A Matrix Factorization Model for Hellinger-based Trust Management in Social Internet of Things
Soroush Aalibagi, Hamidreza Mahyar, Ali Movaghar, and H. Eugene, Stanley

TL;DR
This paper introduces a novel trust management mechanism for Social Internet of Things that uses a matrix factorization model combined with Hellinger distance-based social trust to predict reliable service providers, improving accuracy and resilience against attacks.
Contribution
The paper proposes a new trust prediction method integrating matrix factorization with Hellinger-based social trust modeling in SIoT, addressing data sparsity and cold start issues.
Findings
Outperforms existing trust prediction methods in accuracy.
Enhances resilience against network attacks.
Effectively predicts trustworthy service providers.
Abstract
The Social Internet of Things (SIoT), integration of the Internet of Things and Social Networks paradigms, has been introduced to build a network of smart nodes that are capable of establishing social links. In order to deal with misbehaving service provider nodes, service requestor nodes must evaluate their trustworthiness levels. In this paper, we propose a novel trust management mechanism in the SIoT to predict the most reliable service providers for each service requestor, which leads to reduce the risk of being exposed to malicious nodes. We model the SIoT with a flexible bipartite graph (containing two sets of nodes: service providers and service requestors), then build a social network among the service requestor nodes, using the Hellinger distance. Afterward, we develop a social trust model using nodes' centrality and similarity measures to extract trust behaviors among the…
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