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arxiv:2411.17863

LongKey: Keyphrase Extraction for Long Documents

Published on Nov 26
ยท Submitted by jeohalves on Nov 29
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Abstract

In an era of information overload, manually annotating the vast and growing corpus of documents and scholarly papers is increasingly impractical. Automated keyphrase extraction addresses this challenge by identifying representative terms within texts. However, most existing methods focus on short documents (up to 512 tokens), leaving a gap in processing long-context documents. In this paper, we introduce LongKey, a novel framework for extracting keyphrases from lengthy documents, which uses an encoder-based language model to capture extended text intricacies. LongKey uses a max-pooling embedder to enhance keyphrase candidate representation. Validated on the comprehensive LDKP datasets and six diverse, unseen datasets, LongKey consistently outperforms existing unsupervised and language model-based keyphrase extraction methods. Our findings demonstrate LongKey's versatility and superior performance, marking an advancement in keyphrase extraction for varied text lengths and domains.

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edited 19 days ago

Excited to share our preprint, LongKey: Keyphrase Extraction for Long Documents, is now on arXiv! ๐ŸŽ‰

๐Ÿ“ข Accepted for IEEE BigData 2024!
๐Ÿ’ป Code: https://github.com/jeohalves/longkey

Screenshot From 2024-11-28 10-51-26.png

"LongKey is introduced, a novel framework for extracting keyphrases from lengthy documents, which uses an encoder-based language model to capture extended text intricacies and a max-pooling embedder to enhance keyphrase candidate representation."

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