The mesoscopic organization of complex systems, from financial markets to the brain, is an intermediate between the microscopic dynamics of individual units (stocks or neurons, in the mentioned cases), and the macroscopic dynamics of the system as a whole. The organization is determined by "communities" of units whose dynamics, represented by time series of activity, is more strongly correlated internally than with the rest of the system. Recent studies have shown that the binary projections of various financial and neural time series exhibit nontrivial dynamical features that resemble those of the original data. This implies that a significant piece of information is encoded into the binary projection (i.e. the sign) of such increments. He...
In this paper, we study data from financial markets, using the normalised Mutual Information Rate. W...
Forty stock market indices of the world with the highest GDP has been studied. We show each market i...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
A challenging problem in the study of complex systems is that of resolving, without prior informatio...
Technological advances have provided scientists with large high-dimensional datasets that describe t...
The financial market is an example of a complex system characterized by a highly intricate organizat...
Cryptocurrencies have become a prominent investment tool recently with increasing interest in them a...
The statistical signatures of the 'credit crunch' financial crisis that unfolded between 2008 and 20...
Human cognition is fundamentally a network phenomenon: our thoughts, sense of self, and our other br...
We study the cluster dynamics of multichannel (multivariate) time series by representing their corre...
We consider the problem of determining whether the community structure found by a clustering algorit...
Many systems studied in the biological, physical, and social sciences are composed of multiple inter...
We investigate the emergence of a structure in the correlation matrix of assets' returns as the time...
In this paper we consider financial time series from U.S. Fixed Income Market, S&P500, DJ Eurostoxx ...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
In this paper, we study data from financial markets, using the normalised Mutual Information Rate. W...
Forty stock market indices of the world with the highest GDP has been studied. We show each market i...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
A challenging problem in the study of complex systems is that of resolving, without prior informatio...
Technological advances have provided scientists with large high-dimensional datasets that describe t...
The financial market is an example of a complex system characterized by a highly intricate organizat...
Cryptocurrencies have become a prominent investment tool recently with increasing interest in them a...
The statistical signatures of the 'credit crunch' financial crisis that unfolded between 2008 and 20...
Human cognition is fundamentally a network phenomenon: our thoughts, sense of self, and our other br...
We study the cluster dynamics of multichannel (multivariate) time series by representing their corre...
We consider the problem of determining whether the community structure found by a clustering algorit...
Many systems studied in the biological, physical, and social sciences are composed of multiple inter...
We investigate the emergence of a structure in the correlation matrix of assets' returns as the time...
In this paper we consider financial time series from U.S. Fixed Income Market, S&P500, DJ Eurostoxx ...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
In this paper, we study data from financial markets, using the normalised Mutual Information Rate. W...
Forty stock market indices of the world with the highest GDP has been studied. We show each market i...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...