Fundamental Probability: A Computational Approach (Hardcover)
暫譯: 基本機率:計算方法導論 (精裝版)

Marc S. Paolella

  • 出版商: Wiley
  • 出版日期: 2006-04-01
  • 售價: $1,380
  • 貴賓價: 9.8$1,352
  • 語言: 英文
  • 頁數: 488
  • 裝訂: Hardcover
  • ISBN: 0470025948
  • ISBN-13: 9780470025949
  • 無法訂購

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Description

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: A Computational Approach 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.

Table of Contents

Preface.

A note to the student (and instructor).

A note to the instructor (and student).

Acknowledgements.

Introduction.

PART I: BASIC PROBABILITY.

1. Combinatorics.

1.1 Basic counting.

1.2 Generalized binomial coefficients.

1.3 Combinatoric identities and the use of induction.

1.4 The binomial and multinomial theorems.

1.4.1 The binomial theorem.

1.4.2 An extension of the binomial theorem.

1.4.3 The multinomial theorem.

1.5 The gamma and beta functions.

1.5.1 The gamma function.

1.5.2 The beta function.

1.6 Problems.

2. Probability spaces and counting.

2.1 Introducing counting and occupancy problems.

2.2 Probability spaces.

2.2.1 Introduction.

2.2.2 Definitions.

2.3 Properties.

2.3.1 Basic properties.

2.3.2 Advanced properties.

2.3.3 A theoretical property.

2.4 Problems.

3. Symmetric spaces and conditioning.

3.1 Applications with symmetric probability spaces.

3.2 Conditional probability and independence.

3.2.1 Total probability and Bayes’ rule.

3.2.2 Extending the law of total probability.

3.2.3 Statistical paradoxes and fallacies.

3.3 The problem of the points.

3.3.1 Three solutions.

3.3.2 Further gambling problems.

3.3.3 Some historical references.

3.4 Problems.

PART II: DISCRETE RANDOM VARIABLES.

4. Univariate random variables.

4.1 Definitions and properties.

4.1.1 Basic definitions and properties.

4.1.2 Further definitions and properties.

4.2 Discrete sampling schemes.

4.2.1 Bernoulli and binomial.

4.2.2 Hypergeometric.

4.2.3 Geometric and negative binomial.

4.2.4 Inverse hypergeometric.

4.2.5 Poisson approximations.

4.2.6 Occupancy distributions.

4.3 Transformations.

4.4 Moments.

4.4.1 Expected value of X.

4.4.2 Higher-order moments.

4.4.3 Jensen?s inequality.

4.5 Poisson processes.

4.6 Problems.

5. Multivariate random variables.

5.1 Multivariate density and distribution.

5.1.1 Joint cumulative distribution functions.

5.1.2 Joint probability mass and density functions.

5.2 Fundamental properties of multivariate random variables.

5.2.1 Marginal distributions.

5.2.2 Independence.

5.2.3 Exchangeability.

5.2.4 Transformations.

5.2.5 Moments.

5.3 Discrete sampling schemes.

5.3.1 Multinomial.

5.3.2 Multivariate hypergeometric.

5.3.3 Multivariate negative binomial.

5.3.4 Multivariate inverse hypergeometric.

5.4 Problems.

6. Sums of random variables.

6.1 Mean and variance.

6.2 Use of exchangeable Bernoulli random variables.

6.2.1 Examples with birthdays.

6.3 Runs distributions.

6.4 Random variable decomposition.

6.4.1 Binomial, negative binomial and Poisson.

6.4.2 Hypergeometric.

6.4.3 Inverse hypergeometric.

6.5 General linear combination of two random variables.

6.6 Problems.

PART III: CONTINUOUS RANDOM VARIABLES.

7. Continuous univariate random variables.

7.1 Most prominent distributions.

7.2 Other popular distributions.

7.3 Univariate transformations.

7.3.1 Examples of one-to-one transformations.

7.3.2 Many-to-one transformations.

7.4 The probability integral transform.

7.4.1 Simulation.

7.4.2 Kernel density estimation.

7.5 Problems.

8. Joint and conditional random variables.

8.1 Review of basic concepts.

8.2 Conditional distributions.

8.2.1 Discrete case.

8.2.2 Continuous case.

8.2.3 Conditional moments.

8.2.4 Expected shortfall.

8.2.5 Independence.

8.2.6 Computing probabilities via conditioning.

8.3 Problems.

9. Multivariate transformations.

9.1 Basic transformation.

9.2 The t and F distributions.

9.3 Further aspects and important transformations.

9.4 Problems.

Appendix A. Calculus review.

A.0 Recommended reading.

A.1 Sets, functions and fundamental inequalities.

A.2 Univariate calculus.

A.2.1 Limits and continuity.

A.2.2 Differentiation.

A.2.3 Integration.

A.2.4 Series.

A.3 Multivariate calculus.

A.3.1 Neighborhoods and open sets.

A.3.2 Sequences, limits and continuity.

A.3.3 Differentiation.

A.3.4 Integration.

Appendix B. Notation tables.

Appendix C. Distribution tables.

References.

Index.

商品描述(中文翻譯)

描述

機率在許多學科中都是一個重要的衡量標準,從生物資訊學和計量經濟學到金融/保險和計算機科學。這本書《基本機率:計算方法》是基於一門成功的課程而開發,提供了一個引人入勝且實用的入門介紹。雖然理論部分詳細探討,但本書也強調實際應用,並提供各種範例和練習,並大量使用計算工具。

根據與統計、數學、金融和計量經濟學學生的國際教學經驗,本書:

- 提供新的創新材料,並與經典理論並行。
- 超越標準的介紹,仔細引入和討論更複雜的主題,包括更豐富的組合數學、運行和佔用分佈、各種多變量抽樣方案、重尾分佈以及幾個在金融中使用的基本概念。
- 通過大量的 MATLAB 範例強調計算問題和編程方法。
- 包含一個大型的自包含微積分/分析附錄,涵蓋所有所需工具的推導,如萊布尼茲法則、導數和積分的交換、傅里葉定理,以及單變量和多變量的泰勒級數。
- 提供超過 150 個按難度分級的章末練習,並附有完整的在線解答集。

本書旨在為生物學、數學、統計學、經濟學、工程學、金融學和計算機科學的學生介紹機率理論,前提是具備基本微積分和線性代數的知識。

目錄

前言

給學生的註解(及講師)

給講師的註解(及學生)