Tensor-Based Link Prediction in Intermittently Connected Wireless Networks
Mohamed-Haykel Zayani, Vincent Gauthier, Ines Slama, Djamal Zeghlache

TL;DR
This paper introduces a tensor-based method for predicting future links in intermittently connected wireless networks by analyzing mobility patterns and social behaviors, demonstrating improved accuracy over existing methods.
Contribution
It presents a novel temporal link prediction technique using tensor analysis and Katz measure, validated on real and synthetic mobility traces for DTN networks.
Findings
Effective in predicting links in DTN scenarios
Works with distributed local information
Outperforms existing similarity-based approaches
Abstract
Through several studies, it has been highlighted that mobility patterns in mobile networks are driven by human behaviors. This effect has been particularly observed in intermittently connected networks like DTN (Delay Tolerant Networks). Given that common social intentions generate similar human behavior, it is relevant to exploit this knowledge in the network protocols design, e.g. to identify the closeness degree between two nodes. In this paper, we propose a temporal link prediction technique for DTN which quantifies the behavior similarity between each pair of nodes and makes use of it to predict future links. Our prediction method keeps track of the spatio-temporal aspects of nodes behaviors organized as a third-order tensor that aims to records the evolution of the network topology. After collapsing the tensor information, we compute the degree of similarity for each pair of nodes…
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Taxonomy
TopicsOpportunistic and Delay-Tolerant Networks · Human Mobility and Location-Based Analysis · Complex Network Analysis Techniques
