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GraphCite: Citation Intent Classification in Scientific Publications via Graph Embeddings

Dan Berrebbi, Nicolas Huynh, Oana Balalau

2022Companion Proceedings of the Web Conference 202210 citationsDOIOpen Access PDF

Abstract

Citations are crucial in scientific works as they help position a new publication. Each citation carries a particular intent, for example, to highlight the importance of a problem or to compare against results provided by another method. The authors’ intent when making a new citation has been studied to understand the evolution of a field over time or to make recommendations for further citations. In this work, we address the task of citation intent prediction from a new perspective. In addition to textual clues present in the citation phrase, we also consider the citation graph, leveraging high-level information of citation patterns. In this novel setting, we perform a thorough experimental evaluation of graph-based models for intent prediction. We show that our model, GraphCite, improves significantly upon models that take into consideration only the citation phrase. Our code is available online1.

Topics & Concepts

Computer scienceCitationInformation retrievalGraphData scienceTheoretical computer scienceWorld Wide WebTopic ModelingAdvanced Graph Neural NetworksBiomedical Text Mining and Ontologies
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