Our systems are now restored following recent technical disruption, and we’re working hard to catch up on publishing. We apologise for the inconvenience caused. Find out more

Recommended product

Popular links

Popular links


Scientific Inference

Scientific Inference

Scientific Inference

Learning from Data
Simon Vaughan, University of Leicester
November 2013
Available
Hardback
9781107024823

    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.

    • Features several complete data analysis case studies using real data from great scientific experiments
    • Boxed text contains worked examples and computer codes to help further understanding of the concepts covered in the main text
    • Presents a self-contained introduction to statistical computing using the freely available R language

    Reviews & endorsements

    "… succinct and fast-paced …"
    Bogdan Hoanca, 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, Contemporary Physics

    See more reviews

    Product details

    November 2013
    Hardback
    9781107024823
    236 pages
    252 × 178 × 15 mm
    0.63kg
    63 b/w illus.
    Available

    Table of Contents

    • 1. Science and statistical data analysis
    • 2. Statistical summaries of data
    • 3. Simple statistical inferences
    • 4. Probability theory
    • 5. Random variables
    • 6. Estimation and maximum likelihood
    • 7. Significance tests and confidence intervals
    • 8. Monte Carlo methods
    • Appendixes
    • References
    • Index.
    Resources for
    Type
    hipparcos.txt.gz
    Size: 1.79 MB
    Type: application/gzip
    pedroni.dat
    Size: 1.29 KB
    Type: chemical/x-mopac-input
    pulsar-mass.dat
    Size: 884 bytes
    Type: chemical/x-mopac-input
    waves.dat
    Size: 2.05 KB
    Type: chemical/x-mopac-input
    rutherford.dat
    Size: 497 bytes
    Type: chemical/x-mopac-input
    reynolds.txt
    Size: 267 bytes
    Type: text/plain
    Link to errata list
    pulsar-timing.txt
    Size: 448 bytes
    Type: text/plain
    star.txt
    Size: 1.19 KB
    Type: text/plain
    Exercises
    Size: 144.77 KB
    Type: application/pdf
      Author
    • Simon Vaughan , University of Leicester

      Simon Vaughan is a Reader in the Department of Physics and Astronomy, University of Leicester, where he has developed and runs a highly regarded course for final year physics students on the subject of statistics and data analysis.