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 Title Probability and Statistics: A Course for Physicists and Engineers
 Author(s) Arak M. Mathai, Hans J. Haubold
 Publisher: De Gruyter Open (December 2017); eBook (Open Access Edition, CC Licensed)
 License(s): CC BYNCND
 Paperback 604 pages
 eBook PDF (582 pages) and ePub
 Language: English
 ISBN10/ASIN: N/A
 ISBN13: 9783110562545
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Book Description
This book offers an introduction to concepts of probability theory, probability distributions relevant in the applied sciences, as well as basics of sampling distributions, estimation and hypothesis testing. As a companion for classes for engineers and scientists, the book also covers applied topics such as model building and experiment design.
It provides a practical approach to probability and statistical methods and focuses on real engineering applications and real engineering solutions while including material on the bootstrap, increased emphasis on the use of pvalue, coverage of equivalence testing, and combining pvalues. The base content, examples, exercises and answers presented in this product have been meticulously checked for accuracy.
About the Authors N/A
 Probability, Stochastic Process, Queueing Theory, etc.
 Statistics, Mathematical Statistics, and SAS Programming
 Physics, Computational Physics, and Mathematical Physics
 Probability and Statistics: A Course for Physicists and Engineers (Arak M. Mathai, et al)
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