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Graph-Based Method for Detecting Occupy Protest Events Using GDELT Dataset

机译:基于图的使用GDELT数据集检测占领抗议事件的方法

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Recent years have witnessed a series of occupy protest events all over the world. Detecting and monitoring these events is an important and challenging task in social science research and also can provide reference for government's emergency management. Existing methods mainly solve this problem by document clustering techniques. This paper proposes a novel graph-based occupy protest event detection framework which applies sub graph pattern mining for this task. A wealth of event data about Occupy Wall Street in New York and Occupy Central in Hong Kong from the Global Data on Events, Location, and Tone (GDELT) are utilized in the work. Experimental results on these datasets show that the proposed method can achieve higher detection accuracy with 0.921 on average and MCC value 0.748, outperforming the baseline method.
机译:近年来,全世界目睹了一系列占领抗议事件。检测和监控这些事件是社会科学研究中一项重要而具有挑战性的任务,并且可以为政府的应急管理提供参考。现有方法主要通过文档聚类技术解决该问题。本文提出了一种新颖的基于图的占领抗议事件检测框架,该框架将子图模式挖掘应用于该任务。工作中使用了来自“事件,位置和语气全球数据”(GDELT)的大量有关纽约“占领华尔街”和香港“占领中心”的事件数据。在这些数据集上的实验结果表明,该方法可实现更高的检测精度,平均检测精度为0.921,MCC值为0.748,优于基线方法。

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