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Chapter 18 The Lognormal Distribution

Chapter 18 The Lognormal Distribution. The normal distribution. Normal distribution (or density):. The normal distribution. Normal density is symmetric: If a random variable x is normally distributed with mean m and standard deviation s ,

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Chapter 18 The Lognormal Distribution

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  1. Chapter 18 The Lognormal Distribution

  2. The normal distribution • Normal distribution (or density):

  3. The normal distribution • Normal density is symmetric: • If a random variable x is normally distributed with mean m and standard deviation s, • z is a random variable distributed standard normal: • The value of the cumulative normal [P(z<a)] distribution function N(a) or NormSDist(a) in Excel equals to the probability P of a number z drawn from the normal distribution to be less than a.

  4. The normal distribution The Normal Distribution allows us to make statements and inferences regarding future stock price levels. We are able to estimate probabilities of the terminal stock price being between two values, above a value, or below a value. Note: the probability of reaching an EXACT value is zero.

  5. The normal distribution (cont.)

  6. The normal distribution (cont.) • The probability of a number drawn from the standard normal distribution of being between a and –a is: Prob (z<–a)=N(–a) Prob (z<a)=N(a) therefore Prob (–a<z<a)= N(a)–N(–a)=N(a)–[1–N(a)]=2·N(a)–1 • Example 18.1: Prob (–0.3<z<0.3)=2·0.6179–1=0.2358

  7. The normal distribution (cont.) • Converting a normal random variable to standard normal: • If , then if • And vice versa: • If , then if • Example 18.2: Suppose and , then and

  8. The normal distribution (cont.) • Example: The number 7 is drawn from a Normal distribution of mean 4 and variance 9. What is the equivalent draw from a standard normal distribution? What is the probability of drawing a number larger than 7 ? Lower than 7 ? Exactly the number 7 ?

  9. The normal distribution (cont.) • Answer: Equivalent standard draw is: z* = (7- 4)/Ö9 = 1. The probability of drawing a number larger than 7 is Prob(x>7) or Prob(z>z*). This is equal to 1-N(z*) or 1-N(1) = 1 - 0.841345 = 15.87%. The probability of drawing a number lower than 7 is Prob(x<7) or Prob(z<z*). This is equal to N(z*) or N(1) = 0.841345 = 84.13%. Obtaining exactly the number 7 has a zero probability.

  10. The normal distribution (cont.) • The sum of normal random variables is also normal: where xi, i=1,…,n, are n random variables, with mean E(xi)=mi, variance Var(xi)=si2, covariance Cov(xi,xj) = sij =rijsisj • Ex: ax1+bx2 ~ N(am1+bm2, a2s21+b2s22+2abrs1s2) Question: how is this variance obtained ?

  11. The normal distribution (cont.) • Example: The variance of the sum of the two variables is: Var(ax1+bx2) = Cov(ax1+bx2 ,ax1+bx2) = a2Cov(x1,x1) + 2abCov(x1,x2) + b2Cov(x2,x2) = a2s21 + 2abs12 + b2s22 = a2s21 + b2s22 + 2abrs1s2

  12. The normal distribution (cont.) • Example: take the case of two identically and independently distributed returns x1 and x2 (assume we are talking about continuously compounded returns, so you can add them). Using the last two slides, what would be the resulting means and variances?

  13. The normal distribution (cont.) • If x1 and x2 are iid and are summed, we have: • m1=m2=m • s1=s2=s • r =0 (since they are independent) • a=1 and b=1 • Hence we get: x1+x2 ~ N(2m, 2s2)

  14. The lognormal distribution • A random variable x is lognormally distributed if ln(x) is normally distributed • If x is normal, and ln(y) = x (or y = ex), then y is lognormal • If continuously compounded stock returns are normal then the stock price is lognormally distributed • Product of lognormal variables is lognormal • If x1 and x2 are normal, then y1=ex1 and y2=ex2 are lognormal. • The product of y1 and y2: y1 x y2 = ex1 x ex2 = ex1+x2 • Since x1+x2 is normal, ex1+x2 is lognormal

  15. The lognormal distribution (cont.) • The lognormal density function: • where S0 is initial stock price, and ln(S/S0)~N(m,v2), S is the future stock price, m is the mean of the continuously compounded return and v is standard deviation of the continuously compounded return • If x ~ N(m,v2), then

  16. The lognormal distribution (cont.)

  17. A lognormal model of stock prices • If the stock price St is lognormal, St / S0 = ex, where x, the continuously compounded return from 0 to t is normal • If R(t, s) is the continuously compounded return from t to s, and, t0 < t1 < t2, then R(t0, t2) = R(t0, t1) + R(t1, t2) • From 0 to T, E[R(0,T)] = nah , and Var[R(0,T)] = nsh2 (we showed it in the two-period cases earlier) • If returns are iid, the mean and variance of the continuously compounded returns are proportional to time

  18. A lognormal model of stock prices (cont.) • If we assume that ln(St /S0) ~ N [(a–d–0.5s2)t, s2t] then ln(St /S0) = (a–d–0.5s2)t + stz and therefore St = S0e(a–d–0.5s2)t + stz • Exercise: compute the value of E(St) by using the fact that if x ~ N(m,v2), then E(ex) = em+(1/2)v2 . (Note that S0 is constant)

  19. A lognormal model of stock prices (cont.) • Let x = ln(St /S0) ~ N [(a–d–0.5s2)t, s2t] Thus m = (a–d–0.5s2)t and v2 = s2t Then E(ex) = E(St /S0) = em+(1/2)v2 = e(a–d–0.5s2)t +(1/2)s2t = e(a–d)t and therefore E(St )= S0e(a–d)t

  20. A lognormal model of stock prices (cont.) • If the stock price is lognormally distributed, we can use the fact that the distribution is known to compute a number of probabilities and expectations: • Probability that the option will expire in-the-money. • Expected stock price, given that the option expires in the money.

  21. A lognormal model of stock prices (cont.) • If current stock price is S0, the probability that the option will expire in the money, i.e., where the expression for d2 contains a, the true expected return on the stock instead of the risk-free rate r. (if you used r, you would obtain the risk-neutral probability of expiring in the money)

  22. A lognormal model of stock prices (cont.) Using the lognormal distribution, confidence intervals can be derived. • One might be interested in computing the prices StL and StU such that: Prob (St<StL) = p/2 and Prob (StU < St ) = p/2 • The probability of being in the tails of the distribution is split in two, half for each tail. • We will then be (1-p)% confident that the final stock price will be between SL and SU.

  23. Lognormal probability calculations • Prices StL and StU such that Prob (St<StL) = p/2 and Prob (StU < St ) = p/2 are: • Example: use the cumulative normal distribution table seen earlier to derive the 95% confidence interval if S0=100, t=2, a=0.10, d=0, s=0.30

  24. Lognormal probability calculations • Answer: • There is a 95% probability that in two years the stock will be between $48.60 and $256.40

  25. Lognormal probability calculations (cont.) • Given the option expires in the money, what is the expected stock price? The conditional expected price • where the expressions for d1 and d2 contain a, the true expected return on the stock in place of r, the risk-free rate

  26. How are asset prices distributed?

  27. Is volatility constant?

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