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Visual Pivoting for (Unsupervised) Entity Alignment

About

This work studies the use of visual semantic representations to align entities in heterogeneous knowledge graphs (KGs). Images are natural components of many existing KGs. By combining visual knowledge with other auxiliary information, we show that the proposed new approach, EVA, creates a holistic entity representation that provides strong signals for cross-graph entity alignment. Besides, previous entity alignment methods require human labelled seed alignment, restricting availability. EVA provides a completely unsupervised solution by leveraging the visual similarity of entities to create an initial seed dictionary (visual pivots). Experiments on benchmark data sets DBP15k and DWY15k show that EVA offers state-of-the-art performance on both monolingual and cross-lingual entity alignment tasks. Furthermore, we discover that images are particularly useful to align long-tail KG entities, which inherently lack the structural contexts necessary for capturing the correspondences.

Fangyu Liu, Muhao Chen, Dan Roth, Nigel Collier• 2020

Related benchmarks

TaskDatasetResultRank
Entity AlignmentDBP15K FR-EN
Hits@10.793
158
Entity AlignmentDBP15K JA-EN (test)
Hits@176.5
149
Entity AlignmentDBP15K ZH-EN
H@176.1
143
Entity AlignmentDBP15K ZH-EN (test)
Hits@181.1
134
Entity AlignmentDBP15K FR-EN (test)
Hits@179.3
133
Entity AlignmentDBP15K JA-EN
Hits@10.762
126
Entity AlignmentFB15K-DB15K 50% (train)
Hits@133.4
24
Entity AlignmentFB15K-YAGO15K (50% train)
Hits@10.311
24
Entity AlignmentOpenEA D-W V2 1.0 (test)
H@192.5
22
Entity AlignmentDBP15K FR-EN v1 (test)
Hits@179.3
20
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