We introduce a technique to filter out complex data sets by extracting a subgraph of representative links. Such a filtering can be tuned up to any desired level by controlling the genus of the resulting graph, We show that this technique is especially suitable for correlation-based graphs, giving filtered graphs that preserve the hierarchical organization of the minimum spanning tree but containing a larger amount of information in their internal structure. In particular in the case of planar filtered graphs (genus equal to 0), triangular loops and four-element cliques are formed. The application of this filtering procedure to 100 stocks in the U.S. equity markets shows that such loops and cliques have important and significant: relationshi...
Network modeling of biological systems is a powerful tool for analysis of high-throughput datasets b...
In many complex systems one observes the formation of medium-level structures, whose detection could...
Biological networks are fast becoming a popular tool for modeling high-throughput data, especially d...
We introduce a technique to filter out complex data sets by extracting a subgraph of representative ...
The hierarchical structure of correlation matrices in complex systems is studied by extracting a sig...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
We introduce a technique that is capable to filter out information from complex systems, by mapping...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
One of the main goals in the field of complex systems is the selection and extraction of relevant an...
There are many real-world systems consisting of interacting entities that can be modeled by the powe...
Financial markets can be represented as complex networks of agents connected by different intensitie...
When the amount of information in visualization becomes large enough, users can not perceive all ele...
The increasing availability of data demands for techniques to filter information in large complex ne...
This report presents a generic filtering scheme, based on the graph description of global constraint...
Network modeling of biological systems is a powerful tool for analysis of high-throughput datasets b...
In many complex systems one observes the formation of medium-level structures, whose detection could...
Biological networks are fast becoming a popular tool for modeling high-throughput data, especially d...
We introduce a technique to filter out complex data sets by extracting a subgraph of representative ...
The hierarchical structure of correlation matrices in complex systems is studied by extracting a sig...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
We introduce a technique that is capable to filter out information from complex systems, by mapping...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
One of the main goals in the field of complex systems is the selection and extraction of relevant an...
There are many real-world systems consisting of interacting entities that can be modeled by the powe...
Financial markets can be represented as complex networks of agents connected by different intensitie...
When the amount of information in visualization becomes large enough, users can not perceive all ele...
The increasing availability of data demands for techniques to filter information in large complex ne...
This report presents a generic filtering scheme, based on the graph description of global constraint...
Network modeling of biological systems is a powerful tool for analysis of high-throughput datasets b...
In many complex systems one observes the formation of medium-level structures, whose detection could...
Biological networks are fast becoming a popular tool for modeling high-throughput data, especially d...