Maximum A Posteriori (MAP)

Maximum a posteriori estimation

In Bayesian statistics, the maximum a posteriori probability (MAP) estimate is the mode of the posterior distribution and can be used to estimate unknown quantities based on empirical data. It incorporates prior knowledge through a prior distribution, making it a regularization of maximum likelihood estimation.

2 courses cover this concept

10-401 Introduction to Machine Learning

Carnegie Mellon University

Spring 2018

A comprehensive exploration of machine learning theories and practical algorithms. Covers a broad spectrum of topics like decision tree learning, neural networks, statistical learning, and reinforcement learning. Encourages hands-on learning via programming assignments.

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CS 109 Probability for Computer Scientists

Stanford University

Spring 2023

This course offers a thorough understanding of probability theory and its applications in data analysis and machine learning. Prerequisites include CS103, CS106B, and Math 51 or equivalent courses.

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