FreeComputerBooks.com
Links to Free Computer, Mathematics, Technical Books all over the World
|
|
- 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 BY-NC-ND
- Paperback 604 pages
- eBook PDF (582 pages) and ePub
- Language: English
- ISBN-10/ASIN: N/A
- ISBN-13: 978-3110562545
- Share This:
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 p-value, coverage of equivalence testing, and combining p-values. 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)
- The Mirror Site (1) - PDF
-
Introduction to Probability, Statistics, and Random Processes
This book introduces students to probability, statistics, and stochastic processes. It provides a clear and intuitive approach to these topics while maintaining mathematical accuracy. The book contains a large number of solved exercises.
-
Introduction to Probability for Data Science (Stanley Chan)
This book is an introductory textbook in undergraduate probability in the context of data science to emphasize the inseparability between data (computing) and probability (theory) in our time, with examples in both MATLAB and Python.
-
Applied Probability (Paul Pfeiffer)
This book presents a unique blend of theory and applications, with special emphasis on mathematical modeling, computational techniques, and examples from the real world application in industries and science.
-
Foundations of Constructive Probability Theory (Yuen-Kwok Chan)
This book provides a systematic and general theory of probability within the framework of Constructive Mathematics. It can serve as a parallel introduction into constructive mathematics and rigorous probability theory.
-
Introduction to Random Matrices: Theory and Practice
This is a book for absolute beginners. The aim is to provide a truly accessible introductory account of Random Matrix theory. Most chapters are accompanied by MATLAB codes to guide readers through the numerical check of most analytical results.
-
Elementary Probability for Applications (Rick Durrett)
This clear and lively introduction to probability theory concentrates on the results that are the most useful for applications, including combinatorial probability and Markov chains. Concise and focused, it is designed for students familiar with basic calculus.
-
Statistical Inference via Data Science: ModernDive, R, Tidyverse
This book provides a pathway for learning about statistical inference using data science tools widely used in industry, academia, and government. It introduces the tidyverse suite of R packages, including the ggplot2 package for data visualization, etc.
-
Introductory Statistics (OpenStax)
This book is geared toward students majoring in fields other than math or engineering. This text assumes students have been exposed to intermediate algebra, and it focuses on the applications of statistical knowledge rather than the theory behind it.
-
Mostly Harmless Statistics (Rachel L. Webb)
This text is for an introductory level probability and statistics course with an intermediate algebra prerequisite. The focus of the text follows the American Statistical Association's Guidelines for Assessment and Instruction in Statistics Education (GAISE).
:
|
|