Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath
In recent years, with the continuous development of deep learning and knowledge graph reasoning methods, more and more researchers have shown great interest in improving knowledge graph reasoning methods by inferring missing facts through reasoning. By searching paths on the knowledge graph and maki...
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sg-ntu-dr.10356-1814692024-12-07T16:48:55Z Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath Lin, Shiming Ye, Ling Zhuang, Yijie Lu, Lingyun Zheng, Shaoqiu Huang, Chenxi Ng, Eddie Yin Kwee School of Mechanical and Aerospace Engineering Engineering Intelligent agent Knowledge graph reasoning In recent years, with the continuous development of deep learning and knowledge graph reasoning methods, more and more researchers have shown great interest in improving knowledge graph reasoning methods by inferring missing facts through reasoning. By searching paths on the knowledge graph and making fact and link predictions based on these paths, deep learning-based Reinforcement Learning (RL) agents can demonstrate good performance and interpretability. Therefore, deep reinforcement learning-based knowledge reasoning methods have rapidly emerged in recent years and have become a hot research topic. However, even in a small and fixed knowledge graph reasoning action space, there are still a large number of invalid actions. It often leads to the interruption of RL agents’ wandering due to the selection of invalid actions, resulting in a significant decrease in the success rate of path mining. In order to improve the success rate of RL agents in the early stages of path search, this article proposes a knowledge reasoning method based on Deep Transfer Reinforcement Learning path (DTRLpath). Before supervised pre-training and retraining, a pre-task of searching for effective actions in a single step is added. The RL agent is first trained in the pre-task to improve its ability to search for effective actions. Then, the trained agent is transferred to the target reasoning task for path search training, which improves its success rate in searching for target task paths. Finally, based on the comparative experimental results on the FB15K-237 and NELL-995 datasets, it can be concluded that the proposed method significantly improves the success rate of path search and outperforms similar methods in most reasoning tasks. Published version This research was supported by Key Laboratory of Information System Requirement, No. LHZZ202202, Natural Science Foundation of Xinjiang Uyghur Autonomous Region (2023D01C55) and Scientific Research Program of the Higher Education Institution of Xinjiang (XJEDU2023P127). 2024-12-03T05:11:00Z 2024-12-03T05:11:00Z 2024 Journal Article Lin, S., Ye, L., Zhuang, Y., Lu, L., Zheng, S., Huang, C. & Ng, E. Y. K. (2024). Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath. Computers, Materials and Continua, 80(1), 299-317. https://dx.doi.org/10.32604/cmc.2024.051379 1546-2218 https://hdl.handle.net/10356/181469 10.32604/cmc.2024.051379 2-s2.0-85200404762 1 80 299 317 en Computers, Materials and Continua © 2024 The Author(s). Published by Tech Science Press. This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. application/pdf |
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Engineering Intelligent agent Knowledge graph reasoning Lin, Shiming Ye, Ling Zhuang, Yijie Lu, Lingyun Zheng, Shaoqiu Huang, Chenxi Ng, Eddie Yin Kwee Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
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In recent years, with the continuous development of deep learning and knowledge graph reasoning methods, more and more researchers have shown great interest in improving knowledge graph reasoning methods by inferring missing facts through reasoning. By searching paths on the knowledge graph and making fact and link predictions based on these paths, deep learning-based Reinforcement Learning (RL) agents can demonstrate good performance and interpretability. Therefore, deep reinforcement learning-based knowledge reasoning methods have rapidly emerged in recent years and have become a hot research topic. However, even in a small and fixed knowledge graph reasoning action space, there are still a large number of invalid actions. It often leads to the interruption of RL agents’ wandering due to the selection of invalid actions, resulting in a significant decrease in the success rate of path mining. In order to improve the success rate of RL agents in the early stages of path search, this article proposes a knowledge reasoning method based on Deep Transfer Reinforcement Learning path (DTRLpath). Before supervised pre-training and retraining, a pre-task of searching for effective actions in a single step is added. The RL agent is first trained in the pre-task to improve its ability to search for effective actions. Then, the trained agent is transferred to the target reasoning task for path search training, which improves its success rate in searching for target task paths. Finally, based on the comparative experimental results on the FB15K-237 and NELL-995 datasets, it can be concluded that the proposed method significantly improves the success rate of path search and outperforms similar methods in most reasoning tasks. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Lin, Shiming Ye, Ling Zhuang, Yijie Lu, Lingyun Zheng, Shaoqiu Huang, Chenxi Ng, Eddie Yin Kwee |
format |
Article |
author |
Lin, Shiming Ye, Ling Zhuang, Yijie Lu, Lingyun Zheng, Shaoqiu Huang, Chenxi Ng, Eddie Yin Kwee |
author_sort |
Lin, Shiming |
title |
Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
title_short |
Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
title_full |
Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
title_fullStr |
Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
title_full_unstemmed |
Knowledge reasoning method based on deep transfer reinforcement learning: DTRLpath |
title_sort |
knowledge reasoning method based on deep transfer reinforcement learning: dtrlpath |
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2024 |
url |
https://hdl.handle.net/10356/181469 |
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1819112974865924096 |