基于机器学习的社交物联网虚假信息检测

Esmeralda Kazia
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引用次数: 0

摘要

通过利用对象关系和本地可导航性,社交物联网(SIoT)是新兴的范例之一,可以解决传统物联网的技术挑战。由于这种模式能够将传统物联网与社交媒体相结合,因此有可能创建比使用传统物联网基础设施创建的智能对象和服务具有更大的效用。近年来,学者们对SIoT产生了兴趣,导致了大量研究在此背景下提供服务和技术的各种机制的工作。在这方面,我们提出了涵盖SIoT重要方面的近期研究的全面回顾。在本研究中,我们为几种机器学习范式的功能提供了详细的理由,并提供了迄今为止未经检查的与错误数据和其他社会物联网相关的问题的实际应用。首先,我们对假新闻检测方法进行了分类,并对这些技术进行了分析。其次,详细研究了检测假新闻的潜在用途,包括如何将其应用于虚假个人资料检测、交通管理、欺凌检测等领域。我们还建议对机器学习算法在检测虚假新闻和干预社交网络方面的可能性进行详细审查。在本文中,我们介绍了假新闻检测方法的类别,并对这些方法进行了比较。之后,从假账号检测、bot检测、霸凌检测、SIoT的安全与隐私等方面对假新闻检测的应用前景进行了广泛的讨论。此外,本文还讨论了机器学习方法在SIoT网络中用于假新闻检测和干预的潜力,以及最先进的挑战、机遇和未来的搜索前景。本文旨在帮助读者和研究人员解释不同机器学习范式的动机和作用,为他们提供一个全面的认识到迄今为止尚未探索的与虚假信息和其他SIoT网络场景相关的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for False Information Detection in Social Internet of Things
By capitalizing on object relationships and local navigability, the Social Internet of Things (SIoT) is one of the burgeoning paradigms that could solve the technical challenges of conventional IoT. Because of this paradigm's capacity to combine conventional IoT with social media, it is possible to create smart objects and services with greater utility than those created using conventional IoT infrastructures. In recent years, scholars have become interested in SIoT, leading to a plethora of works examining various mechanisms for providing services and technologies within this context. In this vein, we present a comprehensive review of recent research covering important aspects of SIoT. In this research, we give a detailed justification for the function of several machine learning paradigms and provide a practical application of hitherto unexamined concerns relating to erroneous data and other social IoT. First, we give a classification of false news detection approaches and an analysis of these techniques. Second, the potential uses for detecting fake news are examined at length, including how it might be applied to the areas of fake profile detection, traffic management, bullying detection, etc. We also suggested a detailed review of the possibilities of machine learning algorithms for detecting bogus news and intervening in social networks. In our paper, we introduce categories of fake news detection methods providing a comparison between these methods. After that, the promising applications for false news detection is extensively discussed in terms of fake account detection, bot detection, bullying detection, and security and privacy of SIoT. Also, the paper contains a discussion of the potential of machine learning approaches for fake news detection and interventions in SIoT networks along with the state-of-the-art challenges, opportunities, and future search prospects. This article seeks for aiding the readers and researchers in explaining the motive and role of the different machine learning paradigms to offer them a comprehensive realization for so far unexplored issues related to false information and other scenarios of SIoT networks.
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