Book contents
- Frontmatter
- Contents
- Preface
- 1 Basic Concepts in Probability and Statistics
- 2 Hypothesis Tests
- 3 Confidence Intervals
- 4 Statistical Tests Based on Ranks
- 5 Introduction to Stochastic Processes
- 6 The Power Spectrum
- 7 Introduction to Multivariate Methods
- 8 Linear Regression: Least Squares Estimation
- 9 Linear Regression: Inference
- 10 Model Selection
- 11 Screening: A Pitfall in Statistics
- 12 Principal Component Analysis
- 13 Field Significance
- 14 Multivariate Linear Regression
- 15 Canonical Correlation Analysis
- 16 Covariance Discriminant Analysis
- 17 Analysis of Variance and Predictability
- 18 Predictable Component Analysis
- 19 Extreme Value Theory
- 20 Data Assimilation
- 21 Ensemble Square Root Filters
- Appendix
- References
- Index
4 - Statistical Tests Based on Ranks
Published online by Cambridge University Press: 03 February 2022
- Frontmatter
- Contents
- Preface
- 1 Basic Concepts in Probability and Statistics
- 2 Hypothesis Tests
- 3 Confidence Intervals
- 4 Statistical Tests Based on Ranks
- 5 Introduction to Stochastic Processes
- 6 The Power Spectrum
- 7 Introduction to Multivariate Methods
- 8 Linear Regression: Least Squares Estimation
- 9 Linear Regression: Inference
- 10 Model Selection
- 11 Screening: A Pitfall in Statistics
- 12 Principal Component Analysis
- 13 Field Significance
- 14 Multivariate Linear Regression
- 15 Canonical Correlation Analysis
- 16 Covariance Discriminant Analysis
- 17 Analysis of Variance and Predictability
- 18 Predictable Component Analysis
- 19 Extreme Value Theory
- 20 Data Assimilation
- 21 Ensemble Square Root Filters
- Appendix
- References
- Index
Summary
The hypothesis tests discussed in the previous chapters are parametric. That is, the procedures assume samples come from a prescribed family of distributions, leaving only the parameters of the distribution open to question. For instance, a univariate Gaussian distribution is characterized by two parameters, the mean and variance, and hypotheses are expressed in terms of those parameters. This chapter discusses a class of procedures called nonparametric statistics, or distribution-free methods, that make fewer assumptions. For some hypotheses, nonparametric tests are almost as powerful as parametric tests, hence some statisticians recommend nonparametric methods as a first choice. This chapter discusses the following non-parametric tests: Wilcoxon rank-sum test, a non-parametric version of the t-test, Kruskal-Wallis test, a nonparametric version of Analysis of Variance, a nonparametric version of the F-test, based on medians, Spearman’s rank correlation, a non-parametric version of the correlation test. This chapter assumes familiarity with hypothesis tests, particularly the concepts of null hypothesis, decision rule, and significance level.
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- Statistical Methods for Climate Scientists , pp. 69 - 93Publisher: Cambridge University PressPrint publication year: 2022