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Application of Knowledge-oriented Convolutional Neural Network For Causal Relation Extraction In South China Sea Conflict Issues

机译:知识导向卷积神经网络在南海冲突问题中因果关系提取的应用

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Online news articles are an important source of information for decisions makers to understand the causal relation of events that happened. However, understanding the causality of an event or between events by traditional machine learning-based techniques from natural language text is a challenging task due to the complexity of the language to be comprehended by the machines. In this study, the Knowledge-oriented convolutional neural network (K-CNN) technique is used to extract the causal relation from online news articles related to the South China Sea (SCS) dispute. The proposed K-CNN model contains a Knowledge-oriented channel that can capture the causal phrases of causal relationships. A Data-oriented channel that captures the position information was added to the K-CNN model in this phase. The online news articles were collected from the national news agency and then the sentences which contain relation such as causal, message-topic, and product-producer were extracted. Then, the extracted sentences were annotated and converted into lower form and base form followed by transformed into the vector by looking up the word embedding table. A word filter that contains causal keywords was generated and a K-CNN model was developed, trained, and tested using the collected data. Finally, different architectures of the K-CNN model were compared to find out the most suitable architecture for this study. From the study, it was found out that the most suitable architecture was the K-CNN model with a Knowledge-oriented channel and a Data-oriented channel with average pooling. This shows that the linguistic clues and the position features can improve the performance in extracting the causal relation from the SCS online news articles. Keywords-component; Convolutional Neural Network, Causal Relation Extraction, South China Sea.
机译:网上新闻文章的信息,决策制定者明白发生的事件的因果关系的一个重要来源。然而,了解事件的或从自然语言文字传统的基于机器学习技术的事件之间的因果关系是一项具有挑战性的任务,由于语言的复杂性,通过机器来理解。在这项研究中,与知识的卷积神经网络(K-CNN)技术被用来提取有关中国南海(SCS)争端在线新闻文章的因果关系。所提出的K-CNN模型包含可以捕捉因果关系的因果短语与知识的渠道。甲面向数据的捕获的位置信息被添加到在该阶段中,K-CNN模型信道。在线新闻报道文章从国家通讯社收集,然后提取其中包含的关系,如因果关系,消息的主题,和产品生产的句子。然后,所提取的判决被注解并转化为低级形式和碱形式,然后转化成矢量通过查找字嵌入表中。生成包含因果关键字字滤波器和K-CNN模型的开发,培训,使用收集到的数据进行测试。最后,K-CNN模型的不同结构进行了比较,找出这项研究最合适的架构。从研究中,我们发现了,最合适的体系结构是K-CNN模型具有与知识的信道,并用平均池一个面向数据的信道。这说明语言线索和位置功能可以提高提取的SCS网上新闻文章的因果关系的表现。关键词:组件;卷积神经网络,因果关系抽取,中国南海。

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