Six Decades of Significant Autocorrelation in the U.S. Stock Market

14 Pages Posted: 1 Feb 2008

Date Written: January 20, 2008

Abstract

This paper assesses the autocorrelation patterns in U.S. stock market indices: the S&P 500 (1962-2007), the Dow Jones Industrial Average (1929-2007), and the NASDAQ Composite (1972-2007). Statistically significant lag 1 autocorrelation was observed for all three time series as tested by Monte Carlo simulation. The autocorrelation exhibited by the S&P 500 agreed with the findings of Lo and MacKinlay. The Dow Jones Industrial Average displayed strong autocorrelation at lag 1 from 1940-1986 (163/182 quarters, or 87%, had a positive autocorrelation). For all but three quarters from 1972 to 1997, the NASDAQ Composite had a positive autocorrelation at lag 1 averaging 0.25. 61% of the calendar quarters during that period had statistically significant autocorrelations at lag 1.

Keywords: autocorrelation, ARMA, ARIMA, random walk, time series, Box-Jenkins, autoregressive, moving average, stock market, NASDAQ Composite, Dow Jones Industrial Average, S&P 500, variance ratio test

Suggested Citation

Egan, William J., Six Decades of Significant Autocorrelation in the U.S. Stock Market (January 20, 2008). Available at SSRN: https://ssrn.com/abstract=1088861 or http://dx.doi.org/10.2139/ssrn.1088861

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