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
16 - Covariance Discriminant Analysis
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
This chapter discusses a procedure for quantifying differences between two covariance matrices. Despite being applicable to a range of statistical problems, the general procedure has no standard name. In this chapter, we call it Covariance Discriminant Analysis (CDA). CDA finds the linear combination of variables that maximizes the ratio of variances. More generally, CDA decomposes two multivariate time series, separately, into components ordered such that the variance ratio of the first component is maximized, and each succeeding component maximizes the variance ratio under the constraint that it is uncorrelated with the preceding components. This technique is used in numerous other multivariate techniques, including canonical correlation analysis, predictable component analysis, and multivariate ANOVA. CDA also is used to identify low-frequency components that maximize the ratio of low-frequency to high-frequency variance. To mitigate overfitting, the standard approach is to apply CDA to a few principal components. No standard criterion exists for choosing the number of principal components. A new criterion is proposed in this chapter.
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- Statistical Methods for Climate Scientists , pp. 366 - 398Publisher: Cambridge University PressPrint publication year: 2022