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Probability with Applications in Engineering, Science, and Technology

  • Matthew A. Carlton
  • Jay L. Devore

Part of the Springer Texts in Statistics book series (STS)

Table of contents

  1. Front Matter
    Pages i-xxvii
  2. Matthew A. Carlton, Jay L. Devore
    Pages 1-66
  3. Matthew A. Carlton, Jay L. Devore
    Pages 67-145
  4. Matthew A. Carlton, Jay L. Devore
    Pages 147-237
  5. Matthew A. Carlton, Jay L. Devore
    Pages 239-350
  6. Matthew A. Carlton, Jay L. Devore
    Pages 351-422
  7. Matthew A. Carlton, Jay L. Devore
    Pages 423-487
  8. Matthew A. Carlton, Jay L. Devore
    Pages 489-562
  9. Matthew A. Carlton, Jay L. Devore
    Pages 563-596
  10. Back Matter
    Pages 597-645

About this book

Introduction

This updated and revised first-course textbook in applied probability provides a contemporary and lively post-calculus introduction to the subject of probability. The exposition reflects a desirable balance between fundamental theory and many applications involving a broad range of real problem scenarios. It is intended to appeal to a wide audience, including mathematics and statistics majors, prospective engineers and scientists, and those business and social science majors interested in the quantitative aspects of their disciplines.

The textbook contains enough material for a year-long course, though many instructors will use it for a single term (one semester or one quarter). As such, three course syllabi with expanded course outlines are now available for download on the book’s page on the Springer website.

A one-term course would cover material in the core chapters (1-4), supplemented by selections from one or more of the remaining chapters on statistical inference (Ch. 5), Markov chains (Ch. 6), stochastic processes (Ch. 7), and signal processing (Ch. 8—available exclusively online and specifically designed for electrical and computer engineers, making the book suitable for a one-term class on random signals and noise).

For a year-long course, core chapters (1-4) are accessible to those who have taken a year of univariate differential and integral calculus; matrix algebra, multivariate calculus, and engineering mathematics are needed for the latter, more advanced chapters. 

At the heart of the textbook’s pedagogy are 1,100 applied exercises, ranging from straightforward to reasonably challenging, roughly 700 exercises in the first four “core” chapters alone—a self-contained textbook of problems introducing basic theoretical knowledge necessary for solving problems and illustrating how to solve the problems at hand – in R and MATLAB, including code so that students can create simulations. 

New to this edition

• Updated and re-worked Recommended Coverage for instructors, detailing which courses should use the textbook and how to utilize different sections for various objectives and time constraints

• Extended and revised instructions and solutions to problem sets

• Overhaul of Section 7.7 on continuous-time Markov chains

• Supplementary materials include three sample syllabi and updated solutions manuals for both instructors and students

Keywords

Markov chains R and Matlab for probability applied probability random signals and noise signal processing statistics & probability stochastic processes

Authors and affiliations

  • Matthew A. Carlton
    • 1
  • Jay L. Devore
    • 2
  1. 1.Department of StatisticsCalifornia Polytechnic State UniversitySan Luis ObispoUSA
  2. 2.Department of StatisticsCalifornia Polytechnic State UniversitySan Luis ObispoUSA

Bibliographic information

  • DOI https://doi.org/10.1007/978-3-319-52401-6
  • Copyright Information Springer International Publishing AG 2017
  • Publisher Name Springer, Cham
  • eBook Packages Mathematics and Statistics
  • Print ISBN 978-3-319-52400-9
  • Online ISBN 978-3-319-52401-6
  • Series Print ISSN 1431-875X
  • Series Online ISSN 2197-4136
  • Buy this book on publisher's site
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