Mafinrisk Market Risk Course

Slides:



Advertisements
Similar presentations
VALUE AT RISK.
Advertisements

Value-at-Risk: A Risk Estimating Tool for Management
Credit Risk Plus.
VAR METHODS. VAR  Portfolio theory: risk should be measure at the level of the portfolio  not single asset  Financial risk management before 1990 was.
TK 6413 / TK 5413 : ISLAMIC RISK MANAGEMENT TOPIC 6: VALUE AT RISK (VaR) 1.
Financial Risk Management Framework - Cash Flow at Risk
Chapter 21 Value at Risk Options, Futures, and Other Derivatives, 8th Edition, Copyright © John C. Hull 2012.
VAR.
Chapter 21 Value at Risk Options, Futures, and Other Derivatives, 8th Edition, Copyright © John C. Hull 2012.
Introduction to Algorithmic Trading Strategies Lecture 8 Risk Management Haksun Li
Risk Management Jan Röman OM Technology Securities Systems AB.
Introduction Data and simula- tion methodology VaR models and estimation results Estimation perfor- mance analysis Conclusions Appendix Doctoral School.
RISK VALUATION. Risk can be valued using : Derivatives Valuation –Using valuation method –Value the gain Risk Management Valuation –Using statistical.
Market-Risk Measurement
QA-2 FRM-GARP Sep-2001 Zvi Wiener Quantitative Analysis 2.
FRM Zvi Wiener Following P. Jorion, Financial Risk Manager Handbook Financial Risk Management.
The Three Common Approaches for Calculating Value at Risk
Mafinrisk 2010 Market Risk course Value at Risk Models: the parametric approach Andrea Sironi Sessions 5 & 6.
Value at Risk (VAR) VAR is the maximum loss over a target
Copyright K.Cuthbertson, D. Nitzsche 1 FINANCIAL ENGINEERING: DERIVATIVES AND RISK MANAGEMENT (J. Wiley, 2001) K. Cuthbertson and D. Nitzsche Lecture VaR:
“Money is better than poverty, if only for financial reasons,”
Stress testing and Extreme Value Theory By A V Vedpuriswar September 12, 2009.
Options, Futures, and Other Derivatives 6 th Edition, Copyright © John C. Hull Chapter 18 Value at Risk.
Value at Risk.
Lecture 7: Simulations.
Risk Management and Financial Institutions 2e, Chapter 13, Copyright © John C. Hull 2009 Chapter 13 Market Risk VaR: Model- Building Approach 1.
Hedging and Value-at-Risk (VaR) Single asset VaR Delta-VaR for portfolios Delta-Gamma VaR simulated VaR Finance 70520, Spring 2002 Risk Management & Financial.
Advanced Risk Management I Lecture 6 Non-linear portfolios.
FRM Zvi Wiener Following P. Jorion, Financial Risk Manager Handbook Financial Risk Management.
Alternative Measures of Risk. The Optimal Risk Measure Desirable Properties for Risk Measure A risk measure maps the whole distribution of one dollar.
Market Risk Chapter 10 © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. McGraw-Hill/Irwin.
Irwin/McGraw-Hill 1 Market Risk Chapter 10 Financial Institutions Management, 3/e By Anthony Saunders.
©2003 McGraw-Hill Companies Inc. All rights reserved Slides by Kenneth StantonMcGraw Hill / Irwin Chapter Market Risk.
The Oxford Guide to Financial Modeling by Ho & Lee Chapter 15. Risk Management The Oxford Guide to Financial Modeling Thomas S. Y. Ho and Sang Bin Lee.
LECTURE 22 VAR 1. Methods of calculating VAR (Cont.) Correlation method is conceptually simple and easy to apply; it only requires the mean returns and.
1 Value at Risk Chapter The Question Being Asked in VaR “What loss level is such that we are X % confident it will not be exceeded in N business.
Market Risk Chapter 10 © 2006 The McGraw-Hill Companies, Inc., All Rights Reserved. K. R. Stanton.
Fundamentals of Futures and Options Markets, 5 th Edition, Copyright © John C. Hull Value at Risk Chapter 18.
Value at Risk Chapter 16. The Question Being Asked in VaR “What loss level is such that we are X % confident it will not be exceeded in N business days?”
Actuarial Science Meets Financial Economics Buhlmann’s classifications of actuaries Actuaries of the first kind - Life Deterministic calculations Actuaries.
Market Risk A financial firm’s market risk is the potential volatility in its income due to changes in market conditions such as interest rates, liquidity,
Elements of Financial Risk Management Second Edition © 2012 by Peter Christoffersen 1 Simulating the Term Structure of Risk Elements of Financial Risk.
CIA Annual Meeting LOOKING BACK…focused on the future.
 Measures the potential loss in value of a risky asset or portfolio over a defined period for a given confidence interval  For example: ◦ If the VaR.
Value at Risk Chapter 20 Options, Futures, and Other Derivatives, 7th International Edition, Copyright © John C. Hull 2008.
Financial Risk Management of Insurance Enterprises
Options, Futures, and Other Derivatives, 5th edition © 2002 by John C. Hull 16.1 Value at Risk Chapter 16.
Options, Futures, and Other Derivatives, 4th edition © 1999 by John C. Hull 14.1 Value at Risk Chapter 14.
Portfolio Management Unit – IV Risk Management Unit – IV Risk Management.
Banking Tutorial 8 and 9 – Credit risk, Market risk Magda Pečená Institute of Economic Studies, Faculty of Social Science, Charles University in Prague,
CHAPTER 10 Market Risk Copyright © 2011 by The McGraw-Hill Companies, Inc. All Rights Reserved.McGraw-Hill/Irwin.
1 VaR Models VaR Models for Energy Commodities Parametric VaR Historical Simulation VaR Monte Carlo VaR VaR based on Volatility Adjusted.
March-14 Central Bank of Egypt 1 Strategic Asset Allocation.
Value at Risk (VaR).
Types of risk Market risk
The Three Common Approaches for Calculating Value at Risk
Financial Risk Management of Insurance Enterprises
Value at Risk and Expected Shortfall
Market-Risk Measurement
Market Risk Engine MRE.
Chapter 12 Market Risk.
Risk Mgt and the use of derivatives
Financial Risk Management of Insurance Enterprises
Types of risk Market risk
Financial Risk Management
Market Risk VaR: Model-Building Approach
Lecture Notes: Value at Risk (VAR)
Lecture 2 – Monte Carlo method in finance
Andrei Iulian Andreescu
Lecture Notes: Value at Risk (VAR)
Presentation transcript:

