Linear Regression in R for Public Health

This course is part of Statistical Analysis with R for Public Health Specialization

Instructors: Alex Bottle +1 more

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What you'll learn

  •   Describe when a linear regression model is appropriate to use
  •   Read in and check a data set's variables using the software R prior to undertaking a model analysis
  •   Fit a multiple linear regression model with interactions, check model assumptions and interpret the output
  • Skills you'll gain

  •   Statistical Programming
  •   Epidemiology
  •   Statistical Modeling
  •   Descriptive Statistics
  •   Correlation Analysis
  •   Regression Analysis
  •   Exploratory Data Analysis
  •   Statistical Software
  •   Biostatistics
  •   Data Import/Export
  •   Data Analysis
  •   Probability & Statistics
  •   Statistical Methods
  •   Statistical Analysis
  •   R Programming
  • There are 4 modules in this course

    Public Health has been defined as “the art and science of preventing disease, prolonging life and promoting health through the organized efforts of society”. Knowing what causes disease and what makes it worse are clearly vital parts of this. This requires the development of statistical models that describe how patient and environmental factors affect our chances of getting ill. This course will show you how to create such models from scratch, beginning with introducing you to the concept of correlation and linear regression before walking you through importing and examining your data, and then showing you how to fit models. Using the example of respiratory disease, these models will describe how patient and other factors affect outcomes such as lung function. Linear regression is one of a family of regression models, and the other courses in this series will cover two further members. Regression models have many things in common with each other, though the mathematical details differ. This course will show you how to prepare the data, assess how well the model fits the data, and test its underlying assumptions – vital tasks with any type of regression. You will use the free and versatile software package R, used by statisticians and data scientists in academia, governments and industry worldwide.

    Linear Regression in R

    Multiple Regression and Interaction

    MODEL BUILDING

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