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基于语义知识的汉语句法结构排歧 被引量:12
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作者 苑春法 黄锦辉 李文捷 《中文信息学报》 CSCD 北大核心 1999年第1期1-8,共8页
汉语在词类这个语言层次上存在着许多歧义结构,这给汉语的自动句法分析带来了难以逾越的障碍。通过寻找汉语语义类之间可能存在的句法关系建立汉语语义关联网,这为用汉语语义知识来解决句法歧义开辟了道路。文章针对具体的汉语歧义结... 汉语在词类这个语言层次上存在着许多歧义结构,这给汉语的自动句法分析带来了难以逾越的障碍。通过寻找汉语语义类之间可能存在的句法关系建立汉语语义关联网,这为用汉语语义知识来解决句法歧义开辟了道路。文章针对具体的汉语歧义结构研究具体的解决办法,从而减少了计算的复杂度。 展开更多
关键词 语义关联网 依存语法 语义知识 汉语句法分析
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Context query and association discovery for collaborative environment
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作者 王桂玲 姜进磊 史美林 《Journal of Southeast University(English Edition)》 EI CAS 2006年第3期338-342,共5页
A context memory model and an approach for context query and association discovery are proposed. The context query is based on a resource description framework (RDF) dataset and SPARQL language. To discover collabor... A context memory model and an approach for context query and association discovery are proposed. The context query is based on a resource description framework (RDF) dataset and SPARQL language. To discover collaborative associations, an approach of transforming RDF named graphs into "context graph" is proposed. First, the definitions of the importance of the nodes and the weight assignment for the "context graph" are given. Secondly, the implementation of a spread activation algorithm based on "context graph" is proposed. An infrastructure is also built up in the collaborative context space (CCS) system to support context memory and knowledge discovery in a collaborative environment. 展开更多
关键词 ONTOLOGY context memory semantic web semantic association spread activation algorithm
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Temporality-enhanced knowledge memory network for factoid question answering
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作者 Xin-yu DUAN Si-liang TANG +5 位作者 Sheng-yu ZHANG Yin ZHANG Zhou ZHAO Jian-ru XUE Yue-ting ZHUANG Fei WU 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2018年第1期104-115,共12页
Question answering is an important problem that aims to deliver specific answers to questions posed by humans in natural language.How to efficiently identify the exact answer with respect to a given question has becom... Question answering is an important problem that aims to deliver specific answers to questions posed by humans in natural language.How to efficiently identify the exact answer with respect to a given question has become an active line of research.Previous approaches in factoid question answering tasks typically focus on modeling the semantic relevance or syntactic relationship between a given question and its corresponding answer.Most of these models suffer when a question contains very little content that is indicative of the answer.In this paper,we devise an architecture named the temporality-enhanced knowledge memory network(TE-KMN) and apply the model to a factoid question answering dataset from a trivia