ANALOGYKB: Unlocking Analogical Reasoning of Language Models with A Million-scale Knowledge Base
Yuan, Siyu, Chen, Jiangjie, Sun, Changzhi, Liang, Jiaqing, Xiao, Yanghua, Yang, Deqing
–arXiv.org Artificial Intelligence
Analogical reasoning is a fundamental cognitive ability of humans. However, current language models (LMs) still struggle to achieve human-like performance in analogical reasoning tasks due to a lack of resources for model training. In this work, we address this gap by proposing ANALOGYKB, a million-scale analogy knowledge base (KB) derived from existing knowledge graphs (KGs). ANALOGYKB identifies two types of analogies from the KGs: 1) analogies of the same relations, which can be directly extracted from the KGs, and 2) analogies of analogous relations, which are identified with a selection and filtering pipeline enabled by large LMs (InstructGPT), followed by minor human efforts for data quality control. Evaluations on a series of datasets of two analogical reasoning tasks (analogy recognition and generation) demonstrate that ANALOGYKB successfully enables LMs to achieve much better results than previous state-of-the-art methods.
arXiv.org Artificial Intelligence
May-10-2023
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