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FINITE STOCHASTIC PROCESSES I TOTAL PROBABILITY AND BAYES' RULE (Lecture 9)
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This is a video lecture on FINITE STOCHASTIC PROCESSES, TOTAL PROBABILITY AND BAYES' RULE. Three examples are used to illustrate a Finite Stochastic Process. Moreover, extensive discussion on the Theorem of Total Probability with two corresponding examples is given in this lecture. Most importantly, the application of the Bayes' Rule is illustrated in this video using three (3) situational problems.
FINITE STOCHASTIC PROCESSES I TOTAL PROBABILITY AND BAYES' RULE (Lecture 9)
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