基于知识图的链接预测神经符号系统

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Semantic Web Pub Date : 2023-06-07 DOI:10.3233/sw-233324
Ariam Rivas, D. Collarana, M. Torrente, Maria-Esther Vidal
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引用次数: 3

摘要

神经符号人工智能(AI)专注于整合符号和子符号系统,以提高预测模型的性能和可解释性。符号方法和子符号方法在如何表示数据和利用数据特征得出结论方面存在根本的不同。神经符号系统最近在科学界受到了极大的关注。然而,尽管在神经-符号整合方面做出了努力,符号处理仍然可以更好地利用,主要是当这些混合方法被定义在知识图之上时。这项工作是建立在知识图可以自然地表示数据与其上下文含义(即知识)之间的融合的声明之上的。我们提出了一种混合系统,该系统采用符号推理,表示为演绎数据库,以增强知识图中实体的上下文含义,从而提高使用知识图嵌入(KGE)模型实现的链接预测的性能。实体上下文被定义为知识图谱中实体的自我网络。给定一个链接预测任务,该方法在知识图(KG)上预测任务的正反面对应的实体的自我网络中推导出新的RDF三元组。由于知识图可能是不完整的和稀疏的,通过符号系统推导出的事实不仅降低了稀疏性,而且在构成实体自我网络的实体之间建立了明确的有意义的关系。作为概念验证,我们的方法应用于肺癌的KG来预测治疗效果。实证结果揭示了演绎数据库的演绎能力。他们指出,在自我网络中建立明确的推导关系,使所有研究的KGE模型都能产生更准确的联系。
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A neuro-symbolic system over knowledge graphs for link prediction
Neuro-Symbolic Artificial Intelligence (AI) focuses on integrating symbolic and sub-symbolic systems to enhance the performance and explainability of predictive models. Symbolic and sub-symbolic approaches differ fundamentally in how they represent data and make use of data features to reach conclusions. Neuro-symbolic systems have recently received significant attention in the scientific community. However, despite efforts in neural-symbolic integration, symbolic processing can still be better exploited, mainly when these hybrid approaches are defined on top of knowledge graphs. This work is built on the statement that knowledge graphs can naturally represent the convergence between data and their contextual meaning (i.e., knowledge). We propose a hybrid system that resorts to symbolic reasoning, expressed as a deductive database, to augment the contextual meaning of entities in a knowledge graph, thus, improving the performance of link prediction implemented using knowledge graph embedding (KGE) models. An entity context is defined as the ego network of the entity in a knowledge graph. Given a link prediction task, the proposed approach deduces new RDF triples in the ego networks of the entities corresponding to the heads and tails of the prediction task on the knowledge graph (KG). Since knowledge graphs may be incomplete and sparse, the facts deduced by the symbolic system not only reduce sparsity but also make explicit meaningful relations among the entities that compose an entity ego network. As a proof of concept, our approach is applied over a KG for lung cancer to predict treatment effectiveness. The empirical results put the deduction power of deductive databases into perspective. They indicate that making explicit deduced relationships in the ego networks empowers all the studied KGE models to generate more accurate links.
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来源期刊
Semantic Web
Semantic Web COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
8.30
自引率
6.70%
发文量
68
期刊介绍: The journal Semantic Web – Interoperability, Usability, Applicability brings together researchers from various fields which share the vision and need for more effective and meaningful ways to share information across agents and services on the future internet and elsewhere. As such, Semantic Web technologies shall support the seamless integration of data, on-the-fly composition and interoperation of Web services, as well as more intuitive search engines. The semantics – or meaning – of information, however, cannot be defined without a context, which makes personalization, trust, and provenance core topics for Semantic Web research. New retrieval paradigms, user interfaces, and visualization techniques have to unleash the power of the Semantic Web and at the same time hide its complexity from the user. Based on this vision, the journal welcomes contributions ranging from theoretical and foundational research over methods and tools to descriptions of concrete ontologies and applications in all areas. We especially welcome papers which add a social, spatial, and temporal dimension to Semantic Web research, as well as application-oriented papers making use of formal semantics.
期刊最新文献
Using Wikidata lexemes and items to generate text from abstract representations Editorial: Special issue on Interactive Semantic Web Empowering the SDM-RDFizer tool for scaling up to complex knowledge graph creation pipelines1 Special Issue on Semantic Web for Industrial Engineering: Research and Applications Declarative generation of RDF-star graphs from heterogeneous data
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