Improving Link Prediction in Intermittently Connected Wireless Networks by Considering Link and Proximity Stabilities
Mohamed-Haykel Zayani, Vincent Gauthier, Djamal Zeghlache

TL;DR
This paper introduces an enhanced tensor-based link prediction method for intermittently connected wireless networks by incorporating link and proximity stability measurements, leading to improved prediction accuracy and network performance.
Contribution
The paper proposes a novel entropy-based stability measurement integrated into tensor-based link prediction, improving accuracy over existing methods in human-centered wireless networks.
Findings
Stability measurements improve link prediction accuracy.
Entropy estimators effectively quantify link and proximity stability.
Proposed method outperforms existing prediction metrics.
Abstract
Several works have outlined the fact that the mobility in intermittently connected wireless networks is strongly governed by human behaviors as they are basically human-centered. It has been shown that the users' moves can be correlated and that the social ties shared by the users highly impact their mobility patterns and hence the network structure. Tracking these correlations and measuring the strength of social ties have led us to propose an efficient distributed tensor-based link prediction technique. In fact, we are convinced that the feedback provided by such a prediction mechanism can enhance communication protocols such as opportunistic routing protocols. In this paper, we aim to bring out that measuring the stabilities of the link and the proximity at two hops can improve the efficiency of the proposed link prediction technique. To quantify these two parameters, we propose an…
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