基于Bi-LSTM的假新闻检测方法

Taminul Islam, M. Hosen, Akhi Mony, Md Musleh Uddin Hasan, Israt Jahan, Arindom Kundu
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引用次数: 8

摘要

近年来,社交媒体的使用呈爆炸式增长,人们可以与他人联系。自从Facebook和Twitter等平台出现以来,这些平台影响了我们的说话、思考和行为方式。由于假新闻的存在,这一问题对人们对内容的信心产生了负面影响。例如,假新闻是影响美国总统选举和其他网站结果的决定性因素。因为这些信息是如此有害,所以确保我们有必要的工具来检测和抵制它是至关重要的。我们使用双向长短期记忆(Bi-LSTM)来确定新闻是假的还是真实的,以展示这项研究。一些国外网站和报纸被用于数据收集。在创建并运行模型后,该工作在训练数据下实现了84%的模型准确率和62.0的F1-macro分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Proposed Bi-LSTM Method to Fake News Detection
Recent years have seen an explosion in social media usage, allowing people to connect with others. Since the appearance of platforms such as Facebook and Twitter, such platforms influence how we speak, think, and behave. This problem negatively undermines confidence in content because of the existence of fake news. For instance, false news was a determining factor in influencing the outcome of the U.S. presidential election and other sites. Because this information is so harmful, it is essential to make sure we have the necessary tools to detect and resist it. We applied Bidirectional Long Short-Term Memory (Bi-LSTM) to determine if the news is false or real in order to showcase this study. A number of foreign websites and newspapers were used for data collection. After creating & running the model, the work achieved 84% model accuracy and 62.0 F1-macro scores with training data.
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