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Identifying misinformation on Twitter with a support vector machine

机译:用支持向量机识别Twitter上的错误信息

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There is a large amount of information from disparate sources around the world. Due to the recent growth of online social media and its impact on society, identifying misinformation is an important activity. Twitter is one of the most popular applications that can deliver engaging data in a timely manner. Developing techniques that can detect misinformation from Twitter has become a challenging yet necessary task. This article proposes a machine learning method that can identify misinformation from Twitter data. The experiment was carried out with three widely used machine learning methods, na?ve Bayes, a neural network and a support vector machine, using Twitter data collected from October to November 2017 in Thailand. The results show that all three methods can detect misinformation accurately. The accuracy of the na?ve Bayes method was 95.55%, that of the neural network was 97.09%, and that of the support vector machine 98.15%. Furthermore, we analyzed the misinformation and noted some of its characteristics.
机译:来自世界各地的不同消息人士有大量信息。由于最近在线社交媒体的增长及其对社会的影响,识别错误信息是一个重要的活动。 Twitter是最受欢迎的应用之一,可以及时地提供接合数据。可以检测到Twitter的错误信息的开发技术已成为一个具有挑战性的必要任务。本文提出了一种机器学习方法,可以从Twitter数据中识别错误信息。该实验是用三种广泛使用的机器学习方法进行的,Na ve Bayes,神经网络和支持向量机,使用从10月到2017年11月在泰国收集的推特数据。结果表明,所有三种方法都可以准确地检测错误信息。 Na'Ve Bayes方法的准确性为95.55%,神经网络的含量为97.09%,支持向量机98.15%。此外,我们分析了错误信息并注意到了其一些特征。

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