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INTRODUCTION TO MODERN RISK MANAGEMENT A brief survey by Juhani Raatikainen University of Jyväskylä Introduction • Often risk management is defined as measures to hedge against such large unexpected losses, that might threaten existence of a bank or a non-financial company. However, we should probably define risk management as a part of usual business decision making, including, of course, hedging against the risks, but also hedging against all other unexpected losses. The target of risk management is to contribute Juhani Raatikainen 5.6.2002 2 directly to profitability of a bank or a corporation. • We can loosely define modern risk management as any quantitative approach applying probabilistic measurement and forecasting methods in decision making with regard of risks. However, when accepting this definition, we have to bear in mind, that the area of risk management is much wider than just the technical methodology, including as its core decision making at the board level. Juhani Raatikainen 5.6.2002 3 • There are several types of risks which any bank or corporation has to face. Today and tomorrow we are focusing especially on two of them, namely market risk (risk caused by changes in market prices) and credit risk (risk caused by changes in creditworthiness of our debtors or counterparties). • Origins of the modern quantitative risk management, especially the Value-at-Risk analysis, is in the late 1980’s and late 1990’s, when the first applications were born. Juhani Raatikainen 5.6.2002 4 • During the 90’s Value-at-Risk (VaR) became the standard tool used by (almost without exceptions) all large or medium sized banks. • Also since the mid 90’ VaR has won popu-larity among large international (non-financial) companies. • Today, credit risk analysis, especially credit risk at portfolio level, is the hot topic. The first general (commercial) solutions or approaches have been on the market about five years, however most of the banks are just now building their credit risk analysis systems. Juhani Raatikainen 5.6.2002 5 • The Basle Accord gives banks (under certain conditions) an opportunity to use their own inhouse models to calculate minimum capital requirement instead of a calculation rule given by the Basle Group. This has contributed much to the fast speed with which VaR models have gain popularity inside the banking community. With the New Basle Accord now changes, the same will happen also with credit risk models. Juhani Raatikainen 5.6.2002 6 What the “New” Approach Offers • It forecasts probability of outcomes (instead of ad hoc scenario calculations) • Measures portfolio effect (gains offered by diversification) • Makes all different types of risks comparable (“integrated risk management”) • Statistically testable models Juhani Raatikainen 5.6.2002 7 Risk Management System • Target setting and planning: selection of efficient target return and risk combination (Figure 1) • “Risk Policy” (usually defined by the board) • Risk limit systems • Monitoring and planning • Risk reduction by hedging • Risk-Adjusted-Return-Measurement (RAPM) Juhani Raatikainen 5.6.2002 8 Figure 1. The Efficient Set of Investment Opportunities Expected return Expected risk Juhani Raatikainen 5.6.2002 9 Value-at-Risk • In Value-at-Risk analysis we are forecasting probability distribution of returns at a given horizon, often with special emphasis on size of the possible losses with given probability. • Typical type of answer to be sought is what is the maximum one week loss at 95 % confidence level, or what is the minimum loss with 5 % probability. Juhani Raatikainen 5.6.2002 10 Figure 2. Forecasted Return Distribution Todennäköisyys Probability Profit/Loss Millions of EUR Juhani Raatikainen 5.6.2002 SAS RiskDimensions 11 • In the figure 2, there is 95 % probability to have return higher than -2 million eur, and 5 % probability to have a loss bigger than or equal to 2 . Juhani Raatikainen 5.6.2002 12 Figure 3. Structure of a Value-atRisk -model Structure of Market Prices Portfolio Statistical Simulation Models Engine Describing Instrument Behaviour of Valuation the Risk Factors VaR -Forecast Juhani Raatikainen 5.6.2002 13 Traditional VaR Techniques • Analytical Approach (“Delta-Normal Approach, RiskMetrics Approach) – usually base on the multi-Normal probability distribution and approximation of pricing functions of the financial instruments • Historical Simulation – Assumes, that returns are generated by a unknown probability distribution, which does not change in time Juhani Raatikainen 5.6.2002 14 • Monte Carlo Simulation – very flexible, can be built on a huge variety of different types of statistical models – traditionally built on EWMA covariance estimate or simplest forms of GARCH models, and assumption of multi-normally distributed returns Juhani Raatikainen 5.6.2002 15 Modern VaR Techniques • The above traditional VaR techniques do not seem to have good forecasting ability. One of the problems is, that return distributions have fatter tails than the Normal distribution. Much statistical modelling is done to overcome this problem.One of the popular approaches is to use Extreme Value Theory (EVT) to estimate the fat tails (Smith (1990) offers a short introduction). Juhani Raatikainen 5.6.2002 16 • In standard approaches dependence is measured by a covariance matrix. However, more accurate and flexible approach is offered by Copula