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Truth or Lie: Pre-emptive Detection of Fake News in Different Languages Through Entropy-based Active Learning and Multi-model Neural Ensemble

机译:真相或谎言:通过基于熵的主动学习和多模型神经集合的不同语言先发制人的假新闻

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摘要

In recent times, the circulation of fake news on social networks has increased exponentially with spikes in propagation seen during and after the 2016 US elections. Hence, there has been a surge in research into automated fake news detection. However, most research tends towards supervised learning which requires a significant amount of labeled data which is difficult to obtain. Thus, in this paper, we develop a semi-supervised learning method for fake news detection incorporating active learning based on entropy as a query strategy to train a multi-model neural ensemble architecture. The goal of the research is to achieve high accuracy on fake news detection while using lower amounts of data. Our experiments against other standards indicate promising results, with our model achieving high accuracy with 4% to 28% of the dataset.
机译:最近,在2016年美国选举期间和之后看到的社交网络上的假新闻的流通量增加了庞大的繁殖。因此,在自动假新闻检测中研究了潮流。然而,大多数研究往往对监督学习,这需要大量的标记数据,这是难以获得的。因此,在本文中,我们开发了一种基于熵作为培训多模型神经集合架构的查询策略的自动新闻检测的半监督学习方法。该研究的目标是在使用较低的数据时对假新闻检测进行高精度。我们对其他标准的实验表明了有希望的结果,我们的模型可实现高精度,4%至28%的数据集。

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