Mafinrisk Market Risk Course 15/04/2017 Mafinrisk Market Risk Course Value at Risk Models: simulation approaches Session 8 Andrea Sironi

Mafinrisk - Simulation Approaches Agenda Common features of simulation approaches Historical simulations The hybrid approach Monte Carlo simulations Stress testing Mafinrisk - Simulation Approaches

Simulation Approaches Problems of the parametric approach Non-normal distribution of market factors’ returns: higher kurtosis (fat tails) + skewness Serial correlation of market factors’ returns Non linear positions (bonds, options, etc.) Simulation approaches Historical & Monte Carlo simulations Mafinrisk - Simulation Approaches

Simulation Approaches Full valuation approaches Every position is repriced for each scenario No use of sensitivity coefficients (delta, duration, beta, etc.) No normal distribution assumption Historical simulations: every position is revalued at the historical conditions (returns) Monte Carlo simulation: random generation of a large number of scenarios Logic of the distribution percentile Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Simulation Approaches Mafinrisk - Simulation Approaches

Historical simulations Four phases Selection of an historical sample of market factors’ returns (e.g. 100 days) Revaluation of the portfolio for each of the historical values of the market factor Reconstruction of the empirical frequency distribution of the portofolio market values Identification of the desired distribution percentile, corresponding to the desired confidence level Mafinrisk - Simulation Approaches

Historical simulations 1. Revalue the position/ portfolio based on historical conditions 2. Rank P&L 3. Cut the distribution at the desidered percentile level Ex. 99% VaR for a long USD position  5.42% Ex. 95% VaR for a short USD position  5.91% Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Historical simulations vs parametric approach Mafinrisk - Simulation Approaches

Historical simulations vs parametric approach Mafinrisk - Simulation Approaches

Historical simulations Advantages Easy to understand and communicate No explicit underlying assumption concerning the functional form of the returns distribution No need to estimate the variance-covariance matrix Allows to capture the risk profile of portfolios with non linear and non monotonic sensitivity to market factors returns Mafinrisk - Simulation Approaches