functions (copula is a function connecting two or more marginal probability distribution functions to a multidimensional probability distribution function). • It is interesting to note, that use of EVT and Copula functions is very close to models applied in medicine, engineering, physics, and geology. Juhani Raatikainen 5.6.2002 17 • A good introduction to Copulas is offered by Nelsen (1998), Joe (1997) discusses multivariate copulas including also copulas for extreme value distributions. • Also other types of model, as co-integration and/or models allowing regime shifts (for example Switching Markov GARCH models, or STAR-GARCH models) look promising (for a survey see Pagan (1996), and van Dijk, Teräsvirta, and Franses (2002)) Juhani Raatikainen 5.6.2002 18 • Later today Mr. Esa Vilhonen (OKO Bank) will present us an example of a very good banking solution (both VaR and credit risk). One interesting point to notice is that the OKO Bank is one of the first in the world to use Copula functions in a business solution. Juhani Raatikainen 5.6.2002 19 Corporate Risk Management • Value-at-Risk approach applied to corporations differ from the above “banking models”, because – forecasting horizon is longer – nature of the exposure items differ: the exposure of the included business items have to be forecasted (for example sales volume) Juhani Raatikainen 5.6.2002 20 – The target exposure is different • Cash-Flow-at-Risk (CFaR) (value of business) • Profit-at-Risk (profitability) • Earning-at-Risk (EaR), (earning of a company) • Industries using Value-at-Risk – Pulp and Paper production – Energy companies, and especially companies on the electricity market Juhani Raatikainen 5.6.2002 21 – Aviation – Metal industry – Large international high-tech companies • After a couple of minutes Mr. Jean-Marc Servat (Nokia Corporation) will discuss more thoroughly Corporate Risk Management while presenting the Nokia Risk Management solution. Juhani Raatikainen 5.6.2002 22 Credit Risk Management • Focus of credit (or counterparty) risk management is portfolio level risk. A bank can not run a profitable business without having also clients, who will default. But, if a bank is able to forecast total amount of the losses (portfolio level risk) and price that risk in an appropriate way, it will have a flourishing business. Juhani Raatikainen 5.6.2002 23 • Market risk is very often incorporated into credit risk: the question to be asked is what is probability of a default, and in that case what is market value of the instrument • Credit risk analysis consists of two parts – “micro analysis” (for example “creditworthiness of a counterparty) – portfolio level analysis Juhani Raatikainen 5.6.2002 24 “Micro Analysis” • Use of statistical techniques or neural networks to estimate – credit quality of a counterparty – recovery rate – conditional or unconditional credit migration probabilities • Key concept is the Loss Given Default: the amount of loss when value of the collateral is subtracted and recovery is taken into account Juhani Raatikainen 5.6.2002 25 Portfolio Level Analysis • May be based on – unconditional credit migration probabilities and correlations (CreditMetrics) – conditional credit migration probabilities and correlations, key dependece is between portfolio credit risk and macroeconomic fluctuations – both the above “micro analysis” and portfoliolevel analysis may be based on option theory (this is the traditional academic approach) Juhani Raatikainen 5.6.2002 26 Credit Risk Forecast Todennäköisyys Probability Loss Millions of EUR Juhani Raatikainen 5.6.2002 SAS RiskDimensions 27 • The presentation by Ph.D. Esa Jokivuolle (Bank of Finland) tomorrow at 10.00 o’clock will discuss credit risk measurement especially with regard of the new Basel Accord. Juhani Raatikainen 5.6.2002 28 Future Trends • The greatest change during the 90’ has been in business philosophy: financial community has adopted systematic “technical” (portfolio) approach to business and risk management (applied also in pricing of risk) • Use of modern risk management concepts in business decision making continue to increase Juhani Raatikainen 5.6.2002 29 • One of the great challenges is to develop more accurate forecasting models both for market risk and credit risk. • From technical point of view, use of nonGaussian statistical distributions and “new” dependence measures (Copulas) will be the direction of future research work. • The presentation by Ph.D. Esa Mangeloja University of Jyväskylä) tomorrow at 12.30 o’clock will discuss dependence between the Nordic Stock exchanges. Juhani Raatikainen 5.6.2002 30 • My own presentation tomorrow will discuss how to test forecasting accuracy of VaR models using as an example test results of some popular models. Juhani Raatikainen 5.6.2002 31 References Joe, H. (1997) Multivariate Models and Dependence Concepts, Chapman & Hall, London. Nelsen, R. (1998) An Introduction to Copulas, Lecture Notes in Statistics, Springer, New York. Pagan, A. (1996) The Econometrics of Financial Markets, Journal of Empirical Finance, 3: 15 - 102. Juhani Raatikainen 5.6.2002 32 Smith, R. (1990) Extreme Value Theory, in Handbook of Applicable Mathematics, (ed. W. Lederman), vol 7, Wiley, Chichester, 437 472. Van Dijk, D., Teräsvirta, T. and Franses, H. (2002) Smooth Transition Autoregressive Models - A Survey of Recent Developments, Econometric Reviews, vol. 21, 1 - 47. Juhani Raatikainen 5.6.2002 33