In public health data analysis, disease counts, proportions, and rates are often used as outcome variables. These discrete outcomes differ from the continuous variables typically associated with linear regression. When analyzing count data, especially when the variable of interest is an integer that can take any value in the set of natural numbers, the Poisson Model frequently comes into play, depending on the specific context of the analysis.
The Poisson Model
The Poisson distribution is a member of the exponential family of distributions and uses the natural logarithm as its canonical link function. This makes it well-suited for modeling count data where the mean and variance of the response variable are equal.
For instance, consider counts \(Y_1,Y_2,…,Y_n\), which are independently and identically distributed as Poisson random variables with a mean \(E(Y_i)\). The Poisson regression approach models the expected value \(E(Y_i)\) as a function of covariates:
…
Complete Article on LinkedIn
The full article is available at the following link:
We welcome your comments and questions, and invite you to follow us for more insights.
We help businesses and researchers solve complex challenges by providing expert guidance in statistics, machine learning, and tailored education.
Our core services include:
– Statistical Consulting:
Comprehensive consulting tailored to your data-driven needs.
– Training and Coaching:
In-depth instruction in statistics, machine learning, and the use of statistical software such as SAS, R, and Python.
– Reproducible Data Analysis Pipelines:
Development of documented, reproducible workflows using SAS macros and customized R and Python code.
– Interactive Data Visualization and Web Applications:
Creation of dynamic visualizations and web apps with R (Shiny, Plotly), Python (Streamlit, Dash by Plotly), and SAS (SAS Viya, SAS Web Report Studio).
– Automated Reporting and Presentation:
Generation of automated reports and presentations using Markdown and Quarto.
– Scientific Data Analysis:
Advanced analytical support for scientific research projects.