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Advanced Risk Management I Lecture 7 Example • In applications one typically takes one year of data and a 1% confidence interval • If we assume to count 4 excess losses in one year, 4 4 246 246 ln 0.0140.99246 LR 2ln 250 250 0.77 • Since the value of the chi-square distribution with one degree of freedom is 6.6349, the hypothesis of accuracy of the VaR measure is not rejected ( pvalue of 0.77 è 38,02%). Christoffersen extension • A flaw of Kupiec test isnbased on the hypothesis of independent excess losses. • Christoffersen proposed an extension taking into account serial dependence. It is a joint test of the two hypotheses. • The joint test may be written as LRcc = LRun + LRind where LRun is the unconditional test and LRind is that of indipendence. It is distributed as a chissquare with 2 degrees of freedom. Value-at-Risk criticisms • The issue of coherent risk measures (aximoatic approach to risk measures) • Alternative techniques (or complementary): expected shorfall, stress testing. • Liquidity risk Coherent risk measures • In 1999 Artzner, Delbaen-Eber-Heath addressed the following problems • “Which features must a risk measure have to be considered well defined?” • Risk measure axioms: Positive homogeneity: (X) = (X) Translation invariance: (X + ) = (X) – Subadditivity: (X1+ X2) (X1) + (X2) Convex risk measures • The hypothesis of positive homogeneity has been criticized on the grounds that market illiquidity may imply that the risk increases with the dimension of the position • For this reason, under the theory of convex risk measures, the axioms of positive homogeneity and sub-additivity were substituted with that of convexity • (X1+ (1 – ) X2) (X1) + (1 – ) (X2) Discussion • It is diversification a property of the measure? • VaR is not sub-additive. Does it mean that information in a super-additive measure is irrelevant? • Assume that one merges two businesses for which VaR is not sub-additive. He uses a measure that is sub-additive by definition. Does he lose some information that may be useful for his choice? Expected shortfall • Value-at-Risk is the quantile corresponding to a probability level. • Critiques: – VaR does not give any information on the shape of the distribution of losses in the tail – VaR of two businesses can be super-additive (merging two businesses, the VaR of the aggregated business may increase – In general, the problem of finding the optimal portfolio with VaR constraint is extremely complex. Expected shortfall • Expected shortfall is the expected loss beyond the VaR level. Notice however that, like VaR, the measure is referred to the distribution of losses. • Expected shortfall is replacing VaR in many applications, and it is also substituting VaR in regulation (Base III). • Consider a position X, the extected shortfall is defined as ES = E(X: X VaR) Expected shortfall: pros and cons • Pros: i) it is a measure of the shape of the distribution: ii) it is sub-additive, iii) it is easily used as a constraint for portfolio optimization • Cons: does not give information on the fact that merging two businesses may increase the probability of default. Stress testing • Stress testing techniques allow to evaluate the riskiness of the position to specific events • The choice can be made – Collecting infotmation on particular events or market situations – Using implied expectations in financial instruments, i.e. futures, options, etc… • Scenario construction must be consistent with the correlation structure of data Stress testing How to generate consistent scenarios • Cholesky decomposition – The shock assumed on a given market and/or bucket propagates to others via the Cholesky matrix • Black and Litterman – The scenario selected for a given market and/or bucket is weighted and merged with historical info by a Bayesian technique. Multivariate Normal Variables • Cholesky Decomposition – Denote with X a vector of independent random variables each one of which is ditributed acccording to a standard normal, so that the variancecovariance matrix of X is the n n identity matrix Assume one wants to use these variables to generate a second set of variables, that will be denoted Y, that will be correlated with variance-covariance matrix given . – The new system of random variables can be found as linear combination of the independent variables Y AX – The problem is reduced to determining a matrix A of dimension n n such that AA t Multivariate Normal Variables • Cholescky Decomposition – The solution of the previous problem is not unique meaning that there exost many matrices A that, multiplied by their transposed, give as a result. If matrix is positive definite, the most efficient method to solve the problem consists in Cholescky decomposition. – The key point consists in looking for A in the shape of a lower triangular matrix . A11 A21 A A n1 0 A22 An 2 0 0 Ann Multivariate Normal Variables • Cholesky Decomposition – It may be verified that the elements of A can be recoverd by a set of iterative formulas i 1 aii ii aik2 k 1 i 1 1 a ji ij aik a jk aii k 1 – In the simple two-variable case we have 0 1 A 1 2 2 2 Black and Litterman • The technique proposed in Black and Litterman and largely used in asset management can be used to make the scenarios consistent. • Information sources – Historical (time series of prices) – Implied (cross-section info from derivatives) – Private (produced “in house”) Views • Assume that “in house” someone proposes a “view” on the performance of market 1 and a “view” on that of market 3 with respect to market 2. • Both “views” have error margins i with covariance matrix e1' r = q1 + 1 e3' r - e2' r = q2 + 2 • The dynamics of percentage price changes r must be “condizioned” on views “view” qi. Conditioning scenarios to “views” • Let us report the “views” in matrixform e1 ' 1 0 0~ 1 6% P q 0% 2 e 3 'e 2 ' 0 1 1 and compute the joint distribution r V VP' q N P, PV ' PVP' Conditional distribution • The conditional distribution of r with respect to q is then VP ' PVP' 1 q - P ; r q ~ N V - VP ' PVP' 1 PV and noticed that this may be interpreted as a GLS regression model (generalised least squares) Esempio: costruzione di uno scenario • Assumiamo di costruire uno scenario sulla curva dei tassi a 1, 10 e 30 anni. • I valori di media, deviazione standard e correlazione sono dati da 6.00 0.01 5.77 0.06 6.58 0.07 • 0.04 0.03 1 R 0.04 1 0.92 0.03 0.92 1 A shock to the term structure 7 6.5 6 Yie lds Historic Scenario 5.5 5 4.5 1 6 11 16 Maturities 21 26 Stress testing analysis (1) The short rate increases to 6% (0.1% sd) Scadenza Nominale MtM corrente MtM scenario Perdita Media Scenario VaR 1 anno 100 95.08 94.18 0.90 0.92 10 anni 100 58.35 56.16 2.17 2.93 30 anni 100 15.54 13.88 1.66 2.30 Stress testing analysis (1) The short rate increases to 6%(1% sd) Scadenze Nominale MtM Corrente MtM Scenario Perdita Media Scenario VaR 1 anno 100 95.08 95.08 0.00 0.53 10 anni 100 58.35 58.35 0.00 1.49 30 anni 100 15.54 15.54 0.00 1.21