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Linguistic Theory Based Contextual Evidence Mining for Statistical Chinese Co-Reference Resolution
作者姓名:Jun  Zhao  and  Fei-Fan  Liu
作者单位:National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing 100080, China
基金项目:Supported by the National Natural Science Foundation of China High Technology Development 863 Program of China under Grant No under Grant No. 4052027. under Grant Nos. 60372016, 60121302, 60673042, the National 2006AA01Z144, and the Natural Science Foundation of Beijing
摘    要:Under statistical learning framework, the paper focuses on how to use traditional linguistic findings on anaphora resolution as a guide for mining and organizing contextual features for Chinese co-reference resolution. The main achievements are as follows. (1) In order to simulate "syntactic and semantic parallelism factor", we extract "bags of word form and POS" feature and "bag of seines" feature from the contexts of the entity mentions and incorporate them into the baseline feature set. (2) Because it is too coarse to use the feature of bags of word form, POS tag and seme to determine the syntactic and semantic parallelism between two entity mentions, we propose a method for contextual feature reconstruction based on semantic similarity computation, in order that the reconstructed contextual features could better approximate the anaphora resolution factor of "Syntactic and Semantic Parallelism Preferences". (3) We use an entity-mention-based contextual feature representation instead of isolated word-based contextual feature representation, and expand the size of the contextual windows in addition, in order to approximately simulate "the selectional restriction factor" for anaphora resolution. The experiments show that the multi-level contextual features are useful for co-reference resolution, and the statistical system incorporated with these features performs well on the standard ACE datasets.

关 键 词:自然语言处理  信息提取  基准分辨率  重复分辨率
收稿时间:4 July 2006
修稿时间:2006-07-042007-03-19

Linguistic Theory Based Contextual Evidence Mining for Statistical Chinese Co-Reference Resolution
Jun Zhao and Fei-Fan Liu.Linguistic Theory Based Contextual Evidence Mining for Statistical Chinese Co-Reference Resolution[J].Journal of Computer Science and Technology,2007,22(4):608-617.
Authors:Jun Zhao  Fei-Fan Liu
Affiliation:National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing 100080, China
Abstract:Under statistical learning framework,the paper focuses on how to use traditional linguistic findings on anaphora resolution as a guide for mining and organizing contextual features for Chinese co-reference resolution.The main achieve- ments are as follows.(1)In order to simulate"syntactic and semantic parallelism factor",we extract"bags of word form and POS"feature and"bag of semes"feature from the contexts of the entity mentions and incorporate them into the baseline feature set.(2)Because it is too coarse to use the feature of bags of word form,POS tag and seme to determine the syntactic and semantic parallelism between two entity mentions,we propose a method for contextual feature reconstruction based on semantic similarity computation,in order that the reconstructed contextual features could better approximate the anaphora resolution factor of"Syntactic and Semantic Parallelism Preferences".(3)We use an entity-mention-based contextual fea- ture representation instead of isolated word-based contextual feature representation,and expand the size of the contextual windows in addition,in order to approximately simulate"he selectional restriction factor"for anaphora resolution.The experiments show that the multi-level contextual features are useful for co-reference resolution,and the statistical system incorporated with these features performs well on the standard ACE datasets.
Keywords:natural language processing  information extraction  co-reference resolution  anaphora resolution
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