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Enhancing Keyphrase Generation by BART Finetuning with Splitting and Shuffling (2309.06726v1)

Published 13 Sep 2023 in cs.CL, cs.AI, cs.DL, and cs.NE

Abstract: Keyphrase generation is a task of identifying a set of phrases that best repre-sent the main topics or themes of a given text. Keyphrases are dividend int pre-sent and absent keyphrases. Recent approaches utilizing sequence-to-sequence models show effectiveness on absent keyphrase generation. However, the per-formance is still limited due to the hardness of finding absent keyphrases. In this paper, we propose Keyphrase-Focused BART, which exploits the differ-ences between present and absent keyphrase generations, and performs fine-tuning of two separate BART models for present and absent keyphrases. We further show effective approaches of shuffling keyphrases and candidate keyphrase ranking. For absent keyphrases, our Keyphrase-Focused BART achieved new state-of-the-art score on F1@5 in two out of five keyphrase gen-eration benchmark datasets.

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Authors (2)
  1. Bin Chen (547 papers)
  2. Mizuho Iwaihara (5 papers)
Citations (3)

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