Inverse statistics in stock markets: Universality and idiosyncracy
/ Authors
/ Abstract
Investigations of inverse statistics (a concept borrowed from turbulence) in stock markets, exemplified with filtered Dow Jones Industrial Average, SP Physica A 324 (2003) 338–343; Int. J. Mod. Phys. B 17 (2003) 4003–4012). We have performed extensive analyses based on unfiltered daily indices and stock prices as well as high-frequency (5-min) records in numerous stock markets all over the world. Our analysis confirms that the power-law distribution of exit times with an exponent of about α=1.5 is universal for all the data sets analyzed. In addition, all data sets show that the power-law scaling in the optimal investment horizon holds, but with idiosyncratic exponents. Specifically, γ≈1.5 for the daily data in most of the developed stock markets and the 5-min high-frequency data, while the γ values for the daily indexes and stock prices in emerging markets are significantly less than 1.5. We show that there is little chance that the discrepancy in γ is due to the difference in sample sizes of the two kinds of stock markets.
Journal: Physica A-statistical Mechanics and Its Applications