Deep Headline Generation for Clickbait Detection

Kai Shu, Suhang Wang, Thai Le, Dongwon Lee, Huan Liu
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引用次数: 49

Abstract

Clickbaits are catchy social posts or sensational headlines that attempt to lure readers to click. Clickbaits are pervasive on social media and can have significant negative impacts on both users and media ecosystems. For example, users may be misled to receive inaccurate information or fall into click-jacking attacks. Similarly, media platforms could lose readers' trust and revenues due to the prevalence of clickbaits. To computationally detect such clickbaits on social media using a supervised learning framework, one of the major obstacles is the lack of large-scale labeled training data, due to the high cost of labeling. With the recent advancements of deep generative models, to address this challenge, we propose to generate synthetic headlines with specific styles and explore their utilities to help improve clickbait detection. In particular, we propose to generate stylized headlines from original documents with style transfer. Furthermore, as it is non-trivial to generate stylized headlines due to several challenges such as the discrete nature of texts and the requirements of preserving semantic meaning of document while achieving style transfer, we propose a novel solution, named as Stylized Headline Generation (SHG), that can not only generate readable and realistic headlines to enlarge original training data, but also help improve the classification capacity of supervised learning. The experimental results on real-world datasets demonstrate the effectiveness of SHG in generating high-quality and high-utility headlines for clickbait detection.
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深度标题生成点击党检测
点击诱饵是指吸引人的社交帖子或耸人听闻的标题,试图吸引读者点击。点击诱饵在社交媒体上无处不在,对用户和媒体生态系统都有重大的负面影响。例如,用户可能会被误导接收到不准确的信息或遭受点击劫持攻击。同样,媒体平台可能会因为点击诱饵的盛行而失去读者的信任和收入。要使用监督学习框架在社交媒体上计算检测此类点击诱饵,主要障碍之一是由于标记成本高,缺乏大规模标记训练数据。随着深度生成模型的最新进展,为了应对这一挑战,我们建议生成具有特定风格的合成标题,并探索其实用程序,以帮助提高标题党检测。特别是,我们建议通过样式转移从原始文档生成风格化的标题。此外,由于文本的离散性和在实现风格迁移的同时保持文档语义的要求等诸多挑战,生成风格化标题并非易事,我们提出了一种新的解决方案,称为风格化标题生成(stylized Headline Generation, SHG),该解决方案不仅可以生成可读和真实的标题以扩大原始训练数据,而且有助于提高监督学习的分类能力。在真实数据集上的实验结果证明了SHG在为标题党检测生成高质量和高实用标题方面的有效性。
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