- Our Story
- Discipline
## Discipline

back- Astronomy Biochemistry Biology Chemistry College Success Communication Economics Electrical Engineering English Environmental Science Geography Geology History Mathematics Mathematics: Calculus Music & Theater Nutrition and Health Philosophy & Religion Physics Political Science Psychology Sociology Statistics Value

- Digital
- Solutions
- Contact Us

- Home
- Statistics
- Basic Practice of Statistics

# Basic Practice of Statistics

## Eighth Edition| ©2018 David S. Moore; William I. Notz; Michael Fligner

Written by an author team of accomplished leaders in statistics education, *The Basic Practice of Statistics *(BPS) reflects the actual practice of statistics, where data analysis and design of data production join with probability-based inference to form a coherent science of data. The auth...

Written by an author team of accomplished leaders in statistics education, *The Basic Practice of Statistics *(BPS) reflects the actual practice of statistics, where data analysis and design of data production join with probability-based inference to form a coherent science of data. The authors’ ultimate goal is to equip students to carry out common statistical procedures and to follow statistical reasoning in their fields of study and in their future employment.

The text’s long-standing renown is built on an inspired framework of balanced content, experience with data, and the importance of ideas. These themes are widely accepted by statisticians concerned about teaching and are directly connected to and reflected by the themes of the College Report of the Guidelines in Assessment and Instruction for Statistics Education (GAISE) Project.

The eighth edition of *The Basic Practice of Statistics* is supported in SaplingPlus for a user experience of its own. SaplingPlus combines Macmillan’s StatTools, powerful multimedia resources, and text-specific exercises with the powerful targeted feedback of Sapling Learning, where every problem is a teaching and learning opportunity.

E-book
from
$62.99

ISBN:9781319057916

Bookmark, search, and highlight our PDF-style e-books.

Retail:$62.99

Subscribe until 03/21/2020

Retail:$158.99

Sapling Plus
$103.99

ISBN:9781319057985

Get the e-book, do your homework online, and more.

Retail:$103.99
Wholesale:$82.71

Subscribe until 09/23/2020

Loose-Leaf
$171.99

ISBN:9781319057930

Save money with our loose, 3-hole punched pages.

Retail:$171.99
Wholesale:$137.41

Hardcover
from
$60.99

ISBN:9781319042578

Read and study old-school with our bound texts.

Retail:$60.99

Rent until 12/25/2019

Retail:$69.99

Rent until 02/03/2020

Retail:$81.99

Rent until 03/24/2020

Retail:$123.99

Rent until 09/20/2020

Retail:$233.99
Wholesale:$187.16

Loose-Leaf + Sapling Plus
$171.99

ISBN:9781319188658

This package includes Loose-Leaf and Sapling Plus.

Retail:$171.99
Wholesale:$137.41

##
A defining text in statistics education, *The Basic Practice of Statistics* puts data analysis at the forefront and begins to develop students’ reasoning and judgment about statistical studies.

Written by an author team of accomplished leaders in statistics education, *The Basic Practice of Statistics *(BPS) reflects the actual practice of statistics, where data analysis and design of data production join with probability-based inference to form a coherent science of data. The authors’ ultimate goal is to equip students to carry out common statistical procedures and to follow statistical reasoning in their fields of study and in their future employment.

The text’s long-standing renown is built on an inspired framework of balanced content, experience with data, and the importance of ideas. These themes are widely accepted by statisticians concerned about teaching and are directly connected to and reflected by the themes of the College Report of the Guidelines in Assessment and Instruction for Statistics Education (GAISE) Project.

The eighth edition of *The Basic Practice of Statistics* is supported in SaplingPlus for a user experience of its own. SaplingPlus combines Macmillan’s StatTools, powerful multimedia resources, and text-specific exercises with the powerful targeted feedback of Sapling Learning, where every problem is a teaching and learning opportunity.

Features

The content, coverage, and features of *The Basic Practice of Statistics* are closely aligned to these GAISE recommendations.

**4-Step Examples**. Students learn how to use the four-step process for working through statistical problems: State, Plan, Solve, Conclude.

**Apply Your Knowledge exercises**. Major concepts are immediately reinforced with problems that are interspersed throughout the chapter.

**Using Technology sections**. Displays and comments on the output from graphing calculators, spreadsheets, and statistical software are located where appropriate.

