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arxiv: 1801.03571 · v2 · pith:A6XRXEUZnew · submitted 2018-01-10 · ❄️ cond-mat.dis-nn · physics.soc-ph

Spiking label propagation for community detection

classification ❄️ cond-mat.dis-nn physics.soc-ph
keywords communitydetectionincorporateslabelmethodpropagationspikingvertices
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In this paper we present results from a method of community detection using label propagation in undirected, unweighted graphs which incorporates elements of neural computing and spike-based data. Using a fully connected, edge-weighted system of spiking neurons driven by external currents, we generate spike responses that are decoded into a binary signal. The similarity between pairs of signals is quantified using a Hamming-distance based metric and is used to classify vertices into communities. We test our approach on a set of graph instances, each with 128 vertices and either homogeneous or heterogeneous community size distributions. We present our method as a candidate for a split-computing workflow that incorporates neuromorphic hardware and does not require extensive pre-training of network parameters.

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