Probability and Statistics (Classic Version), 4th edition
Published by Pearson Prentice Hall (March 14, 2018) © 2019
  • Morris H. DeGroot
  • Mark J. Schervish

Title overview

For sophomore- to junior-level, 1- or 2-semester courses in Probability & Statistics taken by mathematics or statistics majors.

A modern classic

Probability & Statistics, 4th Edition is a revision of the well-respected text. It presents a balanced approach of the classical and Bayesian methods and now includes a chapter on simulation (including Markov chain Monte Carlo and the Bootstrap), coverage of residual analysis in linear models, and many examples using real data. Calculus is a prerequisite, and a familiarity with the concepts and elementary properties of vectors and matrices is a plus.

This title is part of the Pearson Modern Classics series. Pearson Modern Classics are acclaimed titles at a value price.

Hallmark features of this title

  • Brief introductions in each technical section give readers a hint about what they are going to encounter, while summaries list the most important ideas.
  • In addition to examples using current data, some elementary concepts of probability are illustrated by famous examples such as the birthday problem, the tennis tournament problem, the matching problem, and the collector's problem.
  • Special features include sections on Markov chains, the gambler's ruin problem, and utility and preferences among gamblers. These topics are presented in an elementary fashion and can be omitted without loss of continuity.
  • Optional sections of the book are indicated by an asterisk in the Table of Contents.
  • Chapters 1 - 5 are devoted to probability and can serve as the text for a one-semester course on probability. Independence is now introduced after conditional probability.
  • Chapters 6 - 10 are devoted to statistical inference. Both classical and Bayesian statistical methods are developed in an integrated presentation which will be useful to students when applying the concepts to the real world.

New and updated features of this title

  • Main results are now labeled as theorems for easy reference.
  • Important definitions and assumptions are set off from the main text and are labeled for easy reference.
  • Examples help introduce new topics, setting up a scenario and illustrating how the mathematics is applied.
  • Lengthy proofs of several theorems now appear at the end of the appropriate sections to improve the flow of presentation of ideas.
  • Chapter 3 now covers Markov chains; Chapter 6 now covers the law of large numbers and the central limit theorem.
  • Section 7.1 has been rewritten to make the introduction to inference more accessible; Section 9.1 has been rewritten as a more complete introduction to hypothesis testing.

Table of contents

Brief Contents

  1. Introduction to Probability
  2. Conditional Probability
  3. Random Variables and Distributions
  4. Expectation
  5. Special Distributions
  6. Large Random Samples
  7. Estimation
  8. Sampling Distributions of Estimators
  9. Testing Hypotheses
  10. Categorical Data and Nonparametric Methods
  11. Linear Statistical Models
  12. Simulation
Loading...Loading...Loading...