GENE: Global Event Network Embedding

Qi Zeng, Manling Li, T. Lai, Heng Ji, Mohit Bansal, Hanghang Tong
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引用次数: 7

Abstract

Current methods for event representation ignore related events in a corpus-level global context. For a deep and comprehensive understanding of complex events, we introduce a new task, Event Network Embedding, which aims to represent events by capturing the connections among events. We propose a novel framework, Global Event Network Embedding (GENE), that encodes the event network with a multi-view graph encoder while preserving the graph topology and node semantics. The graph encoder is trained by minimizing both structural and semantic losses. We develop a new series of structured probing tasks, and show that our approach effectively outperforms baseline models on node typing, argument role classification, and event coreference resolution.
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GENE:全局事件网络嵌入
当前用于事件表示的方法忽略语料库级全局上下文中的相关事件。为了深入和全面地理解复杂事件,我们引入了一个新的任务,事件网络嵌入,旨在通过捕获事件之间的联系来表示事件。我们提出了一个新的框架,全局事件网络嵌入(GENE),该框架使用多视图图编码器对事件网络进行编码,同时保留图的拓扑结构和节点语义。通过最小化结构和语义损失来训练图编码器。我们开发了一系列新的结构化探测任务,并表明我们的方法在节点类型、参数角色分类和事件共引用解析方面有效地优于基线模型。
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