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Checking Method for Fake News to Avoid the Twitter Effect

机译:防止推特效应的假新闻检查方法

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The recent blocking of President Trump's twitter account has raised awareness of the danger of the impact of fake news and the importance of detecting it. Indeed, if one can doubt information, ignoring what is true or false it can lead to a loss of confidence in the decisions and other dangers. The objective of this paper is to propose an automatic method for fact checking using Knowledge Graphs, such as Wikipedia. Knowledge Graphs (KGs) have applications in many tasks such as Question Answering, Search Engines and Fact Checking, but they suffer from being incomplete. Recent work has focused on answering this problem with an abstract embedding of the KG and a scoring function, yielding results that are not easily interpretable. On the other hand, Path Ranking methods answer this problem with deductions represented by alternative paths in the KG, easily understood by a human. Favoring the Path Ranking approach for its interpretability, we propose an attention-based Path Ranking model that uses label information in the KG, making the model easily transferable between datasets, allowing us to leverage pretraining and demonstrate competitive results on popular datasets.
机译:最近对特朗普总统推特账户的封锁提高了人们对假新闻影响的危险性和发现它的重要性的认识。事实上,如果一个人可以怀疑信息,忽略真实或错误的信息,就会导致对决策的信心丧失和其他危险。本文的目的是提出一种使用知识图(如维基百科)进行事实检查的自动方法。知识图(Knowledge Graph,KG)在问答、搜索引擎和事实检查等许多任务中都有应用,但它们存在不完整的问题。最近的工作集中在用KG的抽象嵌入和评分函数来回答这个问题,产生了不容易解释的结果。另一方面,路径排序方法通过用KG中的替代路径表示的演绎来回答这个问题,人类很容易理解。由于路径排序方法的可解释性,我们提出了一种基于注意的路径排序模型,该模型使用KG中的标签信息,使得该模型易于在数据集之间转换,允许我们利用预训练,并在流行数据集上展示竞争结果。

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