LSTM Powered Identification of Clickbait Content on Entertainment and News Websites

Naman Bhoj, Adarsh Raj Dwivedi, Alpika Tripathi, Bishwajeet K. Pandey
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引用次数: 1

Abstract

Clickbait content on online platforms, is exaggerating content that doesn't deliver what it promises. The main motive of such content is to mislead the reader to “click” on them. These are widely responsible for delivering false information to the user and damaging their online experience. Many online creators deliberately use them to get more views and generate more revenue. In light of potential difficulties created by clickbait content, this paper aims to create a clickbait detection model for entertainment and news websites utilizing the power of the machine and deep learning models. Empirical results of our experiments indicate that LSTM models are best suited for identifying clickbait content containing text by achieving an accuracy of 95.031 % which is 1.138 times greater than the Random Forest and 1.709 times greater than the Naive Bayes model.
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LSTM支持的娱乐和新闻网站标题党内容的识别
网络平台上的标题党(Clickbait)内容夸大了无法兑现承诺的内容。这种内容的主要动机是误导读者“点击”它们。这些网站对向用户传递虚假信息和破坏他们的在线体验负有广泛责任。许多在线创作者故意使用它们来获得更多的观看量和更多的收入。鉴于标题党内容可能带来的困难,本文旨在利用机器和深度学习模型的力量,为娱乐和新闻网站创建一个标题党检测模型。实验结果表明,LSTM模型最适合识别包含文本的标题党内容,准确率达到95.031%,是随机森林模型的1.138倍,是朴素贝叶斯模型的1.709倍。
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