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Main Authors: Li, Chen, Zheng, Haotian, Sun, Yiping, Wang, Cangqing, Yu, Liqiang, Chang, Che, Tian, Xinyu, Liu, Bo
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.05801
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author Li, Chen
Zheng, Haotian
Sun, Yiping
Wang, Cangqing
Yu, Liqiang
Chang, Che
Tian, Xinyu
Liu, Bo
author_facet Li, Chen
Zheng, Haotian
Sun, Yiping
Wang, Cangqing
Yu, Liqiang
Chang, Che
Tian, Xinyu
Liu, Bo
contents In the realm of computational knowledge representation, Knowledge Graph Reasoning (KG-R) stands at the forefront of facilitating sophisticated inferential capabilities across multifarious domains. The quintessence of this research elucidates the employment of reinforcement learning (RL) strategies, notably the REINFORCE algorithm, to navigate the intricacies inherent in multi-hop KG-R. This investigation critically addresses the prevalent challenges introduced by the inherent incompleteness of Knowledge Graphs (KGs), which frequently results in erroneous inferential outcomes, manifesting as both false negatives and misleading positives. By partitioning the Unified Medical Language System (UMLS) benchmark dataset into rich and sparse subsets, we investigate the efficacy of pre-trained BERT embeddings and Prompt Learning methodologies to refine the reward shaping process. This approach not only enhances the precision of multi-hop KG-R but also sets a new precedent for future research in the field, aiming to improve the robustness and accuracy of knowledge inference within complex KG frameworks. Our work contributes a novel perspective to the discourse on KG reasoning, offering a methodological advancement that aligns with the academic rigor and scholarly aspirations of the Natural journal, promising to invigorate further advancements in the realm of computational knowledge representation.
format Preprint
id arxiv_https___arxiv_org_abs_2403_05801
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Multi-Hop Knowledge Graph Reasoning through Reward Shaping Techniques
Li, Chen
Zheng, Haotian
Sun, Yiping
Wang, Cangqing
Yu, Liqiang
Chang, Che
Tian, Xinyu
Liu, Bo
Artificial Intelligence
In the realm of computational knowledge representation, Knowledge Graph Reasoning (KG-R) stands at the forefront of facilitating sophisticated inferential capabilities across multifarious domains. The quintessence of this research elucidates the employment of reinforcement learning (RL) strategies, notably the REINFORCE algorithm, to navigate the intricacies inherent in multi-hop KG-R. This investigation critically addresses the prevalent challenges introduced by the inherent incompleteness of Knowledge Graphs (KGs), which frequently results in erroneous inferential outcomes, manifesting as both false negatives and misleading positives. By partitioning the Unified Medical Language System (UMLS) benchmark dataset into rich and sparse subsets, we investigate the efficacy of pre-trained BERT embeddings and Prompt Learning methodologies to refine the reward shaping process. This approach not only enhances the precision of multi-hop KG-R but also sets a new precedent for future research in the field, aiming to improve the robustness and accuracy of knowledge inference within complex KG frameworks. Our work contributes a novel perspective to the discourse on KG reasoning, offering a methodological advancement that aligns with the academic rigor and scholarly aspirations of the Natural journal, promising to invigorate further advancements in the realm of computational knowledge representation.
title Enhancing Multi-Hop Knowledge Graph Reasoning through Reward Shaping Techniques
topic Artificial Intelligence
url https://arxiv.org/abs/2403.05801