Fundamental Probability: A Computational Approach

Fundamental Probability: A Computational Approach by Marc S. Paolella, published by Wiley on April 5, 2006, spans 488 pages and is presented in English. This book serves as an engaging introduction to probability, a crucial measure across various fields such as bioinformatics, econometrics, finance, and computer science. It is developed from a successful course and emphasizes practical applications alongside theoretical exploration, featuring a wide range of examples and exercises that utilize computational tools.
Readers will find a comprehensive treatment of both classic and innovative material, including advanced topics like combinatorics, multivariate sampling schemes, and fat-tailed distributions. The book also focuses on computational methods, with numerous examples in MATLAB, and includes a self-contained appendix covering essential calculus and analysis tools. With over 150 end-of-chapter exercises graded by difficulty and a full set of solutions available online, this edition is designed for students in various disciplines who have a foundational understanding of calculus and linear algebra.
Official synopsis Publisher
Probability is a vital measure in numerous disciplines, from bioinformatics and econometrics to finance/insurance and computer science. Developed from a successful course, Fundamental Probability provides an engaging and hands-on introduction to this important topic. Whilst the theory is explored in detail, this book also emphasises practical applications, with the presentation of a large variety of examples and exercises, along with generous use of computational tools.
Based on international teaching experience with students of statistics, mathematics, finance and econometrics, the book: Presents new, innovative material alongside the classic theory. Goes beyond standard presentations by carefully introducing and discussing more complex subject matter, including a richer use of combinatorics, runs and occupancy distributions, various multivariate sampling schemes, fat-tailed distributions, and several basic concepts used in finance. Emphasises computational matters and programming methods via generous use of examples in MATLAB. Includes a large, self-contained Calculus/Analysis appendix with derivations of all required tools, such as Leibniz’ rule, exchange of derivative and integral, Fubini’s theorem, and univariate and multivariate Taylor series. Presents over 150 end-of-chapter exercises, graded in terms of their difficulty, and accompanied by a full set of solutions online.
This book is intended as an introduction to the theory of probability for students in biology, mathematics, statistics, economics, engineering, finance, and computer science who possess the prerequisite knowledge of basic calculus and linear algebra.
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