2017
DOI: 10.1016/j.neunet.2017.03.010
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A bag-of-paths framework for network data analysis

Abstract: This work develops a generic framework, called the bag-of-paths (BoP), for link and network data analysis. The central idea is to assign a probability distribution on the set of all paths in a network. More precisely, a Gibbs-Boltzmann distribution is defined over a bag of paths in a network, that is, on a representation that considers all paths independently. We show that, under this distribution, the probability of drawing a path connecting two nodes can easily be computed in closed form by simple matrix inv… Show more

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Cited by 34 publications
(181 citation statements)
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References 76 publications
(180 reference statements)
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“…Françoisse et al . also reach similar results with a different path-weighting scheme in [48]. Estrada, Higham, and Hatano [25] calculate a version of betweenness centrality by assigning lower weights to longer paths.The remainder of this paper is organized as follows.…”
supporting
confidence: 53%
“…Françoisse et al . also reach similar results with a different path-weighting scheme in [48]. Estrada, Higham, and Hatano [25] calculate a version of betweenness centrality by assigning lower weights to longer paths.The remainder of this paper is organized as follows.…”
supporting
confidence: 53%
“…This step provides a fundamental starting point for interpreting the network and a powerful tool for further exploration of its characteristics using standard multivariate statistics or machine learning methods. To explore the structure and dynamics of the network, we start by modeling the interactions among nodes based on the concept of randomized shortest path (RSP) dissimilarity (Kivimäki et al, 2014;Yen et al, 2008;Saerens et al, 2009;Francoisse et al, 2017). The calculation involves the search for the optimal path that minimizes the expected cost obtained by imposing the constraint that the relative entropy has a constant value spread throughout the network.…”
Section: Approachmentioning
confidence: 99%
“…The parameter β, which controls the distribution, plays the role of the inversetemperature in thermodynamics. It is shown (Francoisse et al, 2017) that, under the Gibbs-Boltzmann distribution, the probability of drawing a path connecting two nodes can easily be computed in closed form by simple matrix inversion. Moreover, in contrast to common distance measures, such as the Shortest Path (SP) (the length of the shortest paths between nodes), and the Commute Time (CT) distance (Akamatsu, 1996) (the expected length of paths that a random walker moving along the edges of the graph takes from one node to the other and back (Kivimäki et al, 2014)), RSP captures the global structure of the network.…”
Section: Approachmentioning
confidence: 99%
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