The Central Limit Theorem states that the sampling distribution of the standardized sample mean tends towards the standard normal distribution, even if the original variables are not normally distributed. It is a key concept in probability theory as it implies that probabilistic and statistical methods for normal distributions can be applied to other types of distributions. The theorem has seen many changes since its formal development in 1811.
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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