Contextualization Distillation from Large Language Model for Knowledge Graph Completion

Findings Pub Date : 2024-01-28 DOI:10.48550/arXiv.2402.01729
Dawei Li, Zhen Tan, Tianlong Chen, Huan Liu
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Abstract

While textual information significantly enhances the performance of pre-trained language models (PLMs) in knowledge graph completion (KGC), the static and noisy nature of existing corpora collected from Wikipedia articles or synsets definitions often limits the potential of PLM-based KGC models. To surmount these challenges, we introduce the Contextualization Distillation strategy, a versatile plug-in-and-play approach compatible with both discriminative and generative KGC frameworks. Our method begins by instructing large language models (LLMs) to transform compact, structural triplets into context-rich segments. Subsequently, we introduce two tailored auxiliary tasks—reconstruction and contextualization—allowing smaller KGC models to assimilate insights from these enriched triplets. Comprehensive evaluations across diverse datasets and KGC techniques highlight the efficacy and adaptability of our approach, revealing consistent performance enhancements irrespective of underlying pipelines or architectures. Moreover, our analysis makes our method more explainable and provides insight into how to generate high-quality corpora for KGC, as well as the selection of suitable distillation tasks.
从大型语言模型中提炼语境,促进知识图谱的完善
虽然文本信息能显著提高预训练语言模型(PLM)在知识图谱补全(KGC)中的性能,但从维基百科文章或同义词集定义中收集的现有语料库的静态和噪声特性往往限制了基于 PLM 的 KGC 模型的潜力。为了克服这些挑战,我们引入了语境化蒸馏策略,这是一种通用的即插即用方法,与判别式和生成式 KGC 框架兼容。我们的方法首先指示大型语言模型(LLM)将结构紧凑的三连音转换为语境丰富的片段。随后,我们引入了两个量身定制的辅助任务--重构和语境化--允许较小的 KGC 模型从这些丰富的三连音中吸收洞察力。对不同数据集和 KGC 技术的全面评估凸显了我们方法的有效性和适应性,揭示了与底层管道或架构无关的一致的性能提升。此外,我们的分析使我们的方法更易于解释,并为如何为 KGC 生成高质量语料库以及选择合适的提炼任务提供了启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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