Credible intervals are used in Bayesian statistics to represent the uncertainty of an unobserved parameter value. They differ from frequentist confidence intervals in that they treat the bounds as fixed and the estimated parameter as a random variable, and require knowledge of the prior distribution. An example of a credible interval is when the probability that a parameter lies between two values is 0.95.
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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