Statistics for Engineers and Scientists Fourth Edition by William Navidi.
Statistics for Engineers and Scientists Fourth Edition William Navidi Colorado School of Mines STATISTICS FOR ENGINEERS AND SCIENTISTS, FOURTH EDITION Published by McGraw-Hill Education, 2 Penn Plaza, New York, NY 10121. Copyright © 2015 by McGraw-Hill Education Printed in the United States of America Previous editions © 2011, 2008, and 2006. ISBN 978-0-07-340133-1 MHID 0-07-340133-1 Library of Congress Cataloging-in-Publication Data Navidi, William Cyrus. [Statistics for engineers and scientists] Statistics for engineers & scientists / William Navidi, Colorado School of Mines. -- Fourth edition. pages cm Earlier editions entitled: Statistics for engineers and scientists. Includes bibliographical references and index. ISBN 978-0-07-340133-1 (alk. paper) -- ISBN 0-07-340133-1 (alk. paper) 1. Mathematical statistics--Simulation methods. 2. Bootstrap (Statistics) 3. Linear models (Statistics) 4. Engineering--Statistical methods. 5. Science--Statistical methods. I. Title. II. Title: Statistics for engineers and scientists. QA276.4.N.5--dc BRIEF CONTENTS Preface xi Acknowledgments of Reviewers and Contributors xv Key Features xvii Supplements for Students and Instructors xviii 1 Sampling and Descriptive Statistics 1 2 Probability 48 3 Propagation of Error 4 Commonly Used Distributions 200 5 Confidence Intervals 322 6 Hypothesis Testing 400 7 Correlation and Simple Linear Regression 509 8 Multiple Regression 596 9 Factor ... Purchase document to see full attachment
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- Statistics for Engineers and Scientists Fourth Edi
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- Statistics for Engineers and Scientists Fourth Edi
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- December 16, 2024
- Number of pages
- 922
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- 2024/2025
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Subjects
- probability 48
- propagation of error 164
- confidence intervals 322
- hypothesis testing 400
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sampling and descriptive statistics
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commonly used distributions 200
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correlation and simple linear regression 509