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Jointly Event Extraction and Visualization on Twitter via Probabilistic Modelling

机译:通过概率建模在Twitter上联合进行事件提取和可视化

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Event extraction from texts aims to detect structured information such as what has happened, to whom, where and when. Event extraction and visualization are typically considered as two different tasks. In this paper, we propose a novel approach based on probabilistic modelling to jointly extract and visualize events from tweet-s where both tasks benefit from each other. We model each event as a joint distribution over named entities, a date, a location and event-related keywords. Moreover, both tweets and event instances are associated with coordinates in the visualization space. The manifold assumption that the intrinsic geometry of tweets is a low-rank, non-linear manifold within the high-dimensional space is incorporated into the learning framework using a regu-larization. Experimental results show that the proposed approach can effectively deal with both event extraction and visualization and performs remarkably better than both the state-of-the-art event extraction method and a pipeline approach for event extraction and visualization.
机译:从文本中提取事件的目的是检测结构化信息,例如发生了什么,向谁,何时何地发生的情况。事件提取和可视化通常被认为是两个不同的任务。在本文中,我们提出了一种基于概率建模的新颖方法,可以从推特中联合提取和可视化事件,而这两个任务彼此受益。我们将每个事件建模为命名实体,日期,位置和事件相关关键字的联合分布。此外,推文和事件实例都与可视化空间中的坐标关联。推文的固有几何结构是高维空间内的低阶非线性流形的流形假设通过规则化被合并到学习框架中。实验结果表明,所提出的方法可以有效地处理事件提取和可视化,并且比最新的事件提取方法和用于事件提取和可视化的流水线方法都具有更好的性能。

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