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Chapter 3 Risk Identification and Measurement McGraw-Hill/Irwin Copyright © 2004 by the McGraw-Hill Companies, Inc. All rights reserved. Identifying Business Risk Exposures • Property • Business income • Liability • Human resource • External economic forces H&N, Ch. 3 T3.2 Identifying Individual Exposures • Earnings • Physical assets • Financial assets • Medical expenses • Longevity • Liability H&N, Ch. 3 T3.3 Probability Distributions • Probability distributions • Listing of all possible outcomes and their associated probabilities • Sum of the probabilities must equal 1 • Two types of distributions: • discrete • continuous H&N, Ch. 3 T3.4 Presenting Probability Distributions • Two ways of presenting discrete distributions: • Numerical listing of outcomes and probabilities • Graphically • Two ways of presenting continuous distributions: • Density function (not used in this course) • Graphically H&N, Ch. 3 T3.5 Example of a Discrete Probability Distribution • Random variable = damage from auto accidents Possible Outcomes for Damages $0 $200 $1,000 $5,000 $10,000 H&N, Ch. 3 Probability 0.50 0.30 0.10 0.06 0.04 T3.6 Example of a Discrete Probability Distribution H&N, Ch. 3 T3.7 Example of a Continuous Distribution H&N, Ch. 3 T3.8 Continuous Distributions • Important characteristic of density functions • Area under the entire curve equals one • Area under the curve between two points gives the probability of outcomes falling within that given range H&N, Ch. 3 T3.9 Probabilities with Continuous Distributions • Find the probability that the loss > $5,000 • Find the probability that the loss < $2,000 • Find the probability that $2,000 < loss < $5,000 Probability $2,000 H&N, Ch. 3 $5,000 Possible Losses T3.10 Risk Management & Probability Distributions • Ideally, a risk manager would know the probability distribution of losses • Then assess how different risk management approaches would change the probability distribution • Example: Which distribution would you rather have? Insurance No RM Prob Accident Cost H&N, Ch. 3 Accident Cost + Insurance Cost T3.11 Summary Measures of Loss Distributions • Instead comparing entire distributions, managers often work with summary measures of distributions: • Frequency • Severity • Expected loss • Standard deviation or variance • Maximum probable loss (Value at Risk) • Then ask: How does RM affect each of these measures? H&N, Ch. 3 T3.12 Expected Value • Formula for a discrete distribution: • Expected Value = x1 p1 + x2 p2 + … + xM pM . • Example: Possible Outcomes for Damages $0 $200 $1,000 $5,000 $10,000 Probability 0.50 0.30 0.10 0.06 0.04 Expected Value = H&N, Ch. 3 T3.13 Expected Value H&N, Ch. 3 T3.14 Standard Deviation and Variance • Standard deviation indicates the expected magnitude of the error from using the expected value as a predictor of the outcome • Variance = (standard deviation) 2 • Standard deviation (variance) is higher when • when the outcomes have a greater deviation from the expected value • probabilities of the extreme outcomes increase H&N, Ch. 3 T3.15 Standard Deviation and Variance • Comparing standard deviation for three discrete distributions H&N, Ch. 3 Distribution 1 Distribution 2 Distribution 3 Outcome Prob $250 0.33 $500 0.34 $750 0.33 Outcome Prob $0 0.33 $500 0.34 $1000 0.33 Outcome Prob $0 0.4 $500 0.2 $1000 0.4 T3.16 Standard Deviation and Variance H&N, Ch. 3 T3.17 Sample Mean and Standard Deviation • Sample mean and standard deviation can and usually will differ from population expected value and standard deviation • Coin flipping example $1 if heads X= -$1 if tails • Expected average gain from game = $0 • Actual average gain from playing the game 5 times = H&N, Ch. 3 T3.18 Skewness • Skewness measures the symmetry of the distribution • No skewness ==> symmetric • Most loss distributions exhibit skewness H&N, Ch. 3 T3.19 Maximum Probable Loss • Maximum Probable Loss at the 95% level is the number, MPL, that satisfies the equation: • Probability (Loss < MPL) < 0.95 • Losses will be less than MPL 95 percent of the time H&N, Ch. 3 T3.20 Value at Risk (VAR) • VAR is essentially the same concept as maximum probable loss, except it is usually applied to the value of a portfolio • If the Value at Risk at the 5% level for the next week equals $20 million, then • Prob(change in portfolio value < -$20 million) = 0.05 • In words, there is 5% chance that the portfolio will lose more $20 million over the next week H&N, Ch. 3 T3.21 Value at Risk • Example: • Assume VAR at the 5% level =$5 million • And VAR at the 1% level = $7 million H&N, Ch. 3 T3.22 Important Properties of the Normal Distribution • Often analysts use the following properties of the normal distribution to calculate VAR: • Assume X is normally distributed with mean and standard deviation . Then • Prob (X > -2.33) = 0.01 • Prob (X > -1.645) = 0.05 H&N, Ch. 3 T3.23 Correlation • Correlation identifies the relationship between two probability distributions • Uncorrelated (Independent) • Positively Correlated • Negatively Correlated H&N, Ch. 3 T3.24 Calculating the Frequency and Severity of Loss • Example: • 10,000 employees in each of the past five years • 1,500 injuries over the five-year period • $3 million in total injury costs • Frequency of injury per year = 1.500 / 50,000 = 0.03 • Average severity of injury = $3 m/ 1,500 = $2,000 • Annual expected loss per employee = 0.03 x $2,000 = $60 H&N, Ch. 3 T3.25