Effects of Locality and Rule Language on Explanations for Knowledge Graph Embeddings

Luis Galárraga
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Abstract

Knowledge graphs (KGs) are key tools in many AI-related tasks such as reasoning or question answering. This has, in turn, propelled research in link prediction in KGs, the task of predicting missing relationships from the available knowledge. Solutions based on KG embeddings have shown promising results in this matter. On the downside, these approaches are usually unable to explain their predictions. While some works have proposed to compute post-hoc rule explanations for embedding-based link predictors, these efforts have mostly resorted to rules with unbounded atoms, e.g., bornIn(x,y) =>residence(x,y), learned on a global scope, i.e., the entire KG. None of these works has considered the impact of rules with bounded atoms such as nationality(x,England) =>speaks(x, English), or the impact of learning from regions of the KG, i.e., local scopes. We therefore study the effects of these factors on the quality of rule-based explanations for embedding-based link predictors. Our results suggest that more specific rules and local scopes can improve the accuracy of the explanations. Moreover, these rules can provide further insights about the inner-workings of KG embeddings for link prediction.
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局部性和规则语言对知识图嵌入解释的影响
知识图(KGs)是许多人工智能相关任务(如推理或问题回答)的关键工具。这反过来又推动了KGs中链接预测的研究,即从现有知识中预测缺失关系的任务。基于KG嵌入的解决方案在这个问题上显示了令人鼓舞的结果。不利的一面是,这些方法通常无法解释它们的预测。虽然一些工作已经提出计算基于嵌入的链接预测器的事后规则解释,但这些努力大多采用无界原子的规则,例如,bornIn(x,y) =>residence(x,y),在全局范围内学习,即整个KG。这些作品都没有考虑到有界原子规则的影响,比如国籍(x,England) =>说话(x, English),或者从KG的区域(即本地范围)学习的影响。因此,我们研究了这些因素对基于嵌入的链接预测器的基于规则的解释质量的影响。我们的研究结果表明,更具体的规则和局部范围可以提高解释的准确性。此外,这些规则可以进一步了解链接预测中KG嵌入的内部工作原理。
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