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Probabilistic Systems Analysis and Applied Probability (Fall 2010) (M-I-T)
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Lecture 16: Markov Chains I (M-I-T)
Lecture 16: Markov Chains I (M-I-T)
Course:
Probabilistic Systems Analysis and Applied Probability (Fall 2010) (M-I-T)
Discipline:
Applied Sciences
Institute:
MIT
Instructor(s):
Prof. John Tsitsiklis
Level:
Undergraduate
Probabilistic Systems Analysis and Applied Probability (Fall 2010) (M-I-T)
Lecture 10: Continuous Bayes' Rule; Derived Distributions (M-I-T)
Lecture 11: Derived Distributions; Convolution; Covariance and Correlation (M-I-T)
Lecture 12: Iterated Expectations; Sum of a Random Number of Random Variables (M-I-T)
Lecture 13: Bernoulli Process (M-I-T)
Lecture 14: Poisson Process I (M-I-T)
Lecture 15: Poisson Process II (M-I-T)
Lecture 16: Markov Chains I (M-I-T)
Lecture 17: Markov Chains II (M-I-T)
Lecture 18: Markov Chains III (M-I-T)
Lecture 19: Weak Law of Large Numbers (M-I-T)
Lecture 1: Probability Models and Axioms (M-I-T)
Lecture 20: Central Limit Theorem (M-I-T)
Lecture 21: Bayesian Statistical Inference I (M-I-T)
Lecture 22: Bayesian Statistical Inference II (M-I-T)
Lecture 23: Classical Statistical Inference I (M-I-T)
Lecture 24: Classical Inference II (M-I-T)
Lecture 25: Classical Inference III; Course Overview (M-I-T)
Lecture 2: Conditioning and Bayes' Rule (M-I-T)
Lecture 3: Independence (M-I-T)
Lecture 4: Counting (M-I-T)