论文标题

信任:在社交互联网中迈向值得信赖的物体分类

Trust-SIoT: Towards Trustworthy Object Classification in the Social Internet of Things

论文作者

Sagar, Subhash, Mahmood, Adnan, Wang, Kai, Sheng, Quan Z., Zhang, Wei Emma

论文摘要

社交互联网(Siot)的有希望的范式的最新出现是由于智能融合社交网络概念与物联网(IoT)对象(也称为“事物”)的智能合并,以试图揭示网络发现,导航性和服务组成的挑战。这是通过促进物联网对象相互社交的,即类似于人类之间的社会互动来实现的。谨慎关注的一个基本问题是,随着时间的流逝,并保持了这些物联网对象之间的可信赖关系。因此,SIOT的信任框架必须包括对象对象的交互,社会关系的各个方面,可靠的建议等。但是,现有文献仅通过主要依靠管理输入和输出之间线性关系的传统方法来集中于信任的某些方面。在本文中,设想一个基于人工神经网络的信任框架信任框架,以确定输入与输出之间复杂的非线性关系,以对可信赖的对象进行分类。此外,Trust-Siot旨在通过整合当前和过去的交互,对象的可靠性和仁慈,可靠的建议以及使用知识图嵌入来捕获许多关键信任指标,即直接信任,即直接信任。最后,我们进行了广泛的实验,以评估两个现实世界数据集对信任效率的最先进的启发式方法的性能。结果表明,信任siot达到了更高的F1,MAE和MSE得分较低。

The recent emergence of the promising paradigm of the Social Internet of Things (SIoT) is a result of an intelligent amalgamation of the social networking concepts with the Internet of Things (IoT) objects (also referred to as "things") in an attempt to unravel the challenges of network discovery, navigability, and service composition. This is realized by facilitating the IoT objects to socialize with one another, i.e., similar to the social interactions amongst the human beings. A fundamental issue that mandates careful attention is to thus establish, and over time, maintain trustworthy relationships amongst these IoT objects. Therefore, a trust framework for SIoT must include object-object interactions, the aspects of social relationships, credible recommendations, etc., however, the existing literature has only focused on some aspects of trust by primarily relying on the conventional approaches that govern linear relationships between input and output. In this paper, an artificial neural network-based trust framework, Trust-SIoT, has been envisaged for identifying the complex non-linear relationships between input and output in a bid to classify the trustworthy objects. Moreover, Trust-SIoT has been designed for capturing a number of key trust metrics as input, i.e., direct trust by integrating both current and past interactions, reliability, and benevolence of an object, credible recommendations, and the degree of relationship by employing a knowledge graph embedding. Finally, we have performed extensive experiments to evaluate the performance of Trust-SIoT vis-a-vis state-of-the-art heuristics on two real-world datasets. The results demonstrate that Trust-SIoT achieves a higher F1 and lower MAE and MSE scores.

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