Tumminello, MAste, TomasoDi Matteo, TizianaMantegna, R N2015-12-130027-8424http://hdl.handle.net/1885/79699We 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: relationships with the market structure and properties.Keywords: algorithm; article; cluster analysis; correlation analysis; mathematical analysis; mathematical model; priority journal Cluster analysis; Complex networks; Correlation analysisA tool for filtering information in complex systems200510.1073/pnas.05002981022015-12-11