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Implementing Fact-Checking in Journalistic Articles Shared on Social Media in the Philippines Using Knowledge Graphs

机译:使用知识图在菲律宾社交媒体上共享的新闻文章中进行事实检查

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In the technology age, articles with fraudulent content are rampant, especially articles shared on social media. Misinformation could just be an inaccuracy at its best, or it could lead to normalizing false information at worst. To aid the predicament, the researchers created a system that will “fact check” suspicious articles against those articles that have been deemed credible, reliable, and more accurate, in order to help fight deceiving content that may be detrimental to society. The journal regarding computational fact checking that was published by Ciampaglia, et. al. (2015) from the Indiana University in the USA entitled Computational Fact Checking from Knowledge Networks, was used as the basis and inspiration for this thesis. The researchers made use of the undirected graph (UG) together with a part-of-speech (POS) tagging algorithm to create a knowledge graph (KG) that would serve as the center of the system. Five different POS tagging algorithms were paired with the UG to assess which combination would yield the best results, these are Conditional Random Fields, Logistic Regression, a Hybrid of CRF and LR, Random Forests, and K-Nearest Neighbors. Random Forests and K-Nearest Neighbors were classification algorithms used in Ciampaglia's study. It was concluded that among the 5 pairs of UG and POS Tagging algorithms, the Hybrid of CRF and LR used as a POS tagger, together with the UG, created the most efficient KG.
机译:在技​​术时代,带有欺诈性内容的文章非常猖social,尤其是在社交媒体上共享的文章。错误信息充其量可能只是一个不准确的信息,或者最坏情况可能导致错误信息的规范化。为了解决这一困境,研究人员创建了一个系统,将“可疑物品”与那些被认为可信,可靠和更准确的物品进行“事实核对”,以帮助打击可能对社会有害的欺骗性内容。 Ciampaglia等出版的有关计算事实检查的杂志。等美国印第安纳大学(2015)题为“知识网络的计算事实检查”被用作本文的基础和灵感。研究人员利用无向图(UG)以及词性(POS)标记算法创建了一个知识图(KG),它将作为系统的中心。将五种不同的POS标记算法与UG配对,以评估哪种组合将产生最佳结果,它们是条件随机字段,对数回归,CRF和LR的混合体,随机森林和K最近邻居。 Ciampaglia的研究中使用了随机森林和K近邻算法。结论是,在5对UG和POS标记算法中,用作POS标记器的CRF和LR的Hybrid与UG一起创建了最有效的KG。

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