Foundations for Machine Learning
This course provides a practical and theoretical tour of the most essential probability distributions that are most often used for modern machine learning and...
By Peter Chin on Coursera
About This Course
This course provides a practical and theoretical tour of the most essential probability distributions that are most often used for modern machine learning and data science. We will explore the fundamental building blocks for modeling discrete events (Bernoulli, binomial, multinomial distributions) and continuous quantities (Gaussian distribution) and discuss the implications of Bayes Theorem. Moreover, we will discuss two perspectives in estimating the model parameters, namely Bayesian perspective and frequentist perspective and learn how to reason about uncertainty in model parameters themselves using the powerful beta and Dirichlet distributions for Bayesian perspective and maximum likelihood estimate for frequentist perspective. By the end of this course, you will have a fluent command of the mathematical "language" needed to understand, build, and interpret probabilistic models.
Topics Covered
Frequently Asked Questions
How much does Foundations for Machine Learning cost?
Visit the Foundations for Machine Learning course page for current pricing and available discounts.
Who teaches Foundations for Machine Learning?
Foundations for Machine Learning is taught by Peter Chin, Dartmouth College.
What skill level is Foundations for Machine Learning for?
This course is designed for all levels learners.
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