Book contents
- Frontmatter
- Contents
- Preface
- Note on notation
- 1 Decision
- 2 Probability
- 3 Statistics and expectations
- 4 Correlation and association
- 5 Hypothesis testing
- 6 Data modelling; parameter estimation
- 7 Detection and surveys
- 8 Sequential data – 1D statistics
- 9 Surface distribution – 2D statistics
- Appendix 1 The literature
- Appendix 2 Statistical tables
- References
- Index
5 - Hypothesis testing
Published online by Cambridge University Press: 02 September 2009
- Frontmatter
- Contents
- Preface
- Note on notation
- 1 Decision
- 2 Probability
- 3 Statistics and expectations
- 4 Correlation and association
- 5 Hypothesis testing
- 6 Data modelling; parameter estimation
- 7 Detection and surveys
- 8 Sequential data – 1D statistics
- 9 Surface distribution – 2D statistics
- Appendix 1 The literature
- Appendix 2 Statistical tables
- References
- Index
Summary
How do our data look?
I've carried out a Kolmogorov–Smirnov test …
Ah. Thatbad.
(interchange between Peter Scheuer and his then student, CRJ)It is often the case that we need to do sample comparison: we have someone else's data to compare with ours; or someone else's model to compare with our data; or even our data to compare with our model. We need to make the comparison and to decide something. We are doing hypothesis testing – are our data consistent with a model, with somebody else's data? In searching for correlations as we were in Chapter 4, we were hypothesis testing; in the model fitting of Chapter 6 we are involved in data modelling and parameter estimation.
Classical methods of hypothesis testing may be either parametric or non-parametric, distribution-free as it is sometimes called. Bayesian methods necessarily involve a known distribution. We have described the concepts of Bayesian versus frequentist and parametric versus non-parametric in the introductory Chapters 1 and 2. Table 5.1 summarizes these apparent dichotomies and indicates appropriate usage.
That non-parametric Bayesian tests do not exist appears self-evident, as the key Bayesian feature is the probability of a particular model in the face of the data. However, it is not quite this clear-cut, and there has been consideration of non-parametric methods in a Bayesian context (Gull & Fielden 1986). If we understand the data so that we can model its collection process, then the Bayesian route beckons (see Chapter 2 and its examples).
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- Information
- Practical Statistics for Astronomers , pp. 76 - 104Publisher: Cambridge University PressPrint publication year: 2003