**Statistics in Your World highlights.** These commentaries illustrate major concepts or present cautionary tales. Chapter Summary and Link It sections. Each chapter concludes with a summary of the chapter specifics, including major terms and processes, followed by a brief discussion of how the chapter links to material from both previous and upcoming chapters.

**Check Your Skills and Chapter Exercises.** Each chapter ends with a series of multiple-choice problems that test students’ understanding of basic concepts; a set of more in-depth exercises enable students to make judgments and draw conclusions based on real data and real scenarios.

New to This Edition

**New Data Sets **

New and updated examples and exercises, approximately 30% throughout the text, ensure that the content remains timely and relevant—and real!

**Contents changes and reorganization***Based on the valuable feedback of instructors using The Basic Practice of Statistics as well as reviewers’ comments, the following changes enhance how statistics is taught today.*

- Chapter 5. Coverage of big data added to the end of chapter 5 as an optional section
- Chapter 13. The order of topics in Chapter 13 has been rearranged. Conditional probability is now introduced using two-way tables of counts and the Bayes theorem is included as an optional section.
- Chapter 20. Section 20.8 “Resampling and standard errors” removed. (All resampling material now in online Chapter 32.)
- Chapter 21. Section 21.9 “Permutation tests” removed. (All resampling material now in online Chapter 32.)
- Chapters 27 and 30. Coverage of multiple comparisons will be removed from the online Chapter 30 “More About Analysis of Variance” and will be integrated into the print text; Chapter 27 “One-way ANOVA.” Chapter 30 will now cover only two-way ANOVA.
- Chapter 32 “Resampling: Permutation Tests and the Bootstrap”; “new” online chapter written to address courses that cover resampling.

**Online technology appendices**

The software basics technology appendices have been expanded to include more software options and moved online for convenient access www.macmillanhighered.com/bps8e.

**
Basic Practice of Statistics**

Eighth Edition| ©2018

David S. Moore; William I. Notz; Michael Fligner

# Digital Options

## Sapling Learning Plus

Get the e-book, do your homework onine, try some quizzes, and more!

## E-book

Read online (or offline) with all the highlighting and notetaking tools you need to be successful in this course.

