Predicting Instance Type Assertions in Knowledge Graphs Using Stochastic Neural Networks

T. Weller, Maribel Acosta
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引用次数: 5

Abstract

Instance type information is particularly relevant to perform reasoning and obtain further information about entities in knowledge graphs (KGs). However, during automated or pay-as-you-go KG construction processes, instance types might be incomplete or missing in some entities. Previous work focused mostly on representing entities and relations as embeddings based on the statements in the KG. While the computed embeddings encode semantic descriptions and preserve the relationship between the entities, the focus of these methods is often not on predicting schema knowledge, but on predicting missing statements between instances for completing the KG. To fill this gap, we propose an approach that first learns a KG representation suitable for predicting instance type assertions. Then, our solution implements a neural network architecture to predict instance types based on the learned representation. Results show that our representations of entities are much more separable with respect to their associations with classes in the KG, compared to existing methods. For this reason, the performance of predicting instance types on a large number of KGs, in particular on cross-domain KGs with a high variety of classes, is significantly better in terms of F1-score than previous work.
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利用随机神经网络预测知识图中的实例类型断言
实例类型信息与执行推理和获取知识图(KGs)中实体的进一步信息特别相关。然而,在自动化或按需付费的KG构建过程中,实例类型可能在某些实体中不完整或缺失。以前的工作主要集中在基于KG中的语句将实体和关系表示为嵌入。虽然计算的嵌入编码语义描述并保留实体之间的关系,但这些方法的重点通常不是预测模式知识,而是预测完成KG的实例之间缺失的语句。为了填补这一空白,我们提出了一种方法,该方法首先学习适合预测实例类型断言的KG表示。然后,我们的解决方案实现了一个基于学习表征的神经网络架构来预测实例类型。结果表明,与现有方法相比,我们的实体表示在与KG中的类的关联方面更加可分离。因此,在大量KGs上预测实例类型的性能,特别是在具有多种类别的跨域KGs上,在f1得分方面明显优于以前的工作。
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