论文标题
复杂的关系提取:挑战和机遇
Complex Relation Extraction: Challenges and Opportunities
论文作者
论文摘要
关系提取旨在确定文本中实体的目标关系。关系提取对于知识基础构建和文本理解非常重要。传统的二进制关系提取,包括受监督的,半监督和遥远的监督者,已得到广泛的研究,并取得了重大的结果。近年来,提出了许多复杂的关系提取任务,即简单二元关系提取的变体,以满足实践中的复杂应用。但是,迄今为止,没有文献可以充分研究和总结这些复杂的关系提取有效。在本文中,我们首先报道了传统简单二进制关系提取的最新进展。然后,我们总结了现有的复杂关系提取任务,并介绍了每个任务的定义,最新进度,挑战和机遇。
Relation extraction aims to identify the target relations of entities in texts. Relation extraction is very important for knowledge base construction and text understanding. Traditional binary relation extraction, including supervised, semi-supervised and distant supervised ones, has been extensively studied and significant results are achieved. In recent years, many complex relation extraction tasks, i.e., the variants of simple binary relation extraction, are proposed to meet the complex applications in practice. However, there is no literature to fully investigate and summarize these complex relation extraction works so far. In this paper, we first report the recent progress in traditional simple binary relation extraction. Then we summarize the existing complex relation extraction tasks and present the definition, recent progress, challenges and opportunities for each task.