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Statistics and Data Analysis Professor William Greene Stern School of Business Department of IOMS Department of Economics
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Statistics and Data Analysis Part 11A – Lognormal Random Walks
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Lognormal Random Walk The lognormal model remedies some of the shortcomings of the linear (normal) model. Somewhat more realistic. Equally controversial. Description follows for those interested.
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Lognormal Variable If the log of a variable has a normal distribution, then the variable has a lognormal distribution. Mean =Exp[μ+σ 2 /2] > Median = Exp[μ] 30/46
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Lognormality – Country Per Capita Gross Domestic Product Data 31/46
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Lognormality – Earnings in a Large Cross Section 32/46
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Lognormal Variable Exhibits Skewness The mean is to the right of the median. 33/46
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Lognormal Distribution for Price Changes Math preliminaries: (Growth) If price is P 0 at time 0 and the price grows by 100Δ% from period 0 to period 1, then the price at period 1 is P 0 (1 + Δ). For example, P 0 =40; Δ = 0.04 (4% per period); P 1 = P 0 (1 + 0.04). (Price ratio) If P 1 = P 0 (1 + 0.04) then P 1 /P 0 = (1 + 0.04). (Math fact) For smallish Δ, log(1 + Δ) ≈ Δ Example, if Δ = 0.04, log(1 + 0.04) = 0.39221. 34/46
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Collecting Math Facts 35/46
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Building a Model 36/46
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A Second Period 37/46
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What Does It Imply? 38/46
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Random Walk in Logs 39/46
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Lognormal Model for Prices 40/46
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Lognormal Random Walk 41/46
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Application Suppose P 0 = 40, μ=0 and σ=0.02. What is the probabiity that P 25, the price of the stock after 25 days, will exceed 45? logP 25 has mean log40 + 25μ =log40 =3.6889 and standard deviation σ√25 = 5(.02)=.1. It will be at least approximately normally distributed. P[P 25 > 45] = P[logP 25 > log45] = P[logP 25 > 3.8066] P[logP 25 > 3.8066] = P[(logP 25 -3.6889)/0.1 > (3.8066-3.6889)/0.1)]= P[Z > 1.177] = P[Z < -1.177] = 0.119598 42/46
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Prediction Interval We are 95% certain that logP 25 is in the interval logP 0 + μ 25 - 1.96σ 25 to logP 0 + μ 25 + 1.96σ 25. Continue to assume μ=0 so μ 25 = 25(0)=0 and σ=0.02 so σ 25 = 0.02(√25)=0.1 Then, the interval is 3.6889 -1.96(0.1) to 3.6889 + 1.96(0.1) or 3.4929 to 3.8849. This means that we are 95% confident that P 0 is in the range e 3.4929 = 32.88 and e 3.8849 = 48.66 43/46
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Observations - 1 The lognormal model (lognormal random walk) predicts that the price will always take the form P T = P 0 e ΣΔ t This will always be positive, so this overcomes the problem of the first model we looked at. 44/46
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Observations - 2 The lognormal model has a quirk of its own. Note that when we formed the prediction interval for P 25 based on P 0 = 40, the interval is [32.88,48.66] which has center at 40.77 > 40, even though μ = 0. It looks like free money. Why does this happen? A feature of the lognormal model is that E[P T ] = P 0 exp(μ T + ½σ T 2 ) which is greater than P 0 even if μ = 0. Philosophically, we can interpret this as the expected return to undertaking risk (compared to no risk – a risk “premium”). On the other hand, this is a model. It has virtues and flaws. This is one of the flaws. 45/46
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Summary Normal distribution approximation to binomial Approximate with a normal with same mean and standard deviation Continuity correction Sums and central limit theorem Random walk model for stock prices Lognormal variables Alternative random walk model using logs 46/46
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