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Essentials of Business Statistics

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ISBN-10: 007340182X

ISBN-13: 9780073401829

Edition: 4th 2012

Authors: Bruce L. Bowerman, Richard O'Connell, J. Burdeane Orris

List price: $253.33
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Description:

The new edition of Essentials of Business Statistics delivers clear and understandable explanations of core business statistics concepts, making it ideal for a one-term course in business statistics. The author teamBowerman/O'Connell/Murphree/Orrisemphasize the importance of interpreting statistical results to make effective decisions to improve business processes. The text offers real applications of statistics that are relevant to today's business students which can be seen in the continuing case studies throughout the book. Continuing cases span throughout a chapter or even groups of chapters, easing students into new topic areas. A variety of examples and exercises, and a robust,…    
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Book details

List price: $253.33
Edition: 4th
Copyright year: 2012
Publisher: McGraw-Hill Higher Education
Publication date: 1/6/2011
Binding: Hardcover
Pages: 688
Size: 8.50" wide x 11.25" long x 1.00" tall
Weight: 3.850
Language: English

Bruce L. Bowerman is a professor of decision sciences at Miami University in Oxford, Ohio. He received his Ph.D. degree in statistics from Iowa State University in 1974, and he has over 37 years of experience teaching basic statistics, regression analysis, time series forecasting, survey sampling, and design of experiments to both undergraduate and graduate students. In 1987 Professor Bowerman received an Outstanding Teaching award from the Miami University senior class, and in 1992 he received and Effective Educator award from the Richard T. Farmer School of Business Administration. Together with Richard T. O'Connell, Professor Bowerman has written 11 textbooks. These include Forecasting…    

Richard T. O'Connell is an associate professor of decision sciences at Miami University in Oxford, Ohio. He has more than 32 years of experience teaching basic statistics, statistical quality control and process improvement, regression analysis, time series forecasting, and design of experiments to both undergraduate and graduate business students. In 2000 Professor O’Connell received an Effective Educator award from the Richard T. Farmer School of Business Administration. Together with Bruce L. Bowerman, he has written seven textbooks. These include Forecasting and Time Series: An Applied Approach and Linear Statistical Models: An Applied Approach. He is one of the first college…    

James Burdeane “Deane” OrrisJ.B. Orris is a professor of management science at Butler University in Indianapolis, Indiana. He received his Ph.D. from the University of Illinois in 1971, and in the late 1970s with the advent of personal computers, he combined his interest in statistics and computers to write one of the first personal computer statistics packages—MICROSTAT. Over the past 20 years, MICROSTAT has evolved into MegaStat, which is an Excel add-in statistics program. In 1999 he wrote an Excel book (Essentials: Excel 2000 Advanced) and has done work in neural networks, spreadsheet simulation, and statistical analysis for many research projects. He has taught…    

An Introduction to Business Statistics
Descriptive Statistics: Tabular and Graphical Methods
Descriptive Statistics: Numerical Methods
Probability
Discrete Random Variables
Continuous Random Variables
Sampling and Sampling Distributions
Confidence Intervals
Hypothesis Testing
Statistical Inferences Based on Two Samples
Experimental Design and Analysis of Variance
Chi-Square Tests
Simple Linear Regression Analysis
Multiple Regression and Model Building
Statistical Tables
Answers to Most Odd-Numbered Exercises
References
Photo Credits
Index
On the Website
15 Process Improvement Using Control Charts
Properties of the Mean and the Variance of a Random Variable and the Co-variance
Derivatives of the Mean and Variance of x(bar) and p(hat)
Confidence Intervals for Parameters of Finite Populations
Logistic Regression