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Performance Comparison of Machine Learning Classifiers for Fake News Detection

机译:机器学习分类器在虚假新闻检测中的性能比较

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Information sharing on the web particularly via web-based networking media is increasing. Ability to identify, evaluate and address such information is significantly important. Fake information deliberately created is purposefully or unintentionally engendered over the internet. This is affecting a larger group of society who are blinded by technology. This paper illustrates model and methodology to detect fake news from news article with the assistance of Machine learning and Natural language processing. In this proposed work different feature engineering methods like count vector, TF-IDF and word embedding are used to generate feature vector. Seven different Machine learning Classification algorithms are trained to classify news as fake or real and are compared considering accuracy, F1 Score, recall, precision and best one is selected to build a model to classify news as fake or real.
机译:网络上的信息共享,特别是通过基于Web的网络媒体的信息共享正在增加。识别,评估和处理此类信息的能力非常重要。故意创建的虚假信息是通过Internet有意或无意产生的。这正在影响被技术蒙蔽的更大的社会群体。本文阐述了在机器学习和自然语言处理的帮助下从新闻文章中检测假新闻的模型和方法。在这项拟议的工作中,使用不同的特征工程方法(如计数向量,TF-IDF和词嵌入)来生成特征向量。训练了7种不同的机器学习分类算法,以将新闻分类为假新闻或真实新闻,并在考虑准确性,F1得分,召回率,准确性的基础上进行比较,并选择了最佳算法来构建将新闻分类为假新闻或真实新闻的模型。

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