In this paper, we propose a stacked neural network model for finding out the largest quasi-complete module (core) in weighted graphs.
Finding quasi core with simulated stacked neural networks
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A quasi-complete subgraph or quasi-clique is an almost clique in a graph (unweighted in general). The concept of quasi-cliques was first addressed by Abello et ...
In this paper, we propose a stacked neural network model for finding out the largest quasi-complete module (core) in weighted graphs. We show the effectiveness ...
Finding quasi core with simulated stacked neural networks. Malay ... we propose a stacked neural network model for finding out the largest quasi-complete.
Finding quasi core with simulated stacked neural networks · List of references · Publications that cite this publication.
In this paper, we propose a stacked neural network model for finding out the largest quasi-complete module (core) in weighted graphs. We show the effectiveness ...
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