Lecture

Conditional Expectation: Grouping Lemma

In course
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Description

This lecture covers the concept of conditional expectation and the grouping lemma, focusing on the strong law of large numbers and the convergence of random series. It delves into the challenges of ensuring uncountable conditions for probability measures and the bijection between probability measures on different spaces. The instructor discusses the regular conditional distribution of random variables given a sigma-algebra, emphasizing the importance of meeting numerous conditions for probability measures. The lecture concludes with examples applying Markov's and Chebyshev's inequalities to estimate distributions and demonstrate concentration around the mean.

Instructor
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