Martin Meyer
Boston University
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Featured researches published by Martin Meyer.
Physical Review E | 1999
Parameswaran Gopikrishnan; Vasiliki Plerou; Luís A. Nunes Amaral; Martin Meyer; H. Eugene Stanley
We study the distribution of fluctuations of the S&P 500 index over a time scale deltat by analyzing three distinct databases. Database (i) contains approximately 1 200 000 records, sampled at 1-min intervals, for the 13-year period 1984-1996, database (ii) contains 8686 daily records for the 35-year period 1962-1996, and database (iii) contains 852 monthly records for the 71-year period 1926-1996. We compute the probability distributions of returns over a time scale deltat, where deltat varies approximately over a factor of 10(4)-from 1 min up to more than one month. We find that the distributions for deltat<or= 4 d (1560 min) are consistent with a power-law asymptotic behavior, characterized by an exponent alpha approximately 3, well outside the stable Lévy regime 0<alpha<2. To test the robustness of the S&P result, we perform a parallel analysis on two other financial market indices. Database (iv) contains 3560 daily records of the NIKKEI index for the 14-year period 1984-1997, and database (v) contains 4649 daily records of the Hang-Seng index for the 18-year period 1980-1997. We find estimates of alpha consistent with those describing the distribution of S&P 500 daily returns. One possible reason for the scaling of these distributions is the long persistence of the autocorrelation function of the volatility. For time scales longer than (deltat)x approximately 4 d, our results are consistent with a slow convergence to Gaussian behavior.
Physical Review E | 1999
Yanhui Liu; Parameswaran Gopikrishnan; Pierre Cizeau; Martin Meyer; Chung-Kang Peng; H. Eugene Stanley
We study the statistical properties of volatility, measured by locally averaging over a time window T, the absolute value of price changes over a short time interval deltat. We analyze the S&P 500 stock index for the 13-year period Jan. 1984 to Dec. 1996. We find that the cumulative distribution of the volatility is consistent with a power-law asymptotic behavior, characterized by an exponent mu approximately 3, similar to what is found for the distribution of price changes. The volatility distribution retains the same functional form for a range of values of T. Further, we study the volatility correlations by using the power spectrum analysis. Both methods support a power law decay of the correlation function and give consistent estimates of the relevant scaling exponents. Also, both methods show the presence of a crossover at approximately 1.5 days. In addition, we extend these results to the volatility of individual companies by analyzing a data base comprising all trades for the largest 500 U.S. companies over the two-year period Jan. 1994 to Dec. 1995.
Physical Review E | 1999
Vasiliki Plerou; Parameswaran Gopikrishnan; Luís A. Nunes Amaral; Martin Meyer; H. E. Stanley
We present a phenomenological study of stock price fluctuations of individual companies. We systematically analyze two different databases covering securities from the three major U.S. stock markets: (a) the New York Stock Exchange, (b) the American Stock Exchange, and (c) the National Association of Securities Dealers Automated Quotation stock market. Specifically, we consider (i) the trades and quotes database, for which we analyze 40 million records for 1000 U.S. companies for the 2-yr period 1994-95; and (ii) the Center for Research and Security Prices database, for which we analyze 35 million daily records for approximately 16,000 companies in the 35-yr period 1962-96. We study the probability distribution of returns over varying time scales Delta t, where Delta t varies by a factor of approximately 10(5), from 5 min up to approximately 4 yr. For time scales from 5 min up to approximately 16 days, we find that the tails of the distributions can be well described by a power-law decay, characterized by an exponent 2.5 < proportional to < 4, well outside the stable Lévy regime 0 < alpha < 2. For time scales Delta t >> (Delta t)(x) approximately equal to 16 days, we observe results consistent with a slow convergence to Gaussian behavior. We also analyze the role of cross correlations between the returns of different companies and relate these correlations to the distribution of returns for market indices.
European Physical Journal B | 1998
Parameswaran Gopikrishnan; Martin Meyer; Luís A. Nunes Amaral; H. E. Stanley
Abstract:The probability distribution of stock price changes is studied by analyzing a database (the Trades and Quotes Database) documenting every trade for all stocks in three major US stock markets, for the two year period January 1994 - December 1995. A sample of 40 million data points is extracted, which is substantially larger than studied hitherto. We find an asymptotic power-law behavior for the cumulative distribution with an exponent
Physica A-statistical Mechanics and Its Applications | 1997
Yanhui Liu; Pierre Cizeau; Martin Meyer; Chung-Kang Peng; H. Eugene Stanley
Economics Letters | 1998
David Canning; Luís A. Nunes Amaral; Youngki Lee; Martin Meyer; H. E. Stanley
a \approx 3
Physica A-statistical Mechanics and Its Applications | 1997
Pierre Cizeau; Yanhui Liu; Martin Meyer; Chung-Kang Peng; H. Eugene Stanley
Nature | 1999
Vasiliki Plerou; Luís A. Nunes Amaral; Parameswaran Gopikrishnan; Martin Meyer; H. Eugene Stanley
, well outside the Lévy regime
Physica A-statistical Mechanics and Its Applications | 1998
H. E. Stanley; Sergey V. Buldyrev; Murat Canpolat; Martin Meyer; Osamu Mishima; M. R. Sadr-Lahijany; Antonio Scala; Francis W. Starr
Physical Review B | 2000
Markus Porto; Philipp Maass; Martin Meyer; Armin Bunde; W. Dieterich
(0 < \alpha < 2)