Domain Bias in Fake News Datasets Consisting of Fake and Real News Pairs

Shingo Kato, Linshuo Yang, Daisuke Ikeda
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引用次数: 2

Abstract

News intentionally containing false information–known as "fake news"–is common on the Internet and often causes social disruption. In order to solve it, research on automatic detection of fake news using supervised learning has been active. Although the accuracy is improving, a major challenge for practical application remains: models can not work well for news in unknown fields (domains) due to domain biases. The goal of this study is to mitigate these domain biases and improve the accuracy of cross-domain fake news detection, which tests news from unknown domains. We firstly try to mitigate the bias by masking noun phrases which are considered a major source of domain bias. However, masking has not improved accuracy. Therefore, we point out that the dataset in this study has the property that it always contains pairs of fake and real news on the exact same topic. In this paper, we focus on this property of dataset and examine how it may affect domain bias and accuracy. Comparative experiments show that accuracy is higher when trained on a dataset with the property shown in this study. We suggest that a fake news dataset consisting of paired news could be effective for cross-domain detection.
由假新闻和真实新闻对组成的假新闻数据集的领域偏差
故意包含虚假信息的新闻——被称为“假新闻”——在互联网上很常见,经常造成社会混乱。为了解决这一问题,基于监督学习的假新闻自动检测研究一直活跃。尽管准确性正在提高,但实际应用的一个主要挑战仍然存在:由于领域偏差,模型不能很好地处理未知领域(领域)的新闻。本研究的目的是减轻这些领域偏差,提高跨领域假新闻检测的准确性,即测试来自未知领域的新闻。我们首先试图通过屏蔽名词短语来减轻偏见,名词短语被认为是领域偏见的主要来源。然而,掩蔽并没有提高精度。因此,我们指出,本研究中的数据集具有这样的属性,即它总是包含关于完全相同主题的假新闻和真实新闻对。在本文中,我们关注数据集的这一属性,并研究它如何影响域偏差和精度。对比实验表明,在具有本研究所示属性的数据集上进行训练时,准确率更高。我们建议由成对新闻组成的假新闻数据集可以有效地进行跨域检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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