Haris Widjaja
2022
KGxBoard: Explainable and Interactive Leaderboard for Evaluation of Knowledge Graph Completion Models
Haris Widjaja
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Kiril Gashteovski
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Wiem Ben Rim
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Pengfei Liu
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Christopher Malon
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Daniel Ruffinelli
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Carolin Lawrence
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Graham Neubig
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing: System Demonstrations
Knowledge Graphs (KGs) store information in the form of (head, predicate, tail)-triples. To augment KGs with new knowledge, researchers proposed models for KG Completion (KGC) tasks such as link prediction; i.e., answering (h; p; ?) or (?; p; t) queries. Such models are usually evaluated with averaged metrics on a held-out test set. While useful for tracking progress, averaged single-score metrics cannotreveal what exactly a model has learned — or failed to learn. To address this issue, we propose KGxBoard: an interactive framework for performing fine-grained evaluation on meaningful subsets of the data, each of which tests individual and interpretable capabilities of a KGC model. In our experiments, we highlight the findings that we discovered with the use of KGxBoard, which would have been impossible to detect with standard averaged single-score metrics.
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Co-authors
- Kiril Gashteovski 1
- Wiem Ben Rim 1
- Pengfei Liu 1
- Christopher Malon 1
- Daniel Ruffinelli 1
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