Scientific Paper Extractive Summarization Enhanced by Citation Graphs
Xiuying Chen, Mingzhe Li, Shen Gao, Rui Yan, Xin Gao, Xiangliang Zhang

TL;DR
This paper introduces two graph-based models, MUS and GSS, that leverage citation graphs to enhance scientific paper extractive summarization, demonstrating significant improvements over previous methods.
Contribution
It presents novel unsupervised and supervised models that utilize citation graph structure for improved scientific paper summarization.
Findings
Citation graphs improve summarization quality.
MUS and GSS outperform previous models.
Graph information enhances sentence representation.
Abstract
In a citation graph, adjacent paper nodes share related scientific terms and topics. The graph thus conveys unique structure information of document-level relatedness that can be utilized in the paper summarization task, for exploring beyond the intra-document information. In this work, we focus on leveraging citation graphs to improve scientific paper extractive summarization under different settings. We first propose a Multi-granularity Unsupervised Summarization model (MUS) as a simple and low-cost solution to the task. MUS finetunes a pre-trained encoder model on the citation graph by link prediction tasks. Then, the abstract sentences are extracted from the corresponding paper considering multi-granularity information. Preliminary results demonstrate that citation graph is helpful even in a simple unsupervised framework. Motivated by this, we next propose a Graph-based Supervised…
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Taxonomy
TopicsTopic Modeling · Advanced Text Analysis Techniques · Biomedical Text Mining and Ontologies
