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基于最大熵分类器的语义角色标注
引用本文:刘挺,车万翔,李生.基于最大熵分类器的语义角色标注[J].软件学报,2007,18(3):565-573.
作者姓名:刘挺  车万翔  李生
作者单位:哈尔滨工业大学,计算机科学与技术学院,黑龙江,哈尔滨,150001
摘    要:语义角色标注是浅层语义分析的一种可行方案.描述了一个采用最大熵分类器的语义角色标注系统,该系统把句法成分作为语义标注的基本单元,用最大熵分类器对句子中谓词的语义角色同时进行识别和分类.最大熵分类器中使用了一些有用的特征及其组合.在后处理阶段,在具有嵌套关系的结果中,只有概率最高的语义角色被保留.在预测了全部能够在句法分析树中找到匹配成分的角色以后,采用简单的后处理规则去识别那些找不到匹配成分的角色.最终在开发集和测试集上分别获得了75.49%和75.60%的F1值,此结果是已知的基于单一句法

关 键 词:语义角色标注  浅层语义分析  最大熵分类器
收稿时间:2005-09-27
修稿时间:3/9/2006 12:00:00 AM

Semantic Role Labeling with Maximum Entropy Classifier
LIU Ting,CHE Wan-Xiang and LI Sheng.Semantic Role Labeling with Maximum Entropy Classifier[J].Journal of Software,2007,18(3):565-573.
Authors:LIU Ting  CHE Wan-Xiang and LI Sheng
Affiliation:School of Computer Science and Technology, Harbin Institute of Technology, Harbin 150001, China
Abstract:Semantic role labeling is a feasible proposal to shallow semantic parsing. A maximum entropy classifier is used in the semantic role labeling system, which takes syntactic constituents as the labeled units. Some useful features and their combinations are used in the classifier. In the post-processing step, only the roles with the highest probability among the embedding ones are kept. After predicting all the arguments, which have matched the constituents in full parsing trees, a simple rule-based post-processing is applied to correct the arguments that have not matched the constituents in these trees. F1=75.49% and F1=75.60% results are obtained on the development and test set respectively. So far as it is known, this is the best result based on single syntactic parser in literatures. Finally, some proposals for soving the difficulties in semantic role labeling and the future works are given.
Keywords:semantic role labeling  shallow semantic parsing  maximum entropy classifier
本文献已被 CNKI 维普 万方数据 等数据库收录!
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