Event Detection using Hierarchical Multi-Aspect Attention

Sneha Mehta, Mohammad Raihanul Islam, H. Rangwala, Naren Ramakrishnan
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引用次数: 18

Abstract

Classical event encoding and extraction methods rely on fixed dictionaries of keywords and templates or require ground truth labels for phrase/sentences. This hinders widespread application of information encoding approaches to large-scale free form (unstructured) text available on the web. Event encoding can be viewed as a hierarchical task where the coarser level task is event detection, i.e., identification of documents containing a specific event, and where the fine-grained task is one of event encoding, i.e., identifying key phrases, key sentences. Hierarchical models with attention seem like a natural choice for this problem, given their ability to differentially attend to more or less important features when constructing document representations. In this work we present a novel factorized bilinear multi-aspect attention mechanism (FBMA) that attends to different aspects of text while constructing its representation. We find that our approach outperforms state-of-the-art baselines for detecting civil unrest, military action, and non-state actor events from corpora in two different languages.
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基于分层多面向注意的事件检测
经典的事件编码和提取方法依赖于固定的关键字和模板字典,或者需要为短语/句子提供基本的真值标签。这阻碍了信息编码方法在网络上大规模自由格式(非结构化)文本中的广泛应用。事件编码可以看作是一个分层任务,其中粗层次任务是事件检测,即识别包含特定事件的文档,而细粒度任务是事件编码之一,即识别关键短语、关键句子。考虑到它们在构建文档表示时能够不同地关注或多或少重要的特征,具有注意力的分层模型似乎是解决这个问题的自然选择。在这项工作中,我们提出了一种新的分解双线性多方面注意机制(FBMA),该机制在构建文本表征的同时关注文本的不同方面。我们发现,在从两种不同语言的语料库中检测内乱、军事行动和非国家行为者事件方面,我们的方法优于最先进的基线。
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