论文标题
在知识图嵌入,软件库,应用和挑战上的鸟类视图
A Birds Eye View on Knowledge Graph Embeddings, Software Libraries, Applications and Challenges
论文作者
论文摘要
近年来,考虑到网络搜索,关系预测,自然语言处理,信息检索,答案的问题,知识图(KG)的开发吸引了重要的研究。但是,由于知识图完成(KGC)已成为研究的一个子域,因此KG通常是不完整的,以自动追踪kg中缺失的连接。已经提出了许多策略来制定基于不同表示程序的kgc,该程序旨在将三元组嵌入到低维的矢量空间中。鉴于与KGC有关的困难,世界各地的研究人员都试图理解问题陈述的属性。这项研究旨在概述知识库,并结合不同的挑战及其影响。我们讨论了现有的KGC方法,包括最新的知识图嵌入(KGE),不仅在静态图上,而且在最新趋势上,例如多模式,时间和不确定的知识图。此外,审查了加强学习技术,以将复杂查询作为链接预测问题进行建模。随后,我们探索了用于模型培训的流行软件包,并研究可以指导未来研究的开放研究挑战。
In recent years, Knowledge Graph (KG) development has attracted significant researches considering the applications in web search, relation prediction, natural language processing, information retrieval, question answering to name a few. However, often KGs are incomplete due to which Knowledge Graph Completion (KGC) has emerged as a sub-domain of research to automatically track down the missing connections in a KG. Numerous strategies have been suggested to work out the KGC dependent on different representation procedures intended to embed triples into a low-dimensional vector space. Given the difficulties related to KGC, researchers around the world are attempting to comprehend the attributes of the problem statement. This study intends to provide an overview of knowledge bases combined with different challenges and their impacts. We discuss existing KGC approaches, including the state-of-the-art Knowledge Graph Embeddings (KGE), not only on static graphs but also for the latest trends such as multimodal, temporal, and uncertain knowledge graphs. In addition, reinforcement learning techniques are reviewed to model complex queries as a link prediction problem. Subsequently, we explored popular software packages for model training and examine open research challenges that can guide future research.