Historical simulations Disadvantages Assumption of stability of the distribution of market factors’ returns Computationally hard because of full valuation Size of the historical sample, particularly when time horizon > 1 day Bad definition of the distributions tails Risk of overweighting or underweighting the extreme events in the historical sample Increasing the size of the historical sample there is the risk of deviating from the distribution stationarity assumption Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Hybrid approach Boudoukh, Richardson e Whitelaw (1998) Attempt to combine the advantages of the parametric approach (decreasing weights through exponentially weighted moving averages) e those of historical simulations (no normal distribution assumption) Long historical series but more weight to recent data Weight attributed to each individual historical return: Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Hybrid approach VaR (99%) “prudent”: 1.09% VaR (99%) realistic: linear interpolation Mafinrisk - Simulation Approaches

Monte Carlo Simulations Problem lack of data: generate new data  Monte Carlo Originally used for pricing complex derivatives (i.e. exotic options) for which no closed analytic solution was possible  expected value of the payoff present value Simulate the market factor path n times (respecting arbitrage constraints) and compute the payoff in each simulated scenario  average of these values = expected value Mafinrisk - Simulation Approaches

Monte Carlo Simulations Risk Management: 5 steps Identify the distribution – f(x) – that best proxy the actual market factor returns distribution Simulate the market factor evolution n times Calculate the position market value in each scenario Build the empirical probability distribution of the changes of the position’s market value Cut the empirical distribution at the desired confidence level Mafinrisk - Simulation Approaches

Monte Carlo Simulations Pricing The stochastic process that governs the evolution of the market factor is generally known The problem concerns the valuation Risk Management The problem concerns the choice of the distribution from which to extract the market factor returns Mafinrisk - Simulation Approaches

Monte Carlo Simulations The third step is based on the use of a random generator and the uses a uniform distribution. It can be decomposed into 4 sub-steps Extract a value U from a uniform distribution [0,1] Calculate the value x of this function f(x) corresponding to the extracted U value Determine the inverse of the cumulative function of the original sample distribution Repeat the previous steps a large number of times Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Monte Carlo Simulations Example: a bank has bought an at the money call option on the MIB 30 stock index with a maturity of 1 year and a market value of 9.413 euro. Hp. 1: Rf=3%, Volatility MIB 30 = 20% Hp. 2: normal distribution with mean 0.15% and standard deviation standard 1.5% Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Monte Carlo Simulations Mafinrisk - Simulation Approaches

Monte Carlo Simulations What about a portfolio which is sentitive to more than just one market factor? MC simulations MC do not capture, as historical simulations, the correlation structure We need to introduce a method to simulate the different market factors taking into account their correlations Mafinrisk - Simulation Approaches

Monte Carlo Simulations 5 steps Estimate variance-covariance matrix Decompose the original matrix into two symmetric matrices, A and AT  “Cholesky decomposition” Generate scenarios for the different market factors multiplying matrix AT, which reflects the historical correlations of market factors returns, for a vector z of random numers Calculate the market value change corresponding to each of the simulated scenarios Calculate VaR cutting the empirical probability distribution at the desired confidence level Mafinrisk - Simulation Approaches

Monte Carlo Simulations Example: 2 positions Buy a call on MIB 30 (same data as before) Sell an at the money call on DAX with ne year maturity Hp. 3) The DAX returns distribution is normal with mean 0.18% and standard deviation 1.24% Hp. 4) The returns correlation between the two market indices is 0.75 Mafinrisk - Simulation Approaches

Monte Carlo Simulations Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Monte Carlo Simulations Mafinrisk - Simulation Approaches

Monte Carlo Simulations Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches

Monte Carlo Simulations Final result Mafinrisk - Simulation Approaches

Monte Carlo Simulations Advantages of Monte Carlo simulations Full valuation: no problems with non linear or non monotonic portfolios Flexibility: possibility to use any probability distribution functional form Simulating not only final values but also path: possibility to evaluate the risk profile of path dependent options Mafinrisk - Simulation Approaches

