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论文
A Hierarchical N-Gram Framework for Zero-Shot Link Prediction
发布时间:2025-10-22点击次数:
发表刊物: Findings of the Association for Computational Linguistics: EMNLP 2022 (EMNLP)
摘要: Knowledge graphs typically contain a large number of entities but often cover only a fraction of all relations between them (i.e., incompleteness). Zero-shot link prediction (ZSLP) is a popular way to tackle the problem by automatically identifying unobserved relations between entities. Most recent approaches use textual features of relations (e.g., surface names or textual descriptions) as auxiliary information to improve the encoded representation. These methods lack robustness as they are bound to support only tokens from a fixed vocabulary and are unable to model out-of-vocabulary (OOV) words. Subword units such as character n-grams have the capability of generating more expressive representations for OOV words. Hence, in this paper, we propose a Hierarchical N-gram framework for Zero-Shot Link Prediction (HNZSLP) that leverages character n-gram information for ZSLP. Our approach works by first constructing a hierarchical n-gram graph from the surface name of relations. Subsequently, a new Transformer-based network models the hierarchical n-gram graph to learn a relation embedding for ZSLP. Experimental results show that our proposed HNZSLP method achieves state-of-the-art performance on two standard ZSLP datasets.
合写作者: Mingchen Li,陈俊帆, Samuel Mensah, Nikolaos Aletras, Xiulong Yang, Yang Ye
论文类型: 国际学术会议
页面范围: 2498-2509
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发表时间: 2022-01-01