ACTIVITIES | PERCENTAGES |
---|---|
Homework | 20% |
Midterm (Evening Quiz) | 35% |
Final Exam | 45% |
This is a course on the fundamentals of probability geared towards first or second-year graduate students who are interested in a rigorous development of the subject. The course covers most of the topics in 6.431 (sample space, random variables, expectations, transforms, Bernoulli and Poisson processes, finite Markov chains, limit theorems) but at a faster pace and in more depth. There will also be a number of additional topics such as: language, terminology, and key results from measure theory; interchange of limits and expectations; multivariate Gaussian distributions; deeper understanding of conditional distributions and expectations.
The course is geared towards students who need to use probability in their research at a reasonably sophisticated level (e.g., to be able to read the research literature in communications, stochastic control, machine learning, queuing, etc., and to carry out research involving precise mathematical statements and proofs). One of the functions of the course will be to develop mathematical maturity.
While the only formal prerequisite is 18.02, the course will assume some familiarity with elementary undergraduate probability and mathematical maturity. A course in analysis would be helpful but is not required.
ACTIVITIES | PERCENTAGES |
---|---|
Homework | 20% |
Midterm (Evening Quiz) | 35% |
Final Exam | 45% |