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Nov 10, 2024
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STAT 676 - Advanced Probability Units: 4 Advanced treatment of probability theory and its applications. May include: expectation, conditioning, generating/characteristic functions, modes of convergence, limit theorems, bivariate distributions, Monte Carlo simulation, Markov processes, combinatorial techniques, Markov Chain Monte Carlo, and Bayesian models.
Prerequisites: STAT 620. Possible Instructional Methods: On-ground. Grading: A-F grading only. Student Learning Outcomes - Upon successful completion of this course students will be able to:
- Demonstrate the use of probability models.
- Use the Law of Large Numbers to show convergence to the expectation of a random variable.
- Use the Central Limit Theorem to show convergence to the limiting distribution of a random variable.
- Use appropriate software to simulate random numbers from probability models and demonstrate the long-run properties for stochastic probability models.
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