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Extreme events: Blending principal components analysis with independent components analysis


This presentation explores:
- Principal Components Analysis (PCA) and Independent Components Analysis (ICA) (including their main characteristics, similarities and differences)
- Extreme events and what drives markets
- Similarities between PCA and ICA and how the two can be blended to enhance risk models and refine portfolio construction techniques

[as pdf]

Slides
1Extreme events: Blending principal components analysis with independent components analysis
2Extreme events: Blending principal components analysis with independent components analysis
3PCA vs. ICA - main characteristics and differences
4Relevance for risk and portfolio construction modelling
5Visualising extreme events, i.e. fat tails: single return series
6Fat-tailed behaviour depends partly on timescale
7Fat tails and portfolio construction
8Fat tails – in joint return series
9Visualisation of joint fat-tailed behaviour
10Quantile-quantile box plots
11Principal components analysis (PCA)
12Applying PCA to sector relatives
13Principal components - explanation or noise?
14Independent components analysis
15E.g. Non-Normality and Projection pursuit
16Projection pursuit algorithm (1)
17Projection pursuit algorithm (2)
18Independent components analysis (ICA)
19Blending together PCA and ICA
20Identifying Principal Components one at a time
21Blending PCA with ICA
22Extreme events appear to be very important!
23Limitations
24Summary
25Appendix A: Time-varying volatility in single return series
26Interpretation via Cornish-Fisher asymptotic expansion
27Flaws in Cornish Fisher (and hence in skew/kurtosis)
28A better approach?
29Time varying volatility explains some market index fat tails, particularly on the upside
30Not just a developed market phenomenon
31More periods give more scope for extreme events
32Time-varying volatility remains an important contributor
33Appendix B: Time-varying volatility in joint return series
34Applying PCA to sector relatives
35Adjusting for time-varying volatility in joint return series
36Longitudinal time-varying volatility adjustment
37Cross-sectional time-varying volatility adjustment
38Back-testing time-varying volatility adjustments
39Other sources of fat tails?
40Important Information



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