The beta distribution is a family of continuous probability distributions defined on the interval [0, 1] with two positive parameters, alpha (α) and beta (β), that control the shape of the distribution. It is used to model random variables limited to finite intervals in a variety of disciplines, as well as percentages and proportions. It is also the conjugate prior for several distributions in Bayesian inference. The Dirichlet distribution is its generalization to multiple variables.
University of Washington
Winter 2022
This course dives deep into the role of probability in the realm of computer science, exploring applications such as algorithms, systems, data analysis, machine learning, and more. Prerequisites include CSE 311, MATH 126, and a grasp of calculus, linear algebra, set theory, and basic proof techniques. Concepts covered range from discrete probability to hypothesis testing and bootstrapping.
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+ 41 more conceptsStanford 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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+ 24 more concepts