PDEC: A Framework for Improving Knowledge Graph Reasoning Performance through Predicate Decomposition

Algorithms Pub Date : 2024-03-21 DOI:10.3390/a17030129
Xin Tian, Yuan Meng
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Abstract

The judicious configuration of predicates is a crucial but often overlooked aspect in the field of knowledge graphs. While previous research has primarily focused on the precision of triples in assessing knowledge graph quality, the rationality of predicates has been largely ignored. This paper introduces an innovative approach aimed at enhancing knowledge graph reasoning by addressing the issue of predicate polysemy. Predicate polysemy refers to instances where a predicate possesses multiple meanings, introducing ambiguity into the knowledge graph. We present an adaptable optimization framework that effectively addresses predicate polysemy, thereby enhancing reasoning capabilities within knowledge graphs. Our approach serves as a versatile and generalized framework applicable to any reasoning model, offering a scalable and flexible solution to enhance performance across various domains and applications. Through rigorous experimental evaluations, we demonstrate the effectiveness and adaptability of our methodology, showing significant improvements in knowledge graph reasoning accuracy. Our findings underscore that discerning predicate polysemy is a crucial step towards achieving a more dependable and efficient knowledge graph reasoning process. Even in the age of large language models, the optimization and induction of predicates remain relevant in ensuring interpretable reasoning.
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PDEC:通过谓词分解提高知识图谱推理性能的框架
在知识图谱领域,谓词的合理配置是一个至关重要但却经常被忽视的方面。以往的研究在评估知识图谱质量时主要关注三元组的精确性,而谓词的合理性却在很大程度上被忽视了。本文介绍了一种创新方法,旨在通过解决谓词多义性问题来增强知识图谱推理能力。谓词多义是指一个谓词具有多种含义,从而给知识图谱带来歧义的情况。我们提出了一个可调整的优化框架,它能有效解决谓词多义性问题,从而增强知识图谱的推理能力。我们的方法是一个通用的通用框架,适用于任何推理模型,提供了一个可扩展的灵活解决方案,以提高各个领域和应用的性能。通过严格的实验评估,我们证明了我们方法的有效性和适应性,显示了知识图谱推理准确性的显著提高。我们的研究结果强调,辨别谓词多义性是实现更可靠、更高效的知识图谱推理过程的关键一步。即使在大型语言模型时代,谓词的优化和归纳在确保可解释推理方面仍然具有重要意义。
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