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  • Cited by 7
Publisher:
Cambridge University Press
Online publication date:
June 2014
Print publication year:
2013
Online ISBN:
9781139176071

Book description

Providing the knowledge and practical experience to begin analysing scientific data, this book is ideal for physical sciences students wishing to improve their data handling skills. The book focuses on explaining and developing the practice and understanding of basic statistical analysis, concentrating on a few core ideas, such as the visual display of information, modelling using the likelihood function, and simulating random data. Key concepts are developed through a combination of graphical explanations, worked examples, example computer code and case studies using real data. Students will develop an understanding of the ideas behind statistical methods and gain experience in applying them in practice. Further resources are available at www.cambridge.org/9781107607590, including data files for the case studies so students can practise analysing data, and exercises to test students' understanding.

Reviews

'… succinct and fast-paced …'

Bogdan Hoanca Source: Optics and Photonics News

'… provides innovative and intelligent comments and connecting elements, as well as data analysis and interpretation … [it] extends to fundamental and known issues, which are offered from an understandable point of view.'

Nikolaos E. Myridis Source: Contemporary Physics

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Contents

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