Statistics and Analysis of Scientific Data
This book is the third edition of a successful textbook for upper-undergraduate and early graduate students, which offers a solid foundation in probability theory and statistics and their application to physical sciences, engineering, biomedical sciences and related disciplines. It provides broad coverage ranging from conventional textbook content of probability theory, random variables, and their statistics, regression, and parameter estimation, to modern methods including Monte-Carlo Markov chains, resampling methods and low-count statistics.

In addition to minor corrections and adjusting structure of the content, particular features in this new edition include:



• Python codes and machine-readable data for all examples, classic experiments, and exercises, which are now more accessible to students and instructors
• New chapters on low-count statistics including the Poisson-based Cash statistic for regression in the low-count regime,and on contingency tables and diagnostic testing.
• An additional example of classic experiments based on testing data for SARS-COV-2 to demonstrate practical applications of the described statistical methods.

This edition inherits the main pedagogical method of earlier versions—a theory-then-application approach—where emphasis is placed first on a sound understanding of the underlying theory of a topic, which becomes the basis for an efficient and practical application of the materials. Basic calculus is used in some of the derivations, and no previous background in probability and statistics is required. The book includes many numerical tables of data as well as exercises and examples to aid the readers' understanding of the topic.

1136505168
Statistics and Analysis of Scientific Data
This book is the third edition of a successful textbook for upper-undergraduate and early graduate students, which offers a solid foundation in probability theory and statistics and their application to physical sciences, engineering, biomedical sciences and related disciplines. It provides broad coverage ranging from conventional textbook content of probability theory, random variables, and their statistics, regression, and parameter estimation, to modern methods including Monte-Carlo Markov chains, resampling methods and low-count statistics.

In addition to minor corrections and adjusting structure of the content, particular features in this new edition include:



• Python codes and machine-readable data for all examples, classic experiments, and exercises, which are now more accessible to students and instructors
• New chapters on low-count statistics including the Poisson-based Cash statistic for regression in the low-count regime,and on contingency tables and diagnostic testing.
• An additional example of classic experiments based on testing data for SARS-COV-2 to demonstrate practical applications of the described statistical methods.

This edition inherits the main pedagogical method of earlier versions—a theory-then-application approach—where emphasis is placed first on a sound understanding of the underlying theory of a topic, which becomes the basis for an efficient and practical application of the materials. Basic calculus is used in some of the derivations, and no previous background in probability and statistics is required. The book includes many numerical tables of data as well as exercises and examples to aid the readers' understanding of the topic.

84.99 In Stock
Statistics and Analysis of Scientific Data

Statistics and Analysis of Scientific Data

by Massimiliano Bonamente
Statistics and Analysis of Scientific Data

Statistics and Analysis of Scientific Data

by Massimiliano Bonamente

eBook2013 (2013)

$84.99 

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Overview

This book is the third edition of a successful textbook for upper-undergraduate and early graduate students, which offers a solid foundation in probability theory and statistics and their application to physical sciences, engineering, biomedical sciences and related disciplines. It provides broad coverage ranging from conventional textbook content of probability theory, random variables, and their statistics, regression, and parameter estimation, to modern methods including Monte-Carlo Markov chains, resampling methods and low-count statistics.

In addition to minor corrections and adjusting structure of the content, particular features in this new edition include:



• Python codes and machine-readable data for all examples, classic experiments, and exercises, which are now more accessible to students and instructors
• New chapters on low-count statistics including the Poisson-based Cash statistic for regression in the low-count regime,and on contingency tables and diagnostic testing.
• An additional example of classic experiments based on testing data for SARS-COV-2 to demonstrate practical applications of the described statistical methods.

This edition inherits the main pedagogical method of earlier versions—a theory-then-application approach—where emphasis is placed first on a sound understanding of the underlying theory of a topic, which becomes the basis for an efficient and practical application of the materials. Basic calculus is used in some of the derivations, and no previous background in probability and statistics is required. The book includes many numerical tables of data as well as exercises and examples to aid the readers' understanding of the topic.


Product Details

ISBN-13: 9781461479840
Publisher: Springer-Verlag New York, LLC
Publication date: 08/13/2013
Series: Graduate Texts in Physics
Sold by: Barnes & Noble
Format: eBook
File size: 4 MB

About the Author

Massimiliano Bonamente is Associate Professor of Physics at the University of Alabama in Huntsville. He has taught more than 1500 students, written more than 30 peer reviewed journal articles, and has received more than 1.2 million dollars in research grants and contracts.

Table of Contents

Theory of Probability.- Random Variables and Their Distributions.- Three Fundamental Distributions: Binomial, Gaussian and Poisson.- The Distribution of Functions of Random Variables.- Error Propagation and Simulation of Random Variables.- Maximum Likelihood and Other Methods to Estimate Variables.- Mean, Median and Average Values of Variables.- Hypothesis Testing and Statistics.- Maximum–likelihood Methods for Gaussian Data.- Multi–variable Regression and Generalized Linear Models.- Goodness of Fit and Parameter Uncertainty for Gaussian Data.- Low–Count Statistics.- Maximum–likelihood Methods for low–count Statistics.- The linear Correlation Coefficient.- Systematic Errors and Intrinsic Scatter.-Regression with Bivariate Errors.- Model Comparison.- Monte Carlo Methods.- Introduction to Markov Chains.- Monte Carlo Markov Chains.

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