Introduction to Statistics and Data Analysis - Bayesian Linear Regression and Maximum a Posteriori (MAP) Estimate
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28 learners
What you'll learn
This course includes
9.5 hours of video
Certificate of completion
Access on mobile and TV
Summary
Full Transcript
In this video we show how to incorporate prior information into the least squares regression, consistent with the framework of Bayesian statistics. The so-called maximum a posteriori (MAP) estimate is one of the foundational tools in statistical fitting and machine learning.
This video was produced at the University of Washington, and we acknowledge funding support from the Boeing Company
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