179 research outputs found
Complex Systems: From Nuclear Physics to Financial Markets
We compare correlations and coherent structures in nuclei and financial
markets. In the nuclear physics part we review giant resonances which can be
interpreted as a coherent structure embedded in chaos. With similar methods we
investigate the financial empirical correlation matrix of the DAX and Dow
Jones. We will show, that if the time-zone delay is properly accounted for, the
two distinct markets largely merge into one. This is reflected by the largest
eigenvalue that develops a gap relative to the remaining, chaotic eigenvalues.
By extending investigations of the specific character of financial collectivity
we also discuss the criticality-analog phenomenon of the financial
log-periodicity and show specific examples.Comment: 6 pages, 10 figures, elsarticle clas
Decomposing the stock market intraday dynamics
The correlation matrix formalism is used to study temporal aspects of the
stock market evolution. This formalism allows to decompose the financial
dynamics into noise as well as into some coherent repeatable intraday
structures. The present study is based on the high-frequency Deutsche
Aktienindex (DAX) data over the time period between November 1997 and September
1999, and makes use of both, the corresponding returns as well as volatility
variations. One principal conclusion is that a bulk of the stock market
dynamics is governed by the uncorrelated noise-like processes. There exists
however a small number of components of coherent short term repeatable
structures in fluctuations that may generate some memory effects seen in the
standard autocorrelation function analysis. Laws that govern fluctuations
associated with those various components are different, which indicates an
extremely complex character of the financial fluctuations.Comment: 15 pages, 13 PostScript figure
Alternation of different fluctuation regimes in the stock market dynamics
Based on the tick-by-tick stock prices from the German and American stock
markets, we study the statistical properties of the distribution of the
individual stocks and the index returns in highly collective and noisy
intervals of trading, separately. We show that periods characterized by the
strong inter-stock couplings can be associated with the distributions of index
fluctuations which reveal more pronounced tails than in the case of weaker
couplings in the market. During periods of strong correlations in the German
market these distributions can even reveal an apparent L\'evy-stable component.Comment: 19 page
Time scales involved in market emergence
In addressing the question of the time scales characteristic for the market
formation, we analyze high frequency tick-by-tick data from the NYSE and from
the German market. By using returns on various time scales ranging from seconds
or minutes up to two days, we compare magnitude of the largest eigenvalue of
the correlation matrix for the same set of securities but for different time
scales. For various sets of stocks of different capitalization (and the average
trading frequency), we observe a significant elevation of the largest
eigenvalue with increasing time scale. Our results from the correlation matrix
study go in parallel with the so-called Epps effect. There is no unique
explanation of this effect and it seems that many different factors play a role
here. One of such factors is randomness in transaction moments for different
stocks. Another interesting conclusion to be drawn from our results is that in
the contemporary markets the emergence of significant correlations occurs on
time scales much smaller than in the more distant history.Comment: 13 page
Identifying Complexity by Means of Matrices
Complexity is an interdisciplinary concept which, first of all, addresses the
question of how order emerges out of randomness. For many reasons matrices
provide a very practical and powerful tool in approaching and quantifying the
related characteristics. Based on several natural complex dynamical systems,
like the strongly interacting quantum many-body systems, the human brain and
the financial markets, by relating empirical observations to the random matrix
theory and quantifying deviations in term of a reduced dimensionality, we
present arguments in favour of the statement that complexity is a pheomenon at
the edge between collectivity and chaos.Comment: Talk given by S. Drozdz at "Horizons in Complex Systems", Messina,
December 5-8, 200
Quantifying dynamics of the financial correlations
A novel application of the correlation matrix formalism to study dynamics of
the financial evolution is presented. This formalism allows to quantify the
memory effects as well as some potential repeatable intradaily structures in
the financial time-series. The present study is based on the high-frequency
Deutsche Aktienindex (DAX) data over the time-period between November 1997 and
December 1999 and demonstrates a power of the method. In this way two
significant new aspects of the DAX evolution are identified: (i) the memory
effects turn out to be sizably shorter than what the standard autocorrelation
function analysis seems to indicate and (ii) there exist short term repeatable
structures in fluctuations that are governed by a distinct dynamics. The former
of these results may provide an argument in favour of the market efficiency
