Introduction to computer-intensive methods of data analysis in biology
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Bibliographic Information
Introduction to computer-intensive methods of data analysis in biology
Cambridge University Press, 2006
- : hardback
- : pbk
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University Library for Agricultural and Life Sciences, The University of Tokyo図
: pbkA9017805010459526
Note
Includes bibliographical references (p. 233-241) and index
Description and Table of Contents
Description
This 2006 guide to the contemporary toolbox of methods for data analysis will serve graduate students and researchers across the biological sciences. Modern computational tools, such as Maximum Likelihood, Monte Carlo and Bayesian methods, mean that data analysis no longer depends on elaborate assumptions designed to make analytical approaches tractable. These new 'computer-intensive' methods are currently not consistently available in statistical software packages and often require more detailed instructions. The purpose of this book therefore is to introduce some of the most common of these methods by providing a relatively simple description of the techniques. Examples of their application are provided throughout, using real data taken from a wide range of biological research. A series of software instructions for the statistical software package S-PLUS are provided along with problems and solutions for each chapter.
Table of Contents
- 1. An introduction to computer intensive methods
- 2. Maximum likelihood
- 3. The Jack-knife
- 4. The Bootstrap
- 5. Randomisation
- 6. Regression methods
- 7. Bayesian methods
- References
- Exercises
- Appendix A: an overview of S-Plus methods used in this book
- Appendix B: brief description of S-Plus subroutines used in this book
- Appendix C: S-Plus codes cited in text.
by "Nielsen BookData"