一种基于机器学习的模糊假新闻分类新方法

Sanai Divadkar, Akshat Sahu, Shalini Puri
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引用次数: 0

摘要

数字化和技术的兴起大大扩大了在线新闻访问的人数,导致信息在社交渠道上的消费方式发生了重大转变。假新闻的模糊性传播是处理网络新闻获取的一个关键和有害的方面。这样的新闻应该被迅速识别,因为它会损害个人或组织的声誉,并有能力影响一个人的行为,这可能是对现代文明的潜在威胁。本文提出了一种基于决策树、随机森林和支持向量机的模糊假新闻分类模型。它首先对已知数据集进行预处理,提取其特征,然后向所有三个分类器提供训练。此外,分类器针对未知数据集进行了测试。实验是在收集的4万条记录中进行的,包括假新闻和真实新闻。实验结果表明,该方法在精密度、召回率、准确度等方面均取得了良好的效果。使用决策树得到了最好的结果,即精密度和召回率均为0.9977,准确率为99.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Approach to Ambiguous Fake News Classification through Machine Learning
The rise of digitalization and technology has substantially expanded the number of people with online news access, resulting in a significant shift in how information is consumed on social channels. The spread of fake news with ambiguity is a critical and harmful aspect of handling online news access. Such news should be identified quickly since it can harm an individual or organization's reputation and holds the capacity to influence one's actions which can be a potential threat to modern civilization. The proposed work in this paper presents an ambiguous fake news classification model using the decision tree, random forest, and SVM. It first pre-processed the known dataset, extracted its features, and then provided the training to all three classifiers. Further, the classifiers were tested against unknown datasets. The experiments were performed on the collected dataset of 40,000 records including fake and real news. It is observed that it achieved very promising experimental results of precision, recall, and accuracy. It obtained the best results with the decision tree, that is, 0.9977 for both precision and recall along with 99.67% accuracy.
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