Mathematical Statistics with Applications

Mathematical Statistics with Applications
ISBN-10
0495385085
ISBN-13
9780495385080
Series
Mathematical Statistics with Applications
Category
Mathematical statistics
Pages
912
Language
English
Published
2008
Publisher
Cengage Learning
Authors
William Mendenhall, Richard L. Scheaffer, Dennis D. Wackerly

Description

The authors present the theory of statistics in the context of practical problem solving and real world applications. This practical approach helps you discover the nature of statistics and comprehend its essential role in scientific research.--

Other editions

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