Lecture 31: Markov Chains | Statistics 110
We introduce Markov chains -- a very beautiful and very useful kind of stochastic process -- and discuss the Markov property, transition matrices, and stationary distributions.
Видео Lecture 31: Markov Chains | Statistics 110 канала Harvard University
Видео Lecture 31: Markov Chains | Statistics 110 канала Harvard University
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