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Argument Pair Extraction via Attention-guided Multi-Layer Multi-Cross Encoding

机译:通过注意引导多层多交叉编码的参数对提取

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摘要

Argument pair extraction (APE) is a research task for extracting arguments from two passages and identifying potential argument pairs. Prior research work treats this task as a sequence labeling problem and a binary classification problem on two passages that are directly concatenated together, which has a limitation of not fully utilizing the unique characteristics and inherent relations of two different passages. This paper proposes a novel attention-guided multi-layer multi-cross encoding scheme to address the challenges. The new model processes two passages with two individual sequence encoders and updates their representations using each other's representations through attention. In addition, the pair prediction part is formulated as a table-filling problem by updating the representations of two sequences' Cartesian product. Furthermore, an auxiliary attention loss is introduced to guide each argument to align to its paired argument. An extensive set of experiments show that the new model significantly improves the APE performance over several alternatives.
机译:参数对提取(APE)是从两个段落中提取参数并识别潜在参数对的研究任务。先前的研究工作将此任务视为序列标记问题和直接连接在一起的两个段路上的二进制分类问题,这有一个限制不充分利用两种不同段落的独特特征和固有关系。本文提出了一种新颖的引导式多层多交叉编码方案,以解决挑战。新模型处理两个具有两个单个序列编码器的段路,并通过注意使用彼此的表示更新其表示。另外,通过更新两个序列的笛卡尔产品的表示,将该对预测部分配制成表填充问题。此外,引入了辅助注意力损失,以指导每个参数以对准其配对的参数。一组广泛的实验表明,新型模型显着提高了几种替代方案的散斑性能。

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