Monte Carlo Simulations Limits of Monte Carlo simulations Need to estimate market factors’ returns correlations  stability problem Computationally intensive Large number of scenarios  one tends to estimate VaR based on values which are not really extremes  10,000 simulations, VaR 99% = 100th worst change Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Stress testing Estimate the effects, in terms of potential losses, of extreme events The portfolio market value is revalued at the market conditions of very pessimistic scenarios Similar to a simulation model  based on revaluing the portfolio at simulated conditions The extreme scenarios can be based on: statistical techniques (e.g. 10 times standard deviation) subjective assumptions (e.g. 10% fall of the stock market, 1% parallel shift of the yield curve, etc.) major historical events (e.g. 1987 stock market crash, 1992 currency crisis, 1994 bond markets collapse, 2000 equity markets, etc.) Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Stress testing Derivative Policy Group (1995) Recommendations 100 basis points parallel shift, upwards or downwards, of the yield curve 25 b.p. change in the yield curve slope 10% change in the stock market indices 6% changes in the FX rates 20% change in volatility Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Stress testing Not a real VaR model  discretionality They allow to overcome the restrictive assumptions of VaR models They allow to simulate the impact of liquidity crisis They allow to capture the effects of crisis episodes during which significant increases in correlations between different market factors tend to occur They can be built on specific tailor made assumptions, based on the size, composition and sensitivity of the individual portfolio Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Questions & Exercises 1. Which of the following statements concerning Monte Carlo simulations is correct? Monte Carlo simulations, unlike the parametric approach, have the advantage of preserving the structure of correlations among market factor returns Monte Carlo simulations have the advantage of not requiring any assumption on the shape of the of the probability distributions of market factor returns Monte Carlo simulations allow to estimate the VaR of a portfolio, with the desired confidence level, using the percentile technique Monte Carlo simulations allow to estimate the VaR of a portfolio, with the desired confidence level, using a multiple of standard deviation of market factor returns Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Questions & Exercises 2. A European bank computes the VaR associated to its overall position in US dollars, based on parametric VaR and historical simulation. The two results are different (€100,000 and €102,000, respectively) regardless of the fact that they are based on the same data series and the same confidence level. Consider the following statements: I. The distribution of the percent changes in the euro/dollar exchange rate is not normal II. The distribution of the percent changes in the euro/dollar exchange rate is asymmetrical III. The distribution of the percent changes in the euro/dollar exchange rates has a greater kurtosis than the normal distribution Which ones would you agree with? A) Only I B) I, II and III C) Only I and II D) Only I and III Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Questions & Exercises 3. Read the following statements on Monte Carlo simulations: I. Monte Carlo simulations are more accurate than the parametric approach when the value of the bank’s portfolio is a linear function of the risk factors, and the risk factor returns are normally distributed. II. Monte Carlo simulations are quicker than the parametric approach. III. Monte Carlo simulations can be made more precise through the delta/gamma approach. IV. Monte Carlo simulations require the assumption that risk factor returns are uncorrelated with each other, since otherwise the Cholesky decomposition could not be computed. Which one(s) would you agree with? A) Only II. B) Only III. C) I and IV. D) None of them Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Questions & Exercises 4. Consider the following statements: “historical simulations… i) …are totally distribution-free, meaning that users do not have to make hypotheses on the shape of the probability distribution of market factor returns”; ii) …are stationary, meaning that the variance of market factor returns is supposed to be constant”; iii) …are equivalent to parametric models (including models where volatilities are exponentially-weighted) if the probability of past factor returns is close to normal”; iv) …are extremely demanding in terms of past data, especially if VaR is based on a long holding period”. Which ones would you agree with? A) all; B) ii and iv; C) i and iii; D) only iv. Mafinrisk - Simulation Approaches

Mafinrisk - Simulation Approaches Questions & Exercises 5. Following a brief period of sharp changes in market prices, a bank using historical simulations to estimate VaR decides to switch to a model based on hybrid simulations, adopting a decay factor  of 0.95. Which of the following is true? A) The new model is likely to lead to an increase in VaR, which can be mitigated by setting  at 0.98; B) The new model is likely to lead to an decrease in VaR, which can be mitigated by setting  at 0.98; C) The new model is likely to lead to an increase in VaR, which can be mitigated by setting  at 0.90; D) The new model is likely to lead to an decrease in VaR, which can be mitigated by setting  at 0.90. Mafinrisk - Simulation Approaches