使用机器学习模型追求真实新闻

Rahul Pradhan, Pragya Tiwary, P. Agarwal, D. Sharma
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引用次数: 0

摘要

假新闻像野火一样蔓延,这是这个时代的一个大问题。网络世界包含了许多来自政党、有影响力的人和机器人的各种来源和渠道的假新闻。人们不善于轻易区分假新闻和真新闻。这将对人们的生活、社会和世界产生负面影响。为维护稳定不受假新闻危害,我们将解决假新闻检测问题。我们正在研究机器学习技术的有效性,并引入一种深度学习模型,以提高假新闻检测的准确性。我们正在使用自然语言处理与上述技术为我们的目的。在研究机器学习技术的有效性时,我们对NLP处理的数据应用了各种分类算法,以获得它们对问题的准确性。然后使用像深度学习这样的新兴技术,我们提出了更准确的解决方案。在假新闻检测的机器学习技术中,我们发现AdaBoost分类器、梯度增强分类器和Logistic回归在准确率方面优于其他分类器,如决策树、KNeighbors分类器、随机森林分类器和MultinomialNB。但是,当不同类型的数据出现时,这些技术更容易出错。这里使用的深度学习技术是长短期记忆深度学习模型,它的准确率超过0.993,而双向LSTM模型的准确率接近0.99,比LSTM模型需要更多的训练时间。通过这项研究,我们得出结论,机器学习技术比深度学习技术表现得更差。本文提出的LSTM模型在假新闻检测方面优于双向LSTM模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pursuit for Authentic News using Machine Learning Models
Fake news spreads like a wildfire and this is a big issue in this era. The Online world contains lots of fake news from various sources and channels by political parties, influential peoples, and bots. People are not good for easily able to distinguish fake news from real one. This will negatively impact people's lives, society, and the world. To maintain stability from the harm done by fake news, we will tackle the topic of fake news detection. we are investigating the effectiveness of machine learning technologies and also introducing a deep learning model for fake news detection with better accuracy. We are using Natural language processing with the above technologies for our purpose. In investigating the effectiveness of machine learning technologies, we had applied various classification algorithms on our data processed by NLP to obtain their accuracy for the problem. Then using new emerging technologies like deep learning, we are proposing solutions with better accuracy. In the machine learning technologies for fake news detection, we have found that AdaBoost classifier, Gradient boosting classifier, and Logistic regression are better in terms of accuracy than other classifiers like decision tree, KNeighbors classifier, Random Forest classifier, and MultinomialNB. But These technologies are more prone to error when a different category of data comes. Deep learning technology used here is the Long short-term memory deep learning model which gave us an accuracy of more than 0.993 and the Bi-directional LSTM model with accuracy near 0.99 taking more time in training than the LSTM model. Through this research, we conclude that machine learning technologies perform worse than deep learning technologies. And proposed LSTM model is better than the Bi-directional LSTM model for fake news detection.
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