Exploiting Position and Contextual Word Embeddings for Keyphrase Extraction from Scientific Papers

Krutarth Patel, Cornelia Caragea

Information Extraction and Text Mining Short paper Paper

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Abstract: Keyphrases associated with research papers provide an effective way to find useful information in the large and growing scholarly digital collections. In this paper, we present KPRank, an unsupervised graph-based algorithm for keyphrase extraction that exploits both positional information and contextual word embeddings into a biased PageRank. Our experimental results on five benchmark datasets show that KPRank that uses contextual word embeddings with additional position signal outperforms previous approaches and strong baselines for this task.
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