Exploring the limits of few-shot link prediction in knowledge graphs

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Abstract

Real-world knowledge graphs are often characterized by low-frequency relations-a challenge that has prompted an increasing interest in few-shot link prediction methods. These methods perform link prediction for a set of new relations, unseen during training, given only a few example facts of each relation at test time. In this work, we perform a systematic study on a spectrum of models derived by generalizing the current state of the art for few-shot link prediction, with the goal of probing the limits of learning in this few-shot setting. We find that a simple zero-shot baseline-which ignores any relation-specific information-achieves surprisingly strong performance. Moreover, experiments on carefully crafted synthetic datasets show that having only a few examples of a relation fundamentally limits models from using fine-grained structural information and only allows for exploiting the coarse-grained positional information of entities. Together, our findings challenge the implicit assumptions and inductive biases of prior work and highlight new directions for research in this area.

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APA

Jambor, D., Teru, K., Pineau, J., & Hamilton, W. L. (2021). Exploring the limits of few-shot link prediction in knowledge graphs. In EACL 2021 - 16th Conference of the European Chapter of the Association for Computational Linguistics, Proceedings of the Conference (pp. 2816–2822). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.eacl-main.245

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