Within the emerging research efforts to combine structured and unstructured knowledge, many approaches incorporate factual knowledge, e.g., available in form of structured knowledge graphs (KGs), into pre-trained language models (PLMs) and then apply the knowledge-enhanced PLMs to downstream NLP tasks. However, (1) they typically only consider \textit{static} factual knowledge, whereas, e.g., knowledge graphs (KGs) also contain \textit{temporal facts} or \textit{events} indicating evolutionary relationships among entities at different timestamps. (2) PLMs cannot be directly applied to many KG tasks, such as temporal KG completion. In this paper, we focus on \textbf{e}nhancing temporal knowledge embeddings with \textbf{co}ntextualized \textbf{la}nguage representations (ECOLA). We align structured knowledge, contained in temporal knowledge graphs, with their textual descriptions extracted from news articles, and propose a novel knowledge-text prediction task to inject the abundant information from descriptions into temporal knowledge embeddings. ECOLA jointly optimizes the knowledge-text prediction objective and the temporal knowledge embeddings, which can simultaneously take full advantage of textual and knowledge information. The proposed fusion method is model-agnostic and can be combined with potentially any temporal KG model. For training ECOLA, we introduce three temporal KG datasets with aligned textual descriptions. Experimental results on the temporal knowledge graph completion task show that ECOLA outperforms state-of-the-art temporal KG models by a large margin. The proposed datasets can serve as new temporal KG benchmarks and facilitate future research on structured and unstructured knowledge integration.
翻译:在新兴的将结构化和非结构化知识结合起来的研究工作中,许多方法都包含事实知识,例如,以结构化知识图表的形式提供的事实知识,这些知识以结构化知识图的形式(KGs),可以直接应用于预培训语言模型(PLMs),然后将知识强化的PLMs应用到下游NLP任务中。然而,(1)这些方法通常只考虑Textit{staty}事实知识,而例如,知识图(KGs)也包含\ textit{时间性事实}或\textit{evit{events} 表明各实体在不同时间戳中的进化关系。 (2) PLMs不能直接应用于许多KG任务,例如TextKG完成。在本论文中,我们侧重于将时间强化的Textbf{co}texticalformation 嵌入到\textlegalGral-Oral-deal-Oral-Oral-Oral-deal-Oral-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal trilal-lation k-lation k-deal-deal-deal-deal-lational-deal-deal-deal-deal-deal-deal-deal-lational-lational-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-mod-mod-mod-mod-mod-modeal-modeal-modeal-deal-mod-mod-mod-mod-moal-moal-deal-deal-modal-mod-mod-mod-modal-mod-mod-mod-mod-mod-mod-moal-moal-moal-mod-mod-mod-mod-modeal-mode-mod-mod-moal-mod-mode