Advanced ERM Session 5: Risk aggregation and Extreme Events
This presentation is based on a part of an academic course on Advanced Enterprise Risk Management (Advanced ERM) titled ‘Risk aggregation and Extreme Events’ and covers topics such as: an introduction to the importance of these topics, modelling fat-tailed behaviour for individual risks, extreme value theory, modelling multiple risks, factor structures, copula based dependency structures and managing and mitigating (joint) fat-tailed risks. It also includes appendices on quantile-quantile plots and on possible active management selection effects
Slides
| 1 | Session 5: Risk aggregation and Extreme Events |
| 2 | Session 5: Risk aggregation and Extreme Events |
| 3 | Introduction (1) |
| 4 | Introduction (2) |
| 5 | Session 5: Risk aggregation and Extreme Events |
| 6 | Modelling fat-tailed behaviour for individual risks |
| 7 | Many (most?) investment return series are ‘fat-tailed’ |
| 8 | Skew(ness), kurtosis and Cornish-Fisher |
| 9 | Flaws in Cornish Fisher (and hence skew/kurtosis) |
| 10 | What causes fat-tailed behaviour? |
| 11 | Time-varying volatility |
| 12 | Explains some market index fat tails, particularly on upside |
| 13 | A longer term phenomenon too |
| 14 | Crowded trades and selection effects |
| 15 | Session 5: Risk aggregation and Extreme Events |
| 16 | Extreme Value Theory (EVT) |
| 17 | Extreme value theory results |
| 18 | Block maxima results |
| 19 | Generalised extreme value (GEV) distribution |
| 20 | Limiting behaviour |
| 21 | Main result for threshold exceedances (excesses) |
| 22 | Potential weaknesses |
| 23 | Using EVT to Estimate VaRs |
| 24 | Session 5: Risk aggregation and Extreme Events |
| 25 | Joint fat-tailed behaviour |
| 26 | Consider first multivariate Normal, i.e. Gaussian, case |
| 27 | MVaR in Gaussian Case |
| 28 | E.g. outcomes uncorrelated, equal weights |
| 29 | Central Limit Theorem |
| 30 | CLT can break down in the following ways: |
| 31 | Session 5: Risk aggregation and Extreme Events |
| 32 | Factor structure - notation |
| 33 | Factor structure - handling idiosyncratic risk |
| 34 | Advantages of introducing a factor structure |
| 35 | Identifying factor structures - 3 main model types |
| 36 | Loss distributions for credit portfolios |
| 37 | Single risk factor model for credit portfolios |
| 38 | Probability that a given fraction (k/n) default |
| 39 | Granularity |
| 40 | Analytical solution |
| 41 | Vasicek loss distribution |
| 42 | Session 5: Risk aggregation and Extreme Events |
| 43 | Copulas |
| 44 | Illustrative distribution (two risk factors) (1) |
| 45 | Illustrative distribution (two risk factors) (2) |
| 46 | Copulas: another illustration |
| 47 | E.g. bivariate copula (1) |
| 48 | E.g. bivariate copula (2) |
| 49 | Copula and copula density |
| 50 | Copulas and Sklar's theorem |
| 51 | Example Copulas |
| 52 | Tail dependence |
| 53 | Interpretation of tail index |
| 54 | Gaussian and Independence copula |
| 55 | Simulating random variables from Gaussian copula |
| 56 | Simulations with non-Gaussian copulas |
| 57 | Fitting copulas empirically |
| 58 | Risk aggregation |
| 59 | Risk aggregation using copulas (1) |
| 60 | Risk aggregation using copulas (2) |
| 61 | Risk aggregation using correlation matrix |
| 62 | Ranking copulas |
| 63 | Session 5: Risk aggregation and Extreme Events |
| 64 | Managing and mitigating joint fat-tailed risks |
| 65 | Creating multi-dimensional QQ plots |
| 66 | Characteristics of multidimensional QQ plots |
| 67 | Portfolio construction |
| 68 | Portfolio construction - sensitivities |
| 69 | Portfolio construction - impact of fat tails (1) |
| 70 | Portfolio construction - impact of fat tails (2) |
| 71 | Other approaches - (1) distributional mixtures |
| 72 | Other approaches - (2) lower partial moments |
| 73 | Estimating lower partial moments |
| 74 | Capital allocation: the Euler principle |
| 75 | Session 5: Risk aggregation and Extreme Events |
| 76 | Appendix A: Quantile-quantile plots |
| 77 | Example QQ-plot (versus Normal) |
| 78 | Quantile-quantile plots: other comments |
| 79 | Appendix B: Possible active management selection effects |
| 80 | Implications for modelling |
| 81 | PCA vs. ICA |
| 82 | Including ‘meaning’ as well as ‘noise’ |
| 83 | Selection effects are potentially very important |
| 84 | Selection effects - Summary |
| 85 | Session 5: Agenda covered |
| 86 | Important Information |
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