while the later one may indicate origin of the difficulty in reaching a
Gaussian limit, expected from the central limit theorem, in the distribution of
returns on longer time-horizons.Comment: 10 pages, 7 PostScript figures, talk presented by the first Author at
the NATO ARW on Econophysics, Prague, February 8-10, 2001; to be published in
proceedings (Physica A
Wavelet versus Detrended Fluctuation Analysis of multifractal structures
We perform a comparative study of applicability of the Multifractal Detrended
Fluctuation Analysis (MFDFA) and the Wavelet Transform Modulus Maxima (WTMM)
method in proper detecting of mono- and multifractal character of data. We
quantify the performance of both methods by using different sorts of artificial
signals generated according to a few well-known exactly soluble mathematical
models: monofractal fractional Brownian motion, bifractal Levy flights, and
different sorts of multifractal binomial cascades. Our results show that in
majority of situations in which one does not know a priori the fractal
properties of a process, choosing MFDFA should be recommended. In particular,
WTMM gives biased outcomes for the fractional Brownian motion with different
values of Hurst exponent, indicating spurious multifractality. In some cases
WTMM can also give different results if one applies different wavelets. We do
not exclude using WTMM in real data analysis, but it occurs that while one may
apply MFDFA in a more automatic fashion, WTMM has to be applied with care. In
the second part of our work, we perform an analogous analysis on empirical data
coming from the American and from the German stock market. For this data both
methods detect rich multifractality in terms of broad f(alpha), but MFDFA
suggests that this multifractality is poorer than in the case of WTMM.Comment: substantially extended version, to appear in Phys.Rev.
Effect of detrending on multifractal characteristics
Different variants of MFDFA technique are applied in order to investigate
various (artificial and real-world) time series. Our analysis shows that the
calculated singularity spectra are very sensitive to the order of the
detrending polynomial used within the MFDFA method. The relation between the
width of the multifractal spectrum (as well as the Hurst exponent) and the
order of the polynomial used in calculation is evident. Furthermore, type of
this relation itself depends on the kind of analyzed signal. Therefore, such an
analysis can give us some extra information about the correlative structure of
the time series being studied.Comment: Presented by P. O\'swi\k{e}cimka at FENS2012 conference, 17 pages, 9
figure
Spectral Decorrelation of Nuclear Levels in the Presence of Continuum Decay
The fluctuation properties of nuclear giant resonance spectra are studied in
the presence of continuum decay. The subspace of quasi-bound states is
specified by one-particle one-hole and two-particle two-hole excitations and
the continuum coupling is generated by a scattering ensemble. It is found that,
with increasing number of open channels, the real parts of the complex
eigenvalues quickly decorrelate. This appears to be related to the transition
from power-law to exponential time behavior of the survival probability of an
initially non-stationary state.Comment: 10 Pages, REVTEX, 4 PostScript figure
The foreign exchange market: return distributions, multifractality, anomalous multifractality and Epps effect
We present a systematic study of various statistical characteristics of
high-frequency returns from the foreign exchange market. This study is based on
six exchange rates forming two triangles: EUR-GBP-USD and GBP-CHF-JPY. It is
shown that the exchange rate return fluctuations for all the pairs considered
are well described by the nonextensive statistics in terms of q-Gaussians.
There exist some small quantitative variations in the nonextensivity
q-parameter values for different exchange rates and this can be related to the
importance of a given exchange rate in the world's currency trade. Temporal
correlations organize the series of returns such that they develop the
multifractal characteristics for all the exchange rates with a varying degree
of symmetry of the singularity spectrum f(alpha) however. The most symmetric
spectrum is identified for the GBP/USD. We also form time series of triangular
residual returns and find that the distributions of their fluctuations develop
disproportionately heavier tails as compared to small fluctuations which
excludes description in terms of q-Gaussians. The multifractal characteristics
for these residual returns reveal such anomalous properties like negative
singularity exponents and even negative singularity spectra. Such anomalous
multifractal measures have so far been considered in the literature in
connection with the diffusion limited aggregation and with turbulence. We find
that market inefficiency on short time scales leads to the occurrence of the
Epps effect on much longer time scales. Although the currency market is much
more liquid than the stock markets and it has much larger transaction
frequency, the building-up of correlations takes up to several hours - time
that does not differ much from what is observed in the stock markets. This may
suggest that non-synchronicity of transactions is not the unique source of the
observed effect
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