文件名称:Kernel-for-Relation-Extraction
介绍说明--下载内容均来自于网络,请自行研究使用
最短的路径依赖关系提取
我们提出了一个新颖的方法来提取关系,根据观察断言之间的关系之间的两个命名实体在同一个句子1所需的信息通常是由两个实体之间的依赖关系图中的最短路径捕获。实验上提取的ACE(自动内容抽取)报纸语料表明,新的最短路径依赖内核外执行最近的做法,根据去依赖树内核顶层的关系-We present a novel approach to relation extraction, based on the observation that the information required to assert a rela-tionship between two named entities in the same sentence is typically captured by the shortest path between the two entities in the dependency graph. Experiments on extracting top-level relations from the ACE (Automated Content Extraction) newspaper corpus show that the new shortest path dependency kernel out-performs a recent approach based on de-pendency tree kernels
我们提出了一个新颖的方法来提取关系,根据观察断言之间的关系之间的两个命名实体在同一个句子1所需的信息通常是由两个实体之间的依赖关系图中的最短路径捕获。实验上提取的ACE(自动内容抽取)报纸语料表明,新的最短路径依赖内核外执行最近的做法,根据去依赖树内核顶层的关系-We present a novel approach to relation extraction, based on the observation that the information required to assert a rela-tionship between two named entities in the same sentence is typically captured by the shortest path between the two entities in the dependency graph. Experiments on extracting top-level relations from the ACE (Automated Content Extraction) newspaper corpus show that the new shortest path dependency kernel out-performs a recent approach based on de-pendency tree kernels
(系统自动生成,下载前可以参看下载内容)
下载文件列表
Kernel for Relation Extraction.pdf