2,218 research outputs found
Identification of clusters of companies in stock indices via Potts super-paramagnetic transitions
The clustering of companies within a specific stock market index is studied
by means of super-paramagnetic transitions of an appropriate q-state Potts
model where the spins correspond to companies and the interactions are
functions of the correlation coefficients determined from the time dependence
of the companies' individual stock prices. The method is a generalization of
the clustering algorithm by Domany et. al. to the case of anti-ferromagnetic
interactions corresponding to anti-correlations. For the Dow Jones Industrial
Average where no anti-correlations were observed in the investigated time
period, the previous results obtained by different tools were well reproduced.
For the Standard & Poor's 500, where anti-correlations occur, repulsion between
stocks modify the cluster structure.Comment: 4 pages; changed conten
From turbulence to financial time series
We develop a framework especially suited to the autocorrelation properties
observed in financial times series, by borrowing from the physical picture of
turbulence. The success of our approach as applied to high frequency foreign
exchange data is demonstrated by the overlap of the curves in Figure (1), since
we are able to provide an analytical derivation of the relative sizes of the
quantities depicted. These quantities include departures from Gaussian
probability density functions and various two and three-point autocorrelation
functions.Comment: 10 pages, 1 figure, LaTeX, version to appear in Physica
The Tenth Article of Ettore Majorana
This year is the centenary of the birth of Ettore Majorana, one of the major
Italian physicists of all times. In this note we briefly sketch a few
biographical details about Ettore Majorana and introduce and discuss the main
points of Majorana's 10th article. In his article Majorana explicitly considers
quantum mechanics as an irreducible statistical theory because the theory is
not able to describe the time evolution of a single particle or atom in a
precise environment at a deterministic level. This lack of determinism at the
level of an elementary physical system motivated him to suggest a formal
analogy between statistical laws observed in physics and in the social
sciences. We hope the occasion of the centenary of the birth of Ettore Majorana
will be useful to remember and to reconsider not only his exceptional
achievements in theoretical physics but also his fresh and original views on
the role of statistical laws in physics and in other disciplines such as the
social sciences.Comment: 3 pages, to appear in Europhysics News 37/4 July/August 200
Wavelet Correlation Coefficient of 'strongly correlated' financial time series
In this paper we use wavelet concepts to show that correlation coefficient
between two financial data's is not constant but varies with scale from high
correlation value to strongly anti-correlation value This studies is important
because correlation coefficient is used to quantify degree of independence
between two variables. In econophysics correlation coefficient forms important
input to evolve hierarchial tree and minimum spanning tree of financial data.Comment: physica A (in press
Role of the initial conditions on the enhancement of the escape time in static and fluctuating potentials
We present a study of the noise driven escape of an overdamped Brownian
particle moving in a cubic potential profile with a metastable state. We
analyze the role of the initial conditions of the particle on the enhancement
of the average escape time as a function of the noise intensity for fixed and
fluctuating potentials. We observe the noise enhanced stability effect for all
the initial unstable states investigated. For a fixed potential we find a
peculiar initial condition which separates the set of the initial
unstable states in two regions: those which give rise to divergences from those
which show nonmonotonic behavior of the average escape time. For fluctuating
potential at this particular initial condition and for low noise intensity we
find large fluctuations of the average escape time.Comment: 8 pages, 6 figures. Appeared in Physica A (2003
Hierarchical Structure in Financial Markets
I find a topological arrangement of stocks traded in a financial market which
has associated a meaningful economic taxonomy. The topological space is a graph
connecting the stocks of the portfolio analyzed. The graph is obtained starting
from the matrix of correlation coefficient computed between all pairs of stocks
of the portfolio by considering the synchronous time evolution of the
difference of the logarithm of daily stock price. The hierarchical tree of the
subdominant ultrametric space associated with the graph provides information
useful to investigate the number and nature of the common economic factors
affecting the time evolution of logarithm of price of well defined groups of
stocks.Comment: 11 pages, 3 figures with 7 panel
Statistical properties of short term price trends in high frequency stock market data
We investigated distributions of short term price trends for high frequency
stock market data. A number of trends as a function of their lengths was
measured. We found that such a distribution does not fit to results following
from an uncorrelated stochastic process. We proposed a simple model with a
memory that gives a qualitative agreement with real data.Comment: 10 pages, 9 figures, in ver. 2 one chapter adde
An interest rates cluster analysis
An empirical analysis of interest rates in money and capital markets is
performed. We investigate a set of 34 different weekly interest rate time
series during a time period of 16 years between 1982 and 1997. Our study is
focused on the collective behavior of the stochastic fluctuations of these
time-series which is investigated by using a clustering linkage procedure.
Without any a priori assumption, we individuate a meaningful separation in 6
main clusters organized in a hierarchical structure.Comment: 7 pages, 7 figure
Dynamical model of financial markets: fluctuating `temperature' causes intermittent behavior of price changes
We present a model of financial markets originally proposed for a turbulent
flow, as a dynamic basis of its intermittent behavior. Time evolution of the
price change is assumed to be described by Brownian motion in a power-law
potential, where the `temperature' fluctuates slowly. The model generally
yields a fat-tailed distribution of the price change. Specifically a Tsallis
distribution is obtained if the inverse temperature is -distributed,
which qualitatively agrees with intraday data of foreign exchange market. The
so-called `volatility', a quantity indicating the risk or activity in financial
markets, corresponds to the temperature of markets and its fluctuation leads to
intermittency.Comment: 9 pages including 2 figure
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