View a PDF of the paper titled A Bi-consolidating Model for Joint Relational Triple Extraction, by Xiaocheng Luo and 5 other authors
Abstract:Current methods to extract relational triples directly make a prediction based on a possible entity pair in a raw sentence without depending on entity recognition. The task suffers from a serious semantic overlapping problem, in which several relation triples may share one or two entities in a sentence. In this paper, based on a two-dimensional sentence representation, a bi-consolidating model is proposed to address this problem by simultaneously reinforcing the local and global semantic features relevant to a relation triple. This model consists of a local consolidation component and a global consolidation component. The first component uses a pixel difference convolution to enhance semantic information of a possible triple representation from adjacent regions and mitigate noise in neighbouring neighbours. The second component strengthens the triple representation based a channel attention and a spatial attention, which has the advantage to learn remote semantic dependencies in a sentence. They are helpful to improve the performance of both entity identification and relation type classification in relation triple extraction. After evaluated on several publish datasets, the bi-consolidating model achieves competitive performance. Analytical experiments demonstrate the effectiveness of our model for relational triple extraction and give motivation for other natural language processing tasks.
Submission history
From: Luo Xiaocheng [view email]
[v1]
Fri, 5 Apr 2024 04:04:23 UTC (10,698 KB)
[v2]
Wed, 10 Jul 2024 09:23:11 UTC (3,784 KB)
[v3]
Mon, 21 Oct 2024 14:29:44 UTC (3,783 KB)
Source link
lol