This course equips learners with the knowledge and practical skills to analyze, construct, and evaluate statistical models for count data using SAS. Beginning with Poisson regression, learners will identify appropriate datasets, assess distributional assumptions, and build models using PROC GENMOD with the log link function. They will then examine model diagnostics to detect issues such as overdispersion and refine models for better accuracy.

您将学到什么
Build Poisson regression models in SAS using PROC GENMOD and log link.
Differentiate Poisson vs. negative binomial models and assess dispersion.
Compare models using AIC, deviance, and diagnostics to optimize accuracy.
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7 项作业
August 2025
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该课程共有2个模块
This module introduces learners to the principles and application of Poisson regression using SAS. It covers the fundamentals of modeling count data, exploring datasets for suitability, fitting models using PROC GENMOD, and interpreting results. Learners will progress from understanding the problem context and dataset structure to building and refining Poisson regression models, diagnosing potential issues like overdispersion, and improving model accuracy through variable selection and statistical analysis techniques.
涵盖的内容
11个视频4个作业
This module builds on the foundations of Poisson regression by introducing the negative binomial model for count data exhibiting overdispersion. Learners will explore when and why to choose the negative binomial approach, understand the role of the dispersion parameter, and evaluate model outputs using statistical diagnostics and information criteria. Through practical SAS implementations, learners will gain the skills to refine models, address influential observations, and compare performance against Poisson regression to select the most appropriate modeling strategy.
涵盖的内容
5个视频3个作业
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