Second
Semester of Academic Year 2019-2020
MA 683 Probability Theory
Syllabus
Probability spaces, probability measures on countable and uncountable spaces, conditional probability,
independence; Random variables and vectors, distribution functions, functions of random vectors,
standard univariate and multivariate discrete and continuous distributions and their properties;
Mathematical expectations, moments, moment generating functions, characteristic functions,
inequalities, conditional expectations, covariance, correlation; Modes of convergence of
sequences of random variables, weak and strong laws of large numbers, central limit theorems;
Introduction to stochastic processes, definitions and examples, Markov chains,
Poisson processes, Brownian motion.
Texts/References:
- J. Jacod and P. Protter,
Probability Essentials,
Springer, 2004.
- S. Ross,
Introduction to Probability Models, 10th Edition,
Elsevier, 2010. [Newer Editions are also available]
- G. R. Grimmett and D. R. Stirzaker,
Probability and Random Processes, 3rd edition,
Oxford University Press, 2001.
- V. K. Rohatgi and A. K. Md. E. Saleh,
An Introduction to Probability and Statistics, 2nd edition,
Wiley, 2001.
- J. Rosenthal,
A First Look at Rigorous Probability Theory, 2nd edition,
World Scientific, 2006.
- P. G. Hoel, S. C. Port and C. J. Stone,
Introduction to Probability Theory,
Universal Book Stall, 2000.
- W. Feller,
An Introduction to Probability Theory and its Applications, Vol. 1, 3rd Edition,
Wiley, 1968.
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