论文标题
动态关系维修以增强知识
Dynamic Relation Repairing for Knowledge Enhancement
论文作者
论文摘要
动态关系修复旨在有效地验证和修复知识图增强的实例(KGE),其中KGE捕获了从非结构化数据中捕获缺失的关系,并导致知识图的嘈杂事实。随着非结构化数据的繁荣,要求一种在线方法清洁新的RDF元素,然后再将其添加到知识库中。为了清洁嘈杂的RDF元素,图形约束处理是一种常见但棘手的方法。另外,将新的元组添加到知识图中时,将创建新的图形模式,而明确发现图形约束也很棘手。因此,尽管动态关系修复具有不幸的硬度,但在快速增长的非结构化数据下,这是一种有效增强知识图的必要方法。在此激励的情况下,我们建立了动态维修和增强结构,以分析其在基本操作上的硬度。为了确保动态修复和验证,我们基于局部图模式引入了隐式图限制,近似图形匹配以及链接预测。为了有效地验证和修复RDF元组,我们进一步研究了图形约束处理的冷启动问题。实际数据集的实验结果表明,我们提出的方法可以动态有效地捕获错误的关系标签。
Dynamic relation repair aims to efficiently validate and repair the instances for knowledge graph enhancement (KGE), where KGE captures missing relations from unstructured data and leads to noisy facts to the knowledge graph. With the prosperity of unstructured data, an online approach is asked to clean the new RDF tuples before adding them to the knowledge base. To clean the noisy RDF tuples, graph constraint processing is a common but intractable approach. Plus, when adding new tuples to the knowledge graph, new graph patterns would be created, whereas the explicit discovery of graph constraints is also intractable. Therefore, although the dynamic relation repair has an unfortunate hardness, it is a necessary approach for enhancing knowledge graphs effectively under the fast-growing unstructured data. Motivated by this, we establish a dynamic repairing and enhancing structure to analyze its hardness on basic operations. To ensure dynamic repair and validation, we introduce implicit graph constraints, approximate graph matching, and linkage prediction based on localized graph patterns. To validate and repair the RDF tuples efficiently, we further study the cold start problems for graph constraint processing. Experimental results on real datasets demonstrate that our proposed approach can capture and repair instances with wrong relation labels dynamically and effectively.