Modeling Data in the Tidyverse
Developing insights about your organization, business, or research project depends on effective modeling and analysis of the data you collect. Building...
By Shannon Ellis, PhD on Coursera
About This Course
Developing insights about your organization, business, or research project depends on effective modeling and analysis of the data you collect. Building effective models requires understanding the different types of questions you can ask and how to map those questions to your data. Different modeling approaches can be chosen to detect interesting patterns in the data and identify hidden relationships. This course covers the types of questions you can ask of data and the various modeling approaches that you can apply. Topics covered include hypothesis testing, linear regression, nonlinear modeling, and machine learning. With this collection of tools at your disposal, as well as the techniques learned in the other courses in this specialization, you will be able to make key discoveries from your data for improving decision-making throughout your organization. In this specialization we assume familiarity with the R programming language. If you are not yet familiar with R, we suggest you first complete R Programming before returning to complete this course.
Topics Covered
Frequently Asked Questions
How much does Modeling Data in the Tidyverse cost?
Visit the Modeling Data in the Tidyverse course page for current pricing and available discounts.
Who teaches Modeling Data in the Tidyverse?
Modeling Data in the Tidyverse is taught by Shannon Ellis, PhD, Johns Hopkins University.
What skill level is Modeling Data in the Tidyverse for?
This course is designed for advanced learners.
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