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      DANI: Fast Diffusion Aware Network Inference with Preserving Topological Structure Property

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          Abstract

          The fast growth of social networks and their data access limitations in recent years has led to increasing difficulty in obtaining the complete topology of these networks. However, diffusion information over these networks is available, and many algorithms have been proposed to infer the underlying networks using this information. The previously proposed algorithms only focus on inferring more links and ignore preserving the critical topological characteristics of the underlying social networks. In this paper, we propose a novel method called DANI to infer the underlying network while preserving its structural properties. It is based on the Markov transition matrix derived from time series cascades, as well as the node-node similarity that can be observed in the cascade behavior from a structural point of view. In addition, the presented method has linear time complexity (increases linearly with the number of nodes, number of cascades, and square of the average length of cascades), and its distributed version in the MapReduce framework is also scalable. We applied the proposed approach to both real and synthetic networks. The experimental results showed that DANI has higher accuracy and lower run time while maintaining structural properties, including modular structure, degree distribution, connected components, density, and clustering coefficients, than well-known network inference methods.

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          Author and article information

          Journal
          02 October 2023
          Article
          2310.01696
          3c9c9174-ea8a-4849-b8db-744de21b59ee

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          arXiv admin note: substantial text overlap with arXiv:1706.00941
          cs.SI cs.CY cs.IR cs.LG

          Social & Information networks,Applied computer science,Information & Library science,Artificial intelligence

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