A Comparative Study on Clickbait Detection using Machine Learning Based Methods

Kapil Yadav, Nipun Bansal
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Abstract

Clickbait is a type of providing false content, intended to attract a variety of users and get engagement and monetary benefits. It makes users curious to click the link and follow the content in various formats like audio, video, text, and images. Clickbait detection is a critical and difficult task. Many researchers have proposed various techniques using deep learning techniques and machine learning techniques like Logistic Regres- sion, Linear Support Vector Machine, Adaboost, Multilayer Per- ceptron, Random Forest, Convolution Neural Networks(CNN), and Recurrent Convolutional Neural Networks (RCNN). To give a clear overview of the efficient algorithms, we went through some existing studies from 2016–2022, which proposed various clickbait detection methods. This review gives an exhaustive study of existing methods and also suggests some recommendations for further enhancements to be done by combining the various deep learning techniques and machine learning techniques.
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基于机器学习的标题党检测方法比较研究
标题党是一种提供虚假内容的类型,旨在吸引各种用户,获得参与和金钱利益。它让用户好奇地点击链接,并关注各种格式的内容,如音频、视频、文本和图像。标题党检测是一项关键而艰巨的任务。许多研究人员提出了使用深度学习技术和机器学习技术的各种技术,如逻辑回归、线性支持向量机、Adaboost、多层Per- ceptron、随机森林、卷积神经网络(CNN)和循环卷积神经网络(RCNN)。为了清楚地概述高效算法,我们回顾了2016-2022年的一些现有研究,这些研究提出了各种标题党检测方法。这篇综述对现有方法进行了详尽的研究,并提出了一些建议,通过结合各种深度学习技术和机器学习技术来进一步增强。
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