \cdots + \beta_pX_p \]
where:
- \( Y \) is the count of events,
- \( X_1, \ldots, X_p \) are the explanatory variables,
- \( \beta_0, \beta_1, \ldots, \beta_p \) are the parameters to be estimated,
- \( \mathbb{E}(Y|X) \) is the expected value of \( Y \) given \( X \).
Assumptions[edit]
The key assumptions of Poisson regression include:
- The mean and variance of the dependent variable (Y) are equal.
- Observations are independent of each other.
- The logarithm of the expected value of the response variable can be modeled by a linear combination of input variables.
Applications[edit]
Poisson regression is widely used in various fields such as:
- Epidemiology for analyzing the rates of diseases,
- Insurance for claim count modeling,
- Transportation for traffic flow analysis,
- Sociology for crime or accident counts.
Model Fitting[edit]
The parameters of a Poisson regression model are typically estimated using maximum likelihood estimation (MLE). Software packages like R, SAS, and SPSS provide functions to fit Poisson regression models to data.
Extensions[edit]
Several extensions of Poisson regression exist to handle overdispersion and excess zeros, which are common issues in count data. These include:
- Negative binomial regression,
- Zero-inflated Poisson models,
- Hurdle models.
See Also[edit]

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