Abstract

Entity alignment (EA) finds equivalent entities that are located in different knowledge graphs (KGs), which is an essential step to enhance the quality of KGs, and hence of significance to downstream applications (e.g., question answering and recommendation). Recent years have witnessed a rapid increase of EA approaches, yet the relative performance of them remains unclear, partly due to the incomplete empirical evaluations, as well as the fact that comparisons were carried out under different settings (i.e., datasets, information used as input, etc.). In this paper, we fill in the gap by conducting a comprehensive evaluation and detailed analysis of state-of-the-art EA approaches. We first propose a general EA framework that encompasses all the current methods, and then group existing methods into three major categories. Next, we judiciously evaluate these solutions on a wide range of use cases, based on their effectiveness, efficiency and robustness. Finally, we construct a new EA dataset to mirror the real-life challenges of alignment, which were largely overlooked by existing literature. This study strives to provide a clear picture of the strengths and weaknesses of current EA approaches, so as to inspire quality follow-up research.

Highlights

  • Recent years have witnessed the proliferation of knowledge graphs (KGs) and their applications

  • Among the approaches merely using the KG structure, RSNs consistently achieves the best results in terms of both Hits@1 and mean reciprocal rank (MRR), which can be ascribed to the fact that the long-term relational paths it captures provide more structural signals for alignment

  • We focus on the differences from DBP15K, as well as the patterns specific to this dataset

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Summary

Introduction

Recent years have witnessed the proliferation of knowledge graphs (KGs) and their applications. The triples in a KG are intrinsically interlinked, constituting a large graph of knowledge. We have a large number of general KGs (e.g., DBpedia [1], YAGO [52], Google’s Knowledge Vault [14]), and domain-specific KGs (e.g., Medical [48] and Scientific KGs [56]). These KGs have been leveraged to enhance various downstream applications, such as keyword search [64], fact checking [30], question answering [12], [28], etc. In order to consolidate knowledge among KGs, one pivotal step is to align equivalent entities in different KGs, which is termed entity alignment (EA) [7], [25] 1

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