Knowledge Graphs (KGs), representing facts as triples, have been widely adopted in many applications. Reasoning tasks such as link prediction and rule induction are important for the development of KGs. Knowledge Graph Embeddings (KGEs) embedding entities and relations of a KG into continuous vector spaces, have been proposed for these reasoning tasks and proven to be efficient and robust. But the plausibility and feasibility of applying and deploying KGEs in real-work applications has not been well-explored. In this paper, we discuss and report our experiences of deploying KGEs in a real domain application: e-commerce. We first identity three important desiderata for e-commerce KG systems: 1) attentive reasoning, reasoning over a few target relations of more concerns instead of all; 2) explanation, providing explanations for a prediction to help both users and business operators understand why the prediction is made; 3) transferable rules, generating reusable rules to accelerate the deployment of a KG to new systems. While non existing KGE could meet all these desiderata, we propose a novel one, an explainable knowledge graph attention network that make prediction through modeling correlations between triples rather than purely relying on its head entity, relation and tail entity embeddings. It could automatically selects attentive triples for prediction and records the contribution of them at the same time, from which explanations could be easily provided and transferable rules could be efficiently produced. We empirically show that our method is capable of meeting all three desiderata in our e-commerce application and outperform typical baselines on datasets from real domain applications.


翻译:代表三重事实的知识图表(KGs)在许多应用中被广泛采用。链接预测和规则上岗等理性任务对于KGs的发展很重要。知识图嵌入(KGes)将实体和KG关系嵌入连续矢量空间,这些推理任务已经提出,并证明是高效和有力的。但在实际应用中应用和部署KGes的可信度和可行性并没有得到很好的探讨。在本文中,我们讨论并报告了在真实域应用中部署KGes的经验:电子商务。我们首先为电子商务KG系统确定了三个重要的脱边应用:1)仔细推理,推理少数更多的关注点关系和KGs关系;2)解释,为预测提供解释,帮助用户和企业经营者理解作出预测的原因;3)可转让规则,为加快将KGs部署到新系统创造可重复规则。虽然非现有的KGeGeorge可以轻松地满足所有这些要求,但我们提议了一个可解释性知识图表关系,一个可解释性电子引用的网络,通过直径直径的模型预测,而不是通过真实的三重的尾线,通过模拟预测来预测,而不是模拟实体之间的直径直线,而进行。

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