TL;DR
i-Align is an interpretable knowledge graph alignment model that combines a novel Transformer-based encoder with explanation capabilities, improving alignment accuracy and transparency for KG curation.
Contribution
The paper introduces i-Align, a new KG alignment model that provides explanations for predictions while maintaining high performance, using a Transformer-based encoder with edge-gated attention.
Findings
Effective in aligning large KGs
Provides high-quality, interpretable explanations
Maintains high alignment accuracy
Abstract
Knowledge graphs (KGs) are becoming essential resources for many downstream applications. However, their incompleteness may limit their potential. Thus, continuous curation is needed to mitigate this problem. One of the strategies to address this problem is KG alignment, i.e., forming a more complete KG by merging two or more KGs. This paper proposes i-Align, an interpretable KG alignment model. Unlike the existing KG alignment models, i-Align provides an explanation for each alignment prediction while maintaining high alignment performance. Experts can use the explanation to check the correctness of the alignment prediction. Thus, the high quality of a KG can be maintained during the curation process (e.g., the merging process of two KGs). To this end, a novel Transformer-based Graph Encoder (Trans-GE) is proposed as a key component of i-Align for aggregating information from entities'…
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Taxonomy
MethodsMulti-Head Attention · Attention Is All You Need · Linear Layer · Softmax · Dense Connections · Layer Normalization · Dropout · Byte Pair Encoding · Adam · Position-Wise Feed-Forward Layer
