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Article

Reinforced Keyphrase Generation with Multi-Dimensional Reward

Published: 17 September 2024 Publication History

Abstract

Keyphrase Generation(KG), aiming to generate a set of keyphrases from source documents to help people quickly understand sufficient information, is always a fundamental task in natural language processing. Traditional KG models tend to focus on the correctness of predictions but ignore the similarity between predictions and ground-truth keyphrases, restraining the model from learning deep semantic patterns. To address this problem, we propose a Multi-Dimensional Reward Reinforcement Learning model (MDRRL) for keyphrase generation. Specifically, MDRRL consists of two components: an Actor network that can generate keyphrases and interact with the environment and a Critic network that evaluates the behavior of the Actor network and provides corresponding reward. Additionally, we propose a Multi-Dimensional Reward (MDR) within the reinforcement learning framework, which accounts for both semantic similarity and quantity, to incentivize the model to generate more semantically appropriate and competent keyphrases. Experiments on five datasets show that our proposed Reinforcement Learning framework using Multi-Dimensional Reward outperforms the traditional keyphrase generation frameworks based on evaluation metrics.

References

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Information

Published In

cover image Guide Proceedings
Artificial Neural Networks and Machine Learning – ICANN 2024: 33rd International Conference on Artificial Neural Networks, Lugano, Switzerland, September 17–20, 2024, Proceedings, Part VII
Sep 2024
475 pages
ISBN:978-3-031-72349-0
DOI:10.1007/978-3-031-72350-6

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 17 September 2024

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  1. Keyphrase generation
  2. Reinforcement learning
  3. Actor-critic

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