ZeroKBC: A Comprehensive Benchmark for Zero-Shot Knowledge Base Completion

Pei Chen, Wenlin Yao, Hongming Zhang, Xiaoman Pan, Dian Yu, Dong Yu, Jianshu Chen
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Abstract

Knowledge base completion (KBC) aims to predict the missing links in knowledge graphs. Previous KBC tasks and approaches mainly focus on the setting where all test entities and relations have appeared in the training set. However, there has been limited research on the zero-shot KBC settings, where we need to deal with unseen entities and relations that emerge in a constantly growing knowledge base. In this work, we systematically examine different possible scenarios of zero-shot KBC and develop a comprehensive benchmark, ZeroKBC, that covers these scenarios with diverse types of knowledge sources. Our systematic analysis reveals several missing yet important zero-shot KBC settings. Experimental results show that canonical and state-of-the-art KBC systems cannot achieve satisfactory performance on this challenging benchmark. By analyzing the strength and weaknesses of these systems on solving ZeroKBC, we further present several important observations and promising future directions.11Work was done during the internship at Tencent AI lab. The data and code are available at: https://github.com/brickee/ZeroKBC
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ZeroKBC:零射击知识库完成的综合基准
知识库补全(KBC)的目的是预测知识图中缺失的环节。以前的KBC任务和方法主要集中在所有测试实体和关系都出现在训练集中的设置上。然而,关于零射击KBC设置的研究有限,我们需要处理在不断增长的知识库中出现的看不见的实体和关系。在这项工作中,我们系统地研究了零射击KBC的不同可能场景,并开发了一个综合基准ZeroKBC,该基准涵盖了具有不同类型知识来源的这些场景。我们的系统分析揭示了几个缺失但重要的零射击KBC设置。实验结果表明,规范的和最先进的KBC系统不能在这个具有挑战性的基准上取得令人满意的性能。通过分析这些系统在解决ZeroKBC问题上的优缺点,我们进一步提出了一些重要的观察结果和有希望的未来方向。11工作是在腾讯AI实验室实习期间完成的。数据和代码可从https://github.com/brickee/ZeroKBC获得
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