Probability Foundations for Electrical Engineers

Probability Foundations for Electrical Engineers Training provided by University Indian Institute of Technology Madras

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Created by IIT Madras Staff Last updated Wed, 02-Mar-2022 English


Probability Foundations for Electrical Engineers free videos and free material uploaded by IIT Madras Staff .

Syllabus / What will i learn?

Week 1: Introduction, Cardinality and Countability, Probability Space

Week 2: Properties of Probability Space, Discrete Probability Space, Generated \sigma-algebra

Week 3: Borel sets, Caratheodory’s extension theorem, Lebesgue Measure, Infinite coin toss model

Week 4: Conditional probability, Independence, Borel-Cantelli Lemmas

Week 5: Random variables, Distribution function, Types of random variables

Week 6: Discrete Random variables, Continuous random variables, Singular random variables

Week 7: Several random variables, joint distribution, independent random variables

Week 8: Transformation of random variables

Week 9: Integration and Expectation, properties of integrals, Monotone convergence, Dominated convergence, Expectation over different spaces

Week 10:Variance, covariance, and conditional expectation

Week 11:Transform techniques: moment generating function, characteristic function

Week 12:Convergence of random variables, Laws of large numbers, Central limit theorem



Curriculum for this course
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Description

This is a graduate level class on probability theory, geared towards students who are interested in a rigorous development of the subject. It is likely to be useful for students specializing in communications, networks, signal processing, stochastic control, machine learning, and related areas. In general, the course is not so much about computing probabilities, expectations, densities etc. Instead, we will focus on the ‘nuts and bolts’ of probability theory and aim to develop a more intricate understanding of the subject. For example, emphasis will be placed on deriving and proving fundamental results, starting from the basic axioms.INTENDED AUDIENCE :M.Tech/M.S/PhD students, who plan to specialize in communications, networks, signal processing, stochastic control, machine learning, or related areas.PREREQUISITES :There will be no official pre-requisites. Although the course will build up from the basics, it will be taught at a fairly sophisticated level. Familiarity with concepts from real analysis will also be useful. Perhaps the most important prerequisite for this class is an intangible one, namely mathematical maturity.INDUSTRIES SUPPORT :Research labs

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