论文标题

通过不确定性加权因果图检测的假新闻检测

Fake News Detection by means of Uncertainty Weighted Causal Graphs

论文作者

Garrido-Merchán, Eduardo C., Puente, Cristina, Palacios, Rafael

论文摘要

社会正在尝试信息消耗的变化,因为社交网络等新信息渠道使人们分享不一定值得信任的新闻。有时,这些信息来源故意以可疑的目的产生虚假新闻,而该信息的消费者将其与其他用户共享,认为该信息是准确的。这种信息传播代表了我们社会中的一个问题,可以对人们对某些数字,群体或思想的看法产生负面影响。因此,希望设计一个能够检测和将信息归类为伪造并将信息源分类为值得信托的系统的系统。当前的系统实验难度执行此任务,因为设计可以独立于上下文对此信息进行分类的自动过程很复杂。在这项工作中,我们提出了一种通过基于加权因果图的分类器来检测假新闻的机制。这些图是特定的混合模型,这些模型是通过从文本中检测到的因果关系构建的,并考虑因果关系的不确定性。我们利用此表示形式的优势使用此图的概率分布,并根据学习和新信息的熵和KL差异构建了假新闻分类器。我们认为,由于符号和定量方法之间的混合性质,该模型的混合性质可以准确地解决了假新闻的问题。我们描述了该分类器的方法论,并添加了我们提出的方法以合成实验的形式和涉及肺癌的真实实验形式的经验证据。

Society is experimenting changes in information consumption, as new information channels such as social networks let people share news that do not necessarily be trust worthy. Sometimes, these sources of information produce fake news deliberately with doubtful purposes and the consumers of that information share it to other users thinking that the information is accurate. This transmission of information represents an issue in our society, as can influence negatively the opinion of people about certain figures, groups or ideas. Hence, it is desirable to design a system that is able to detect and classify information as fake and categorize a source of information as trust worthy or not. Current systems experiment difficulties performing this task, as it is complicated to design an automatic procedure that can classify this information independent on the context. In this work, we propose a mechanism to detect fake news through a classifier based on weighted causal graphs. These graphs are specific hybrid models that are built through causal relations retrieved from texts and consider the uncertainty of causal relations. We take advantage of this representation to use the probability distributions of this graph and built a fake news classifier based on the entropy and KL divergence of learned and new information. We believe that the problem of fake news is accurately tackled by this model due to its hybrid nature between a symbolic and quantitative methodology. We describe the methodology of this classifier and add empirical evidence of the usefulness of our proposed approach in the form of synthetic experiments and a real experiment involving lung cancer.

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