Measure-Theoretic Probability, 2023 With Applications to Statistics, Finance, and Engineering Compact Textbooks in Mathematics Series
Auteur : Shum Kenneth
This textbook offers an approachable introduction to measure-theoretic probability, illustrating core concepts with examples from statistics and engineering. The author presents complex concepts in a succinct manner, making otherwise intimidating material approachable to undergraduates who are not necessarily studying mathematics as their major. Throughout, readers will learn how probability serves as the language in a variety of exciting fields. Specific applications covered include the coupon collector?s problem, Monte Carlo integration in finance, data compression in information theory, and more.
Measure-Theoretic Probability is ideal for a one-semester course and will best suit undergraduates studying statistics, data science, financial engineering, and economics who want to understand and apply more advanced ideas from probability to their disciplines. As a concise and rigorous introduction to measure-theoretic probability, it is also suitable for self-study.Prerequisites include a basic knowledge of probability and elementary concepts from real analysis.
Kenneth Shum received his PhD degree in Electrical Engineering at University of Southern California. Currently, he is an Associate Professor in the School of Science and Engineering at The Chinese University of Hong Kong, Shenzhen. His research interests include information theory and coding theory, probability, and combinatorics.
Date de parution : 03-2024
Ouvrage de 259 p.
15.5x23.5 cm
Thème de Measure-Theoretic Probability :
Mots-clés :
Probability theory; Measure theory; Probability applications; Real analysis; Measure-theoretic probability; Riemann-Stieltjes integral; Sigma fields; Random variables; Statistical independence; Borel-Cantelli lemmas; Lebesgue integral; Optimal transport problem; Convergence modes; Hilbert space theory; Levy's continuity theorem