学习知识图中的三重序列模式以预测不一致性

Mahmoud Elbattah, C. Ryan
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引用次数: 0

摘要

当前语义网和关联数据的趋势导致了前所未有的数据量在关联开放数据(LOD)云上不断发布。海量知识图(KGs)是基于大量非结构化数据构建和丰富的。然而,KGs的数据质量仍然可能受到各种不一致、误解或信息不完整的影响。本研究探讨了利用KG三元组的主谓宾结构(SPO)来检测可能的不一致的可行性。关键思想依赖于使用freebase定义的实体类型来提取KG中唯一的SPO模式。使用机器学习,预测不一致性的问题可以作为一个序列分类任务来处理。使用Freebase KG的一个子集对方法的适用性进行了实验,其中包括大约6M个三元组。实验证明了使用Convnet和LSTM模型检测不一致序列的良好效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Triple Sequence Patterns in Knowledge Graphs to Predict Inconsistencies
The current trend towards the Semantic Web and Linked Data has resulted in an unprecedented volume of data being continuously published on the Linked Open Data (LOD) cloud. Massive Knowledge Graphs (KGs) are increasingly constructed and enriched based on large amounts of unstructured data. However, the data quality of KGs can still suffer from a variety of inconsistencies, misinterpretations or incomplete information as well. This study investigates the feasibility of utilising the subject-predicate-object (SPO) structure of KG triples to detect possible inconsistencies. The key idea is hinged on using the Freebase-defined entity types for extracting the unique SPO patterns in the KG. Using Machine learning, the problem of predicting inconsistencies could be approached as a sequence classification task. The approach applicability was experimented using a subset of the Freebase KG, which included about 6M triples. The experiments proved promising results using Convnet and LSTM models for detecting inconsistent sequences.
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