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Neural Storyline Extraction Model for Storyline Generation from News Articles

机译:从新闻文章生成故事情节的神经故事情节提取模型

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摘要

Storyline generation aims to extract events described on news articles under a certain topic and reveal how those events evolve over time. Most existing approaches first train supervised models to extract events from news articles published in different time periods and then link relevant events into coherent stories. They are domain dependent and cannot deal with unseen event types. To tackle this problem, approaches based on probabilistic graphic models jointly model the generations of events and storylines without annotated data. However, the parameter inference procedure is too complex and models often require long time to converge. In this paper, we propose a novel neural network based approach to extrac-t structured representations and evolution patterns of storylines without using annotated data. In this model, title and main body of a news article are assumed to share the similar storyline distribution. Moreover, similar documents described in neighboring time periods are assumed to share similar storyline distributions. Based on these assumptions, structured representations and evolution patterns of storylines can be extracted. The proposed model has been evaluated on three news corpora and the experimental results show that it outperforms state-of-the-art approaches accuracy and efficiency.
机译:故事情节的生成旨在提取特定主题下新闻文章中描述的事件,并揭示这些事件如何随时间演变。大多数现有方法首先训练监督模型,以从不同时间段内发布的新闻文章中提取事件,然后将相关事件链接到连贯的故事中。它们依赖于域,并且不能处理看不见的事件类型。为了解决这个问题,基于概率图形模型的方法共同在没有注释数据的情况下对事件和故事情节的世代进行建模。但是,参数推断过程太复杂,并且模型通常需要很长时间才能收敛。在本文中,我们提出了一种新颖的基于神经网络的方法来提取故事情节的结构化表示和演化模式,而无需使用带注释的数据。在此模型中,假定新闻标题和正文共享类似的故事情节分布。此外,假定在相邻时间段中描述的相似文档共享相似的故事情节分布。基于这些假设,可以提取故事情节的结构化表示形式和演变模式。该模型已在三个新闻语料库上进行了评估,实验结果表明,该模型优于最新方法的准确性和效率。

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