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Main Authors: Liu, Lihui, Wang, Zihao, Zhou, Dawei, Wang, Ruijie, Yan, Yuchen, Xiong, Bo, He, Sihong, Shu, Kai, Tong, Hanghang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.03720
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author Liu, Lihui
Wang, Zihao
Zhou, Dawei
Wang, Ruijie
Yan, Yuchen
Xiong, Bo
He, Sihong
Shu, Kai
Tong, Hanghang
author_facet Liu, Lihui
Wang, Zihao
Zhou, Dawei
Wang, Ruijie
Yan, Yuchen
Xiong, Bo
He, Sihong
Shu, Kai
Tong, Hanghang
contents Knowledge graphs (KGs) are ubiquitous and widely used in various applications. However, most real-world knowledge graphs are incomplete, which significantly degrades their performance on downstream tasks. Additionally, the relationships in real-world knowledge graphs often follow a long-tail distribution, meaning that most relations are represented by only a few training triplets. To address these challenges, few-shot learning has been introduced. Few-shot KG completion aims to make accurate predictions for triplets involving novel relations when only a limited number of training triplets are available. Although many methods have been proposed, they typically learn each relation individually, overlooking the correlations between different tasks and the relevant information in previously trained tasks. In this paper, we propose a transfer learning-based few-shot KG completion method (TransNet). By learning the relationships between different tasks, TransNet effectively transfers knowledge from similar tasks to improve the current task's performance. Furthermore, by employing meta-learning, TransNet can generalize effectively to new, unseen relations. Extensive experiments on benchmark datasets demonstrate the superiority of TransNet over state-of-the-art methods. Code can be found at https://github.com/lihuiliullh/TransNet/tree/main
format Preprint
id arxiv_https___arxiv_org_abs_2504_03720
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TransNet: Transfer Knowledge for Few-shot Knowledge Graph Completion
Liu, Lihui
Wang, Zihao
Zhou, Dawei
Wang, Ruijie
Yan, Yuchen
Xiong, Bo
He, Sihong
Shu, Kai
Tong, Hanghang
Artificial Intelligence
Machine Learning
Knowledge graphs (KGs) are ubiquitous and widely used in various applications. However, most real-world knowledge graphs are incomplete, which significantly degrades their performance on downstream tasks. Additionally, the relationships in real-world knowledge graphs often follow a long-tail distribution, meaning that most relations are represented by only a few training triplets. To address these challenges, few-shot learning has been introduced. Few-shot KG completion aims to make accurate predictions for triplets involving novel relations when only a limited number of training triplets are available. Although many methods have been proposed, they typically learn each relation individually, overlooking the correlations between different tasks and the relevant information in previously trained tasks. In this paper, we propose a transfer learning-based few-shot KG completion method (TransNet). By learning the relationships between different tasks, TransNet effectively transfers knowledge from similar tasks to improve the current task's performance. Furthermore, by employing meta-learning, TransNet can generalize effectively to new, unseen relations. Extensive experiments on benchmark datasets demonstrate the superiority of TransNet over state-of-the-art methods. Code can be found at https://github.com/lihuiliullh/TransNet/tree/main
title TransNet: Transfer Knowledge for Few-shot Knowledge Graph Completion
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2504.03720