Clickbait detection in Hebrew

Q2 Arts and Humanities
Talya Natanya, Chaya Liebeskind
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引用次数: 0

Abstract

Abstract The prevalence of sensationalized headlines and deceptive narratives in online content has prompted the need for effective clickbait detection methods. This study delves into the nuances of clickbait in Hebrew, scrutinizing diverse features such as linguistic and structural features, and exploring various types of clickbait in Hebrew, a language that has received relatively limited attention in this context. Utilizing a range of machine learning models, this research aims to identify linguistic features that are instrumental in accurately classifying Hebrew headlines as either clickbait or non-clickbait. The findings underscore the critical role of linguistic attributes in enhancing the performance of the classification model. Notably, the employment of a machine learning model resulted in an impressive accuracy of 0.87 in clickbait detection. Moving forward, our research plan encompasses dataset expansion through the best machine learning model assisted labelling, with the objective of optimizing deep learning models for even more robust outcomes. This study not only advances clickbait detection in the realm of Hebrew but also emphasizes the fundamental importance of linguistic features in the accurate classification of clickbait.
希伯来语的点击诱饵检测
网络内容中耸人听闻的标题和欺骗性叙述的盛行促使人们需要有效的标题党检测方法。本研究深入研究了希伯来语中标题党(clickbait)的细微差别,仔细研究了语言和结构特征等不同特征,并探索了希伯来语中各种类型的标题党(clickbait),而希伯来语在这一语境中受到的关注相对有限。利用一系列机器学习模型,本研究旨在识别语言特征,这些特征有助于准确地将希伯来语标题分类为标题党或非标题党。研究结果强调了语言属性在提高分类模型性能方面的关键作用。值得注意的是,机器学习模型的使用使点击诱饵检测的准确率达到了令人印象深刻的0.87。展望未来,我们的研究计划包括通过最好的机器学习模型辅助标记来扩展数据集,目标是优化深度学习模型以获得更强大的结果。本研究不仅推动了标题党在希伯来语领域的检测,而且强调了语言特征对标题党准确分类的根本重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Lodz Papers in Pragmatics
Lodz Papers in Pragmatics Arts and Humanities-Language and Linguistics
CiteScore
1.10
自引率
0.00%
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