Description: In this lecture, the professor discussed Bayes rule, Bayes variations, and derived distributions. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed conditional expectation and sum of a random number of random variables. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed limit theorems, Chebyshev's inequality, and convergence "in probability". Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed multiple random variables: conditioning and independence. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed classical statistics, maximum likelihood (ML) estimation, and confidence intervals. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed classical inference, Linear regression, and binary hypothesis testing. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed classical inference, simple binary hypothesis testing, and composite hypotheses testing. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed conditional probability, multiplication rule, total probability theorem, and Bayes' rule. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed principles of counting, permutations, combinations, partitions, and binomial probabilities. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed probability density functions, cumulative distribution functions, and normal random variables. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed Bernoulli process, random processes, basic properties of Bernoulli process, distribution of interarrival times, the time of the kth success, merging and splitting. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed Poisson process, distribution of number of arrivals, and distribution of interarrival times. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed Markov process definition, n-step transition probabilities, and classification of states. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed Bayesian statistical inference and inference models. Instructor: John Tsitsiklis Note: The first few minutes of this video are missing.
Description: In this lecture, the professor discussed Bayesian statistical inference, least means squares, and linear LMS estimation. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed probability as a mathematical framework, probabilistic models, axioms of probability, and gave some simple examples. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed central limit theorem, Normal approximation, 1/2 correction for binomial approximation, and De Moivre–Laplace central limit theorem. Instructor: John Tsitsiklis
Description: In this lecture, the professor discussed random variables, probability mass function, expectation, and variance. Instructor: John Tsitsiklis