BigDataFr recommends: Network Filtering for Big Data: Triangulated Maximally Filtered Graph
‘We propose a network-filtering method, the Triangulated Maximally Filtered Graph (TMFG), that provides an approximate solution to the Weighted Maximal Planar Graph problem. The underlying idea of TMFG consists in building a triangulation that maximizes a score function associated with the amount of information retained by the network. TMFG uses as weights any arbitrary similarity measure to arrange data into a meaningful network structure that can be used for clustering, community detection and modeling. We demonstrate that TMFG performs comparably to the Planar Maximally Filtered Graph (PMFG) solution that we show has a guaranteed performance ratio of 1−1/e≃0.63… with respect to the optimal solution.
The method is fast, adaptable and scalable to very large datasets, it allows online updating and learning as new data can be inserted and deleted with combinations of local and non-local moves. TMFG permits readjustments of the network in consequence of changes in the strength of the similarity measure. The method is based on local topological moves and can therefore take advantage of parallel and GPUs computing. We discuss how this network-filtering method can be used intuitively and efficiently for big data studies and its significance from an information-theoretic perspective.’
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By Guido Previde Massara, T. Di Matteo, Tomaso Aste
Source : arxiv.org