5. Volatility, sensitivity and VaR

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5. Volatility, sensitivity and VaR Investment risks 5. Volatility, sensitivity and VaR

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?” The Question Being Asked in VaR

VaR and Regulatory Capital Regulators base the capital they require banks to keep on VaR The market-risk capital is k times the 10- day 99% VaR where k is at least 3.0 VaR and Regulatory Capital

VaR is the loss level that will not be exceeded with a specified probability C-VaR (or expected shortfall) is the expected loss given that the loss is greater than the VaR level Although C-VaR is theoretically more appealing, it is not widely used VaR vs. C-VaR

Advantages of VaR It captures an important aspect of risk in a single number It is easy to understand It asks the simple question: “How bad can things get?” Advantages of VaR

Instead of calculating the 10-day, 99% VaR directly analysts usually calculate a 1-day 99% VaR and assume This is exactly true when portfolio changes on successive days come from independent identically distributed normal distributions Time Horizon

Historical Simulation Create a database of the daily movements in all market variables. The first simulation trial assumes that the percentage changes in all market variables are as on the first day The second simulation trial assumes that the percentage changes in all market variables are as on the second day and so on Historical Simulation

Historical Simulation continued Suppose we use m days of historical data Let vi be the value of a variable on day i There are m-1 simulation trials The ith trial assumes that the value of the market variable tomorrow (i.e., on day m+1) is Historical Simulation continued

The Model-Building Approach The main alternative to historical simulation is to make assumptions about the probability distributions of return on the market variables and calculate the probability distribution of the change in the value of the portfolio analytically This is known as the model building approach or the variance-covariance approach The Model-Building Approach

Daily Volatilities In option pricing we measure volatility “per year” In VaR calculations we measure volatility “per day” Daily Volatilities

Daily Volatility continued Strictly speaking we should define sday as the standard deviation of the continuously compounded return in one day In practice we assume that it is the standard deviation of the percentage change in one day Daily Volatility continued

We have a position worth $10 million in Microsoft shares The volatility of Microsoft is 2% per day (about 32% per year) We use N=10 and X=99 Microsoft Example

Microsoft Example continued The standard deviation of the change in the portfolio in 1 day is $200,000 The standard deviation of the change in 10 days is Microsoft Example continued

Microsoft Example continued We assume that the expected change in the value of the portfolio is zero (This is OK for short time periods) We assume that the change in the value of the portfolio is normally distributed Since N(–2.33)=0.01, the VaR is Microsoft Example continued

AT&T Example Consider a position of $5 million in AT&T The daily volatility of AT&T is 1% (approx 16% per year) The S.D per 10 days is The VaR is AT&T Example

Now consider a portfolio consisting of both Microsoft and AT&T Suppose that the correlation between the returns is 0.3 Portfolio

S.D. of Portfolio A standard result in statistics states that In this case sX = 200,000 and sY = 50,000 and r = 0.3. The standard deviation of the change in the portfolio value in one day is therefore 220,227 S.D. of Portfolio

VaR for Portfolio The 10-day 99% VaR for the portfolio is The benefits of diversification are (1,473,621+368,405)– 1,622,657=$219,369 What is the incremental effect of the AT&T holding on VaR? VaR for Portfolio

Summary VaR Two methods of estimating VaR Historical simulation The model-building approach For a single asset For a portfolio of assets Gain from diversifaction Summary Options, Futures, and Other Derivatives 6th Edition, Copyright © John C. Hull 2005