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Random Walk Tests and Variance Ratios Fin250f: Lecture 4.1 Fall 2005 Reading: Taylor, chapter 5.1-5.6.

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Presentation on theme: "Random Walk Tests and Variance Ratios Fin250f: Lecture 4.1 Fall 2005 Reading: Taylor, chapter 5.1-5.6."— Presentation transcript:

1 Random Walk Tests and Variance Ratios Fin250f: Lecture 4.1 Fall 2005 Reading: Taylor, chapter 5.1-5.6

2 Outline  Variance ratios  Autocorrelation sampling theory

3 Types of Random Walks  e(t) IID: No volatility persistence  e(t): expectation zero, zero correlation No linear predictors Might be nonlinear predictors Allows for volatility prediction

4 Random Walks and Market Efficiency  Classic implications Price forecasting hopeless Technical analysis useless  Modern thoughts/reminders Dynamic strategies that  Increase expected returns  Increase risk  Still consistent with market efficiency

5 Variance Ratio Tests

6

7 Variance Ratios: Random Walk Test  Test: VR(N)=1  Two problems Distribution of VR? Which N?

8 Distribution of VR(N): Asymptotic

9 Matlab Examples  vratio  vratiotest  nmcvratio  bsvratio

10 Longer Time Horizons  Weekly Lo and Mackinlay(1988) Strong rejections on weekly equal weighted index (not value weighted) Few rejections for individual stocks Stale prices and nontrading?

11 Longer Time Horizons  Monthly Poterba and Summers(1988) Weak positive correlations (not sig)  Annual Weak negative long range correlations (not sig)

12 Autocorrelations  For r(t) IID  Autocorrelations are asymptotically distributed N(0, 1/n)  n=sample size  95% confidence bands +-1.96/sqrt(n) pacf.m

13 Autocorrelations: Small sample issues

14 Autocorrelations: Variance


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