用区块链、声誉证明和霍夫丁约束连接立场与假新闻检测之间的联系

Ilhem Salah, Khaled Jouini, Cyril-Alexandre Pachon, Ouajdi Korbaa
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引用次数: 0

摘要

打击假新闻是一项至关重要的工作,但这项任务的复杂性要求我们采取超越单一技术解决方案的多方面方法。传统的事实核查通常是中心化的,依赖于人力,面临着可扩展性和偏见的挑战。本文介绍了一种基于区块链的新型框架,该框架利用群众的智慧进行无权威、可扩展、自动化和声誉驱动的事实核查。在该框架中,立场检测是一种自动的意见检索手段,而 "声誉证明 "共识机制则营造了一种环境,使声誉良好的贡献者在塑造新闻可信度方面具有更大的影响力。同时,Hoeffding 约束用于使系统适应不断变化的环境。与基于机器学习的方法相比,我们的框架限制了定期重新训练以更新模型对世界的冻结知识的需求。在真实世界数据上进行的实验研究表明,所提出的框架为打击虚假新闻的传播提供了一种前景广阔的高效解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Connecting the dots between stance and fake news detection with blockchain, proof of reputation, and the Hoeffding bound

Connecting the dots between stance and fake news detection with blockchain, proof of reputation, and the Hoeffding bound

Combating fake news is a crucial endeavor, yet the complexity of the task requires multifaceted approaches that transcend singular technological solutions. Traditional fact-checking, often centralized and human-dependent, faces scalability and bias challenges. This paper introduces a novel blockchain-based framework that leverages the wisdom of the crowd for an authority-free, scalable, automated and reputation-driven fact-checking. Within this framework, stance detection acts as an automated means of opinion retrieval, while the Proof of Reputation consensus mechanism fosters an environment where reputable contributors have greater influence in shaping news credibility. Concurrently, the Hoeffding bound is used to allow the system to adapt to evolving contexts. In contrast to Machine Learning—based approaches, our framework limits the need for periodic retraining to update a model’s frozen knowledge of the world. The experimental study conducted on real-world data demonstrates that the proposed framework offers a promising and efficient solution to combat the spread of fake news.

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