PROBABILITY

PROBABILITY

Marco Scarsini

Instructional goals

The goal of this course is to introduce the student to the formal way to deal with uncertainty. The course aims at being rigorous, although the technicalities will be reduced to the barest minimum. The course will cover the basic chapters of probability theory, with a particular emphasis on martingales and their properties.

Intended learning outcomes

The main goal of this course is to endow the student with the mathematical language and competence necessary for the modeling of uncertain phenomena. This will be achieved by introducing the main tools of rigorous probability theory. These tools find a plethora of applications in different fields, such as finance, econometrics, economic theory, data science, statistical learning, etc. Knowledge and understanding: The student who will actively take part in the course activities will be able to tackle a vast number of situations that require the usage of sophisticated probabilistic tools. Applying knowledge and understanding: The student--acquiring notions and methods--will be able to interpret and apply the appropriate reference models. Making judgements: The successful student will acquire analytical skills and the ability to select the suitable probabilistic model for problem-solving. Specifically, critical thinking, problem-solving and self-management will be adequately developed. Communication skills: At the end of the course the student will be able to understand and use the language of probability. Through the various activities that will take place during the course, the student will be able to put these communication skills into practice in various contexts, by adapting the concepts used to the interlocutor in the specific case. Learning skills: The mathematical-probabilistic knowledge acquired during the course will allow the student to autonomously adapt the various problems to the specific reference context. The student will develop a solid knowledge of the fundamental aspects of the subject so as to be able to pursue further studies or to undertake post-graduate professional training courses.

Course Contents

Events and sigma-fields Axioms of probability Conditional probability and independence Random variables Distribution functionss Integration with respect to a probability measure Generating functions Sums of independent random variables Random vectors Gaussian random vectors Convergence of random variables Weak convergence Laws of large numbers Central limit theorem Conditional expectation Martingales Stopping times

Reference Books

Jacod, J. & Protter, P. Probability Essentials Springer 2004 Rosenthal, J.S. A First Look at Rigorous Probability Theory, 2nd ed. World Scientific 2006 Gut, A. Probability. A Graduate Course, 2nd ed. Springer, 2014 Brémaud, P. Probability Theory and Stochastic Processes Springer 2020 Williams, D. A. (1991). Probability with martingales. Cambridge University press. Link https://tinyurl.com/ydrd8n8g

Teaching Methods

The whole course will be interactive and will require the students' active participation. Students will be strongly encouraged to form groups and engage in discussions so as to find themselves the solutions to the problems, rather than passively absorbing what is taught to them.

Assessment Method

Final written exam.

Thesis assignment criteria

An interview to verify understanding and motivation.

Does the syllabus cover sustainability topics?

No

Week 1 Contenuto sessioni on line e on campus

Session 1 Introduction to the course. Session 2 Events. Session 3 on campus Axioms of probability

Week 2 Contenuto sessioni on line e on campus

Session 1 Conditional probability Session 2 Independence Session 3 Bayes rule

Week 3 Contenuto sessioni on line e on campus

Session 1 Random variables Session 2 Discrete random variables Session 3 Continuous random variables

Week 4 Contenuto sessioni on line e on campus

Session 1 Expectation Session 2 Variance Session 3 Moments

Week 5 Contenuto sessioni on line e on campus

Session 1 Random vectors Session 2 online Joint and marginal distributions Session 3 Covariance

Week 6 Contenuto sessioni on line e on campus

Session 1 Markov and Chebyshev Inequalities Session 2 Cauchy inequality Session 3 on campus Jensen inequality

Week 7 Contenuto sessioni on line e on campus

Session 1 Gaussian random vectors Session 2 Properties of Gaussian random vectors Session 3 Conditional and marginal distributions of Gaussian vectors

Week 8 Contenuto sessioni on line e on campus

Session 1 Types of convergence Session 2 Implications of different types of convergence Session 3 Generating functions Consolidation

Week 9 Contenuto sessioni on line e on campus

Session 1 Weak law of large numbers Session 2 Strong law of large numbers Session 3 Central limit theorem

Week 10 Contenuto sessioni on line e on campus

Session 1 Conditional expectation Session 2 Martingales Session 3 Submartingales and supermartingales

Week 11 Contenuto sessioni on line e on campus

Session 1 Martingale inequalities Session 2 Martingale convergence theorems Session 3 Applications of MCT

Week 12 Contenuto sessioni on line e on campus

Session 1 Stopping times Session 2 Bounded stopping times Session 3 Optional stopping