More: A Metric Learning Based Framework For Open-Domain Relation Extraction
Yutong Wang, Renze Lou, Kai Zhang, Mao Yan Chen, Yujiu Yang
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Open relation extraction (OpenRE) is a task of extracting relation schemes from open-domain corpora. Most existing OpenRE methods either do not fully benefit from high-quality labeled corpora or can not learn semantic representation directly, affecting downstream clustering efficiency. To address these problems, in this work, we propose a novel learning framework named MORE (Metric learning-based Open Relation Extraction). The framework utilizes deep metric learning (DML) to obtain rich supervision signals from labeled data and drive the neural model to learn semantic relational representation directly. Experiments result in two real-world datasets show that our method outperforms other state-of-the-art baselines.
Chairs:
Rivka Levitan