一种假新闻检测的混合方法实现

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引用次数: 0

摘要

社交媒体平台上新闻消费的增加主要是由于其廉价和吸引人的性质,以及它能够传播假新闻。假新闻的传播对社会有负面影响。有些人编造这个故事是为了引起注意或获得政治利益。机器学习和深度学习技术已经被开发出来检测假新闻。然而,他们往往产生不准确的报告。为了检测假新闻,我们使用了一个结合支持向量机和朴素贝叶斯(NBSVM)框架的混合模型。它能够以84.85%的准确率对新闻进行分类。该模型在假新闻挑战数据集上进行了测试和训练。我们使用各种评估指标(精度、召回率、F1-测度等)来衡量模型的效率
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Implementing a Hybrid method For Fake News Detection
The increasing consumption of news on social media platforms is mainly due to its cheap and attractive nature and it’s capable of spreading the fake news. The spread of fake news has negative effects on society. Some people make it up to get attention or gain political gain. Machine learning and deep learning techniques have been developed to detect fake news. However, they tend to generate inaccurate reports. To detect fake news, we used a Hybrid model that combines SVM and Naive Bayes (NBSVM) framework. It was able to classify the news with an accuracy of 84.85%. This model was tested and trained on a fake news challenge dataset. We used various evaluation metrics (precision, recall, F1- measure, etc.) to measure the model's efficiency
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