FedBully:一种使用句子编码器的跨设备联邦方法,用于支持隐私的网络欺凌检测

Q3 Computer Science
Nisha P. Shetty, Balachandra Muniyal, Aman Priyanshu, Vedant Rishi Das
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引用次数: 1

摘要

网络欺凌已成为网络平台最紧迫的问题之一,使个人处于危险之中,并引起了公众的严重关注。最近的研究表明,心理健康状况下降与网络欺凌之间存在显著相关性。自动检测为这个问题提供了一个很好的解决方案;但是,在数据收集期间,客户机数据的敏感性成为一个问题,因此,访问可能受到限制。本文演示了FedBully,一种使用句子编码器进行特征提取的网络欺凌检测的联邦方法。本文介绍了安全聚合的概念,以确保跨设备学习系统中的客户端隐私。通过综合实验研究了最优超参数,提出了一种计算成本低、通信成本低的网络。实验显示,仅使用密集网络对IID数据集上的句子嵌入进行微调,分类AUC(曲线下面积)高达93%,非IID数据集上的AUC高达91%,其中IID指的是独立和同分布的数据。分析还表明,数据独立性深刻影响了网络性能,非IID和IID之间的AUC平均下降了5.1%。对客户端网络规模和安全聚合协议进行了丰富而广泛的研究,证明了该模型的鲁棒性和实用性。提出的新方法为训练跨设备网络欺凌检测器提供了有效和实用的解决方案,同时确保客户端隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedBully: A Cross-Device Federated Approach for Privacy Enabled Cyber Bullying Detection using Sentence Encoders
Cyberbullying has become one of the most pressing concerns for online platforms, putting individuals at risk and raising severe public concerns. Recent studies have shown a significant correlation between declining mental health and cyberbullying. Automated detection offers a great solution to this problem; however, the sensitivity of client-data becomes a concern during data collection, and as such, access may be restricted. This paper demonstrates FedBully, a federated approach for cyberbullying detection using sentence encoders for feature extraction. This paper introduces concepts of secure aggregation to ensure client privacy in a cross-device learning system. Optimal hyper-parameters were studied through comprehensive experiments, and a computationally and communicationally inexpensive network is proposed. Experiments reveal promising results with up to 93% classification AUC (Area Under the Curve) using only dense networks to fine-tune sentence embeddings on IID datasets and 91% AUC on non-IID datasets, where IID refers to Independent and Identically Distributed data. The analysis also shows that data independence profoundly impacts network performance, with AUC decreasing by a mean of 5.1% between Non-IID and IID. A rich and extensive study has also been performed on client network size and secure aggregation protocols, which prove the robustness and practicality of the proposed model. The novel approach presented offers an efficient and practical solution to training a cross-device cyberbullying detector while ensuring client-privacy.
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来源期刊
Journal of Cyber Security and Mobility
Journal of Cyber Security and Mobility Computer Science-Computer Networks and Communications
CiteScore
2.30
自引率
0.00%
发文量
10
期刊介绍: Journal of Cyber Security and Mobility is an international, open-access, peer reviewed journal publishing original research, review/survey, and tutorial papers on all cyber security fields including information, computer & network security, cryptography, digital forensics etc. but also interdisciplinary articles that cover privacy, ethical, legal, economical aspects of cyber security or emerging solutions drawn from other branches of science, for example, nature-inspired. The journal aims at becoming an international source of innovation and an essential reading for IT security professionals around the world by providing an in-depth and holistic view on all security spectrum and solutions ranging from practical to theoretical. Its goal is to bring together researchers and practitioners dealing with the diverse fields of cybersecurity and to cover topics that are equally valuable for professionals as well as for those new in the field from all sectors industry, commerce and academia. This journal covers diverse security issues in cyber space and solutions thereof. As cyber space has moved towards the wireless/mobile world, issues in wireless/mobile communications and those involving mobility aspects will also be published.
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