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Dec 26, 2024
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STAT 651 - Probability Theory Credits: [3] Description: To build up the theoretical foundation of statistics, this course provides graduate-level non-measure theory probability trainings. The theory will be developed along with examples and problems demonstration, which is suitable for master program and PhD program trainings. Among the topics: axioms of probability, counting, conditional probability and independence, discrete and continuous random variables, sums of random variables, simple random walk and Poisson process, conditional expectation, univariate and multivariate distributions, multivariate normal distribution, and the distributions arising from the normal distribution, moments, transformations, inequalities, and convergence. Course ID: 057097 When Offered: Fall Recommended: Prior training on real analysis, multivariate calculus, and linear algebra. Components: Lecture Grading Method: A-F
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