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Tree kernel-based semantic role labeling with enriched parse tree structure

机译:具有丰富解析树结构的基于树核的语义角色标记

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摘要

Shallow semantic parsing assigns a simple structure (such as WHO did WHAT to WHOM, WHEN, WHERE, WHY, and HOW) to each predicate in a sentence. It plays a critical role in event-based information extraction and thus is important for deep information processing and management. This paper proposes a tree kernel method for a particular shallow semantic parsing task, called semantic role labeling (SRL), with an enriched parse tree structure. First, a new tree kernel is presented to effectively capture the inherent structured knowledge in a parse tree by enabling the standard convolution tree kernel with context-sensitiveness via considering ancestral information of substructures and approximate matching via allowing insertion/deletion/substitution of tree nodes in the substructures. Second, an enriched parse tree structure is proposed to both well preserve the necessary structured information and effectively avoid noise by differentiating various portions of the parse tree structure. Evaluation on the CoNLL'2005 shared task shows that both the new tree kernel and the enriched parse tree structure contribute much in SRL and our tree kernel method significantly outperforms the state-of-the-art tree kernel methods. Moreover, our tree kernel method is proven rather complementary to the state-of-the-art feature-based methods in that it can better capture structural parse tree information.
机译:浅层语义解析为句子中的每个谓词分配一个简单的结构(例如WHO对WHOM,WHEN,WHERE,WHY和HOW做了什么)。它在基于事件的信息提取中起着关键作用,因此对于深度信息处理和管理非常重要。本文提出了一种针对特定浅层语义解析任务的树核方法,称为语义角色标记(SRL),具有丰富的解析树结构。首先,提出一种新的树核,以通过考虑子结构的祖先信息并通过允许插入/删除/替换树节点中的近似匹配来使标准卷积树核具有上下文敏感性,从而有效地捕获解析树中固有的结构化知识。子结构。其次,提出了一种丰富的解析树结构,既可以很好地保留必要的结构化信息,又可以通过区分解析树结构的各个部分来有效避免噪声。对CoNLL'2005共享任务的评估表明,新的树内核和丰富的解析树结构都对SRL做出了很大贡献,并且我们的树内核方法明显优于最新的树内核方法。此外,我们的树核方法已被证明与基于最新功能的方法相辅相成,因为它可以更好地捕获结构解析树信息。

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