Book contents
- Frontmatter
- Contents
- Dedication
- Foreword to first edition
- Foreword to second edition
- Note on notation
- 1 Decision
- 2 Probability
- 3 Statistics and expectations
- 4 Correlation and association
- 5 Hypothesis testing
- 6 Data modelling and parameter estimation: basics
- 7 Data modelling and parameter estimation: advanced topics
- 8 Detection and surveys
- 9 Sequential data – 1D statistics
- 10 Statistics of large-scale structure
- 11 Epilogue: statistics and our Universe
- Appendix A The literature
- Appendix B Statistical tables
- References
- Index
3 - Statistics and expectations
Published online by Cambridge University Press: 05 June 2012
- Frontmatter
- Contents
- Dedication
- Foreword to first edition
- Foreword to second edition
- Note on notation
- 1 Decision
- 2 Probability
- 3 Statistics and expectations
- 4 Correlation and association
- 5 Hypothesis testing
- 6 Data modelling and parameter estimation: basics
- 7 Data modelling and parameter estimation: advanced topics
- 8 Detection and surveys
- 9 Sequential data – 1D statistics
- 10 Statistics of large-scale structure
- 11 Epilogue: statistics and our Universe
- Appendix A The literature
- Appendix B Statistical tables
- References
- Index
Summary
Lies, damned lies and statistics.
(Anon)In embarking on statistics we are entering a vast area, enormously developed for the Gaussian distribution in particular. This is classical territory; historically, statistics were developed because the approach now called Bayesian had fallen out of favour. Hence, direct probabilistic inferences were superseded by the indirect and conceptually different route, going through statistics and intimately linked to hypothesis testing. The use of statistics is not particularly easy. The alternatives to Bayes' methods are subtle and not very obvious; they are also associated with some fairly formidable mathematical machinery. We will avoid this, presenting only results and showing the use of statistics, while trying to make clear the conceptual foundations.
Statistics
Statistics are designed to summarize, reduce or describe data. The formal definition of a statistic is that it is some function of the data alone. For a set of data X1, X2, …, some examples of statistics might be the average, the maximum value or the average of the cosines. Statistics are therefore combinations of finite amounts of data. In the following discussion, and indeed throughout, we try to distinguish particular fixed values of the data, and functions of the data alone, by upper case (except for Greek letters). Possible values, being variables, we will denote in the usual algebraic spirit by lower case.
- Type
- Chapter
- Information
- Practical Statistics for Astronomers , pp. 55 - 70Publisher: Cambridge University PressPrint publication year: 2012