Political Fake News Detection from Different News Source on Social Media using Machine Learning Techniques

Mahfujur Rahman, Madina Hasan, M. Billah, Rukaiya Jahan Sajuti
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Abstract

People are more dependable on online news systems than ever in this modern time and day. The more people depend on online news, magazines, and journals, the more likely it will have more significant consequences of fake news or rumors. In the era of social networking, it has become a significant problem that negatively influences society. The fact is that the internet has become more accessible than ever, and its uses have increased exponentially. From 2005 to 2020, overall web users have increased from 1.1 billion to 3.96 billion. As most individuals' primary sources are microblogging networks, fake news spreads faster than ever. Thus it has become very complicated to detect fake news over the internet. For that purpose, we have used four traditional machine learning (ML) algorithms and long short-term memory (LSTM) methods. The four traditional methods are as follows logistic regression (LR), decision tree (DT) classification, k-nearest neighbors (KNN) classification, and naive bayes (NB) classification. To conduct this experiment, we first implemented four traditional machine learning methods. Then we trained our dataset with LSTM and Bi-LSTM (bidirectional long-short term memory) to get the best-optimized result. This paper experimented with four traditional methods and two deep learning models to find the best models for detecting fake news. In our research, we can see that, from four traditional methods, logistic regression performs best and generate 96% accuracy, and the Bi-LSTM model can generate 99% accuracy, which outbreaks all previous scores.
使用机器学习技术从社交媒体上的不同新闻来源检测政治假新闻
在这个现代时代,人们比以往任何时候都更依赖在线新闻系统。人们对网络新闻、杂志和期刊的依赖程度越高,就越有可能产生更严重的假新闻或谣言后果。在社交网络时代,这已经成为一个严重影响社会的问题。事实上,互联网比以往任何时候都更容易访问,其使用也呈指数级增长。从2005年到2020年,网络用户总数从11亿增加到39.6亿。由于大多数人的主要消息来源是微博网络,假新闻的传播速度比以往任何时候都要快。因此,在互联网上检测假新闻变得非常复杂。为此,我们使用了四种传统的机器学习(ML)算法和长短期记忆(LSTM)方法。四种传统方法分别是逻辑回归(LR)、决策树(DT)分类、k近邻(KNN)分类和朴素贝叶斯(NB)分类。为了进行这个实验,我们首先实现了四种传统的机器学习方法。然后,我们使用LSTM和双向LSTM(双向长短期记忆)来训练我们的数据集,以获得最佳优化结果。本文通过四种传统方法和两种深度学习模型进行实验,以寻找检测假新闻的最佳模型。在我们的研究中,我们可以看到,在四种传统方法中,逻辑回归的表现最好,准确率达到96%,而Bi-LSTM模型的准确率达到99%,突破了之前的所有得分。
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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