**Basic Practice of Statistics**

Eighth Edition| 2018

David S. Moore; William I. Notz; Michael Fligner

## Table of Contents

PART I: EXPLORING DATA

Chapter 0 Getting Started

Where data comes from matters

Always look at the data

Variation is everywhere

What lies ahead in this book

Chapter 1 Picturing Distributions with Graphs

1.1 Individuals and variables

1.2 Categorical variables: Pie charts and bar graphs

1.3 Quantitative variables: Histograms

1.4 Interpreting histograms

1.5 Quantitative variables: Stemplots

1.6 Time plots

Chapter 2 Describing Distributions with Numbers

2.1 Measuring center: The mean

2.2 Measuring center: The median

2.3 Comparing the mean and the median

2.4 Measuring spread: The quartiles

2.5 The five-number summary and boxplots

2.6 Spotting suspected outliers*

2.7 Measuring spread: The standard deviation

2.8 Choosing measures of center and spread

2.9 Using technology

2.10 Organizing a statistical problem

Chapter 3 The Normal Distributions

3.1 Density curves

3.2 Describing density curves

3.3 Normal distributions

3.4 The 68-95-99.7 rule

3.5 The standard Normal distribution

3.6 Finding Normal proportions

3.7 Using the standard Normal table

3.8 Finding a value given a proportion

Chapter 4 Scatterplots and Correlation

4.1 Explanatory and response variables

4.2 Displaying relationships: Scatterplots

4.3 Interpreting scatterplots

4.4 Adding categorical variables to scatterplots

4.5 Measuring linear association: Correlation

4.6 Facts about correlation

Chapter 5 Regression

5.1 Regression lines

5.2 The least-squares regression line

5.3 Using technology

5.4 Facts about least-squares regression

5.5 Residuals

5.6 Influential observations

5.7 Cautions about correlation and regression

5.8 Association does not imply causation

5.9 Correlation, prediction, and big data*

Chapter 6 Two-Way Tables*

6.1 Marginal distributions

6.2 Conditional distributions

6.3 Simpson's paradox

Chapter 7 Exploring Data: Part I Review

Part I Summary

Test Yourself

Supplementary Exercises

PART II: PRODUCING DATA

Chapter 8 Producing Data: Sampling

8.1 Population versus sample

8.2 How to sample badly

8.3 Simple random samples

8.4 Inference about the population

8.5 Other sampling designs

8.6 Cautions about sample surveys

8.7 The impact of technology

Chapter 9 Producing Data: Experiments

9.1 Observation versus experiment

9.2 Subjects, factors, treatments

9.3 How to experiment badly

9.4 Randomized comparative experiments

9.5 The logic of randomized comparative experiments

9.6 Cautions about experimentation

9.7 Matched pairs and other block designs

Chapter 10 Data Ethics*

10.1 Institutional review boards

10.2 Informed consent

10.3 Confidentiality

10.4 Clinical trials

10.5 Behavioral and social science experiments

Chapter 11 Producing Data: Part II Review

Part II summary

Test yourself

Supplementary exercises

PART III: FROM DATA PRODUCTION TO INFERENCE

Chapter 12 Introducing Probability

12.1 The idea of probability

12.2 The search for randomness*

12.3 Probability models

12.4 Probability rules

12.5 Discrete probability models

12.6 Continuous probability models

12.7 Random variables

12.8 Personal probability*

Chapter 13 General Rules of Probability*

13.1 The general addition rule

13.2 Independence and the multiplication rule

13.3 Conditional probability

13.4 The general multiplication rule

13.5 Showing events are independent

13.6 Tree diagrams

13.7 Bayes' rule*

Chapter 14 Binomial Distributions*

14.1 The binomial setting and binomial distributions

14.2 Binomial distributions in statistical sampling

14.3 Binomial probabilities

14.4 Using technology

14.5 Binomial mean and standard deviation

14.6 The Normal approximation to binomial distributions

Chapter 15 Sampling Distributions

15.1 Parameters and statistics

15.2 Statistical estimation and the law of large numbers

15.3 Sampling distributions

15.4 The sampling distribution of x

15.5 The central limit theorem

15.6 Sampling distributions and statistical significance*

Chapter 16 Confidence Intervals: The Basics

16.1 The reasoning of statistical estimation

16.2 Margin of error and confidence level

16.3 Confidence intervals for a population mean

16.4 How confidence intervals behave

Chapter 17 Tests of Significance: The Basics

17.1 The reasoning of tests of significance

17.2 Stating hypotheses

17.3 P-value and statistical significance

17.4 Tests for a population mean

17.5 Significance from a table*

Chapter 18 Inference in Practice

18.1 Conditions for inference in practice

18.2 Cautions about confidence intervals

18.3 Cautions about significance tests

18.4 Planning studies: Sample size for confidence intervals

18.5 Planning studies: The power of a statistical test*

Chapter 19 From Data Production to Inference: Part III Review

Part III Summary

Review Exercises

Test Yourself

Supplementary Exercises

PART IV: INFERENCE ABOUT VARIABLES

Chapter 20 Inference about a Population Mean

20.1 Conditions for inference about a mean

20.2 The t distributions

20.3 The one-sample t confidence interval

20.4 The one-sample t test

20.5 Using technology

20.6 Matched pairs t procedures

20.7 Robustness of t procedures

Chapter 21 Comparing Two Means

21.1 Two-sample problems

21.2 Comparing two population means

21.3 Two-sample t procedures

21.4 Using technology

21.5 Robustness again

21.6 Details of the t approximation*

21.7 Avoid the pooled two-sample t procedures*

21.8 Avoid inference about standard deviations*

Chapter 22 Inference about a Population Proportion

22.1 The sample proportion

22.2 Large-sample confidence intervals for a proportion

22.3 Choosing the sample size

22.4 Significance tests for a proportion

22.5 Plus four confidence intervals for a proportion*

Chapter 23 Comparing Two Proportions

23.1 Two-sample problems: Proportions

23.2 The sampling distribution of a difference between proportions

23.3 Large-sample confidence intervals for comparing proportions

23.4 Using technology

23.5 Significance tests for comparing proportions

23.6 Plus four confidence intervals for comparing proportions*

Chapter 24 Inference about Variables: Part IV Review

Part IV summary

Test yourself

Supplementary exercises

PART V: INFERENCE ABOUT RELATIONSHIPS

Chapter 25 Two Categorical Variables: The Chi-Square Test

25.1 Two-way tables

25.2 The problem of multiple comparisons

25.3 Expected counts in two-way tables

25.4 The chi-square test statistic

25.5 Using technology

25.6 The chi-square distributions

25.7 Cell counts required for the chi-square test

25.8 Uses of the chi-square test: Independence and homogeneity

25.9 The chi-square test for goodness of fit*

Chapter 26 Inference for Regression

26.1 Conditions for regression inference

26.2 Estimating the parameters

26.3 Using technology

26.4 Testing the hypothesis of no linear relationship

26.5 Testing lack of correlation

26.6 Confidence intervals for the regression slope

26.7 Inference about prediction

26.8 Checking the conditions for inference

Chapter 27 One-Way Analysis of Variance:

Comparing Several Means

27.1 Comparing several means

27.2 The analysis of variance F test

27.3 Using technology

27.4 The idea of analysis of variance

27.5 Conditions for ANOVA

27.6 F distributions and degrees of freedom

27.7 Follow-up analysis: Tukey pairwise multiple comparisons

27.8 Some details of ANOVA*

[Back matter print text]

Notes and Data Sources

Tables

TABLE A Standard Normal probabilities

TABLE B Random digits

TABLE C t distribution critical values

TABLE D Chi-square distribution critical values

TABLE E Critical values of the correlation r

Answers to Selected Exercises

Index

PART VI: OPTIONAL COMPANION CHAPTERS

(available online)

Chapter 28 Nonparametric Tests

28.1 Comparing two samples: The Wilcoxon rank sum test

28.2 The Normal approximation for W

28.3 Using technology

28.4 What hypotheses does Wilcoxon test?

28.5 Dealing with ties in rank tests

28.6 Matched pairs: The Wilcoxon signed rank test

28.7 The Normal approximation for W+

28.8 Dealing with ties in the signed rank test

28.9 Comparing several samples: The Kruskal-Wallis test

28.10 Hypotheses and conditions for the Kruskal-Wallis test

28.11 The Kruskal-Wallis test statistic

Chapter 29 Multiple Regression

29.1 Parallel regression lines

29.2 Estimating parameters

29.3 Using technology

29.4 Inference for multiple regression

29.5 Interaction

29.6 The multiple linear regression model

29.7 The woes of regression coefficients

29.8 A case study for multiple regression

29.9 Inference for regression parameters

29.10 Checking the conditions for inference

Chapter 30 More about Analysis of Variance

30.1 Beyond one-way ANOVA

30.2 Two-way ANOVA: Conditions, main effects, and interaction

30.3 Inference for two-way ANOVA

30.4 Some details of two-way ANOVA*

Chapter 31 Statistical Process Control

31.1 Processes

31.2 Describing processes

31.3 The idea of statistical process control

31.4 x charts for process monitoring

31.5 s charts for process monitoring

31.6 Using control charts

31.6 Setting up control charts

31.7 Comments on statistical control

31.8 Don't confuse control with capability!

31.9 Control charts for sample proportions

31.10 Control limits for p charts

Chapter 32 Resampling: Permutation Tests and the Bootstrap

32.1 Randomization in experiments as a basis for inference

32.2 Permutation tests for comparing two treatments with software

32.3 Generating bootstrap samples

32.4 Bootstrap standard errors and confidence intervals

**Basic Practice of Statistics**

Eighth Edition| 2018

David S. Moore; William I. Notz; Michael Fligner

## Authors

### David S. Moore

David S. Moore is Shanti S. Gupta Distinguished Professor of Statistics, Emeritus, at Purdue University and was 1998 president of the American Statistical Association. He received his AB from Princeton and his PhD from Cornell, both in mathematics. He has written many research papers in statistical theory and served on the editorial boards of several major journals. Professor Moore is an elected fellow of the American Statistical Association and of the Institute of Mathematical Statistics and an elected member of the International Statistical Institute. He has served as program director for statistics and probability at the National Science Foundation. In recent years, Professor Moore has devoted his attention to the teaching of statistics. He was the content developer for the Annenberg/Corporation for Public Broadcasting college-level telecourse Against All Odds: Inside Statistics and for the series of video modules Statistics: Decisions through Data, intended to aid the teaching of statistics in schools. He is the author of influential articles on statistics education and of several leading texts. Professor Moore has served as president of the International Association for Statistical Education and has received the Mathematical Association of America’s national award for distinguished college or university teaching of mathematics.

### William I. Notz

William I. Notz is Professor of Statistics at the Ohio State University. He received his B.S. in physics from the Johns Hopkins University and his Ph.D. in mathematics from Cornell University. His first academic job was as an assistant professor in the Department of Statistics at Purdue University. While there, he taught the introductory concepts course with Professor Moore and as a result of this experience he developed an interest in statistical education. Professor Notz is a co-author of *EESEE* (*the Electronic Encyclopedia of Statistical Examples and Exercises*) and co-author of *Statistics: Concepts and Controversies*.
Professor Notz’s research interests have focused on experimental design and computer experiments. He is the author of several research papers and of a book on the design and analysis of computer experiments. He is an elected fellow of the American Statistical Association. He has served as the editor of the journal Technometrics and as editor of the Journal of Statistics Education. He has served as the Director of the Statistical Consulting Service, as acting chair of the Department of Statistics for a year, and as an Associate Dean in the College of Mathematical and Physical Sciences at the Ohio State University. He is a winner of the Ohio State University’s Alumni Distinguished Teaching Award.

### Michael A. Fligner

Michael A. Fligner is an Adjunct Professor at the University of California at Santa Cruz and a non-resident Professor Emeritus with the Ohio State University. He received his B.S. in mathematics from the State University of New York at Stony Brook and his Ph.D. from the University of Connecticut. He spent almost 40 years at the Ohio State University where he was Vice Chair of the Department for over 10 years and also served as Director of the Statistical Consulting Service. He has done consulting work with several large corporations in Central Ohio. Professor Fligner's research interests are in Nonparametric Statistical methods and he received the Statistics in Chemistry award from the American Statistical Association for work on detecting biologically active compounds. He is co-author of the book Statistical Methods for Behavioral Ecology and received a Fulbright scholarship under the American Republics Research program to work at the Charles Darwin Research Station in the Galapagos Islands. He has been an Associate Editor of the Journal of Statistical Education. Professor Fligner is currently associated with the Center for Statistical Analysis in the Social Sciences at the University of California at Santa Cruz.

**Basic Practice of Statistics**

Eighth Edition| 2018

David S. Moore; William I. Notz; Michael Fligner

# Instructor Resources

## Need instructor resources for your course?

Unlock Your Resources# Instructor Resources

### Access Test Bank

You need to sign in as a verified instructor to access the Test Bank.

### Test Bank for Basic Practice of Statistics (Online Only)

David S. Moore; William I. Notz; Michael A. Fligner | Eighth Edition | ©2018 | ISBN:9781319057046### Download Resources

You need to sign in to unlock your resources.

### Applications Index

### Request Access to CrunchIt!

Confirm Request

**We're sorry!**The server encountered an internal error and cannot complete your request. Please try again later.

You've selected:

Click the E-mail Download Link button and we'll send you an e-mail at with links to download your instructor resources. Please note there may be a delay in delivering your e-mail depending on the size of the files.

**Warning!** These materials are owned by Macmillan Learning or its licensors and are protected by copyright laws in the United States and other jurisdictions. Such materials may include a digital watermark that is linked to your name and email address in your Macmillan Learning account to identify the source of any materials used in an unauthorised way and prevent online piracy. These materials are being provided solely for instructional use by instructors who have adopted Macmillan Learning’s accompanying textbooks or online products for use by students in their courses. These materials may not be copied, distributed, sold, shared, posted online, or used, in print or electronic format, except in the limited circumstances set forth in the Macmillan Learning Terms of Use
and any other reproduction or distribution is illegal. These materials may not be made publicly available under any circumstances. All other rights reserved. For more information about the use of your personal data including for the purposes of anti-piracy enforcement, please refer to Macmillan Learning's.Privacy Notice

Request Status

### Thank you!

Your download request has been received and your download link will be sent to .

Please note you could wait up to **30 to 60 minutes** to receive your download e-mail depending on the number and size of the files. We appreciate your patience while we process your request.

Check your inbox, trash, and spam folders for an e-mail from **InstructorResources@macmillan.com**.

If you do not receive your e-mail, please visit macmillanlearning.com/support.

**We're sorry!**The server encountered an internal error and cannot complete your request. Please try again later.

**Basic Practice of Statistics**

Eighth Edition| 2018

David S. Moore; William I. Notz; Michael Fligner

## Related Titles

Available Demos