TL;DR
This paper proposes a novel method for keyphrase extraction from academic articles by leveraging section structure information, improving accuracy over traditional approaches that rely solely on titles and abstracts.
Contribution
It introduces a structural feature-based approach and a keyphrase integration algorithm that utilize section texts, enhancing KPE performance from academic papers.
Findings
Structural features improve KPE accuracy
Keyphrase integration yields best results
Section structure quality influences KPE performance
Abstract
The exponential increase in academic papers has significantly increased the time required for researchers to access relevant literature. Keyphrase Extraction (KPE) offers a solution to this situation by enabling researchers to efficiently retrieve relevant literature. The current study on KPE from academic articles aims to improve the performance of extraction models through innovative approaches using Title and Abstract as input corpora. However, the semantic richness of keywords is significantly constrained by the length of the abstract. While full-text-based KPE can address this issue, it simultaneously introduces noise, which significantly diminishes KPE performance. To address this issue, this paper utilized the structural features and section texts obtained from the section structure information of academic articles to extract keyphrase from academic papers. The approach consists…
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Taxonomy
MethodsKeypoint Pose Encoding
