摘要
将用户感兴趣的事件从非结构化信息中提取出来,然后以结构化的方式展示给用户,这就是事件抽取。事件抽取在信息收集、信息检索、文档合成、信息问答等方面有着广泛应用。从全局出发,事件抽取算法可以分为基于模式匹配的算法、触发词法、基于本体的算法以及前沿联合模型方法这四类。在研究过程中根据相关需求可使用不同评价方法和数据集,而不同的事件表示方法也与事件抽取研究有一定联系;以任务类型区分,元事件抽取和主题事件抽取是事件抽取的两大基本任务。其中,元事件抽取有基于模式匹配、基于机器学习和基于神经网络这三种方式,而主题事件抽取有基于事件框架和基于本体两种方式。事件抽取研究在中英等单语言上均已取得了优秀成果,而跨语言事件抽取依然面临着许多问题。最后,总结了事件抽取的相关工作并提出未来研究方向,以期为后续研究提供参考。
The event that the user is interested in is extracted from the unstructured information, and then displayed to the user in a structured way, that is event extraction. Event extraction has a wide range of applications in information collection, information retrieval, document synthesis, and information questioning and answering. From the overall perspective, event extraction algorithms can be divided into four categories: pattern matching algorithms, trigger lexical methods, ontology-based algorithms, and cutting-edge joint model methods. In the research process, different evaluation methods and datasets can be used according to the related needs, and different event representation methods are also related to event extraction research. Distinguished by task type, meta-event extraction and subject event extraction are the two basic tasks of event extraction. Among them, meta-event extraction has three methods based on pattern matching, machine learning and neural network respectively, while there are two ways to extract subjective events: based on the event framework and based on ontology respectively. Event extraction research has achieved excellent results in single languages such as Chinese and English, but cross-language event extraction still faces many problems. Finally, the related works of event extraction were summarized and the future research directions were prospected in order to provide guidelines for subsequent research.
作者
马春明
李秀红
李哲
王惠茹
杨丹
MA Chunming;LI Xiuhong;LI Zhe;WANG Huiru;YANG Dan(College of Information Science and Engineering,Xinjiang University,Urumqi Xinjiang 830046,China;Department of Electronic and Information Engineering,The Hong Kong Polytechnic University,Hong Kong 999077,China)
出处
《计算机应用》
CSCD
北大核心
2022年第10期2975-2989,共15页
journal of Computer Applications
基金
国家语委科研重点项目(ZDI135-96)。
关键词
事件抽取
事件表示
元事件抽取
主题事件抽取
跨语言事件抽取
event extraction
event representation
meta-event extraction
subject event extraction
cross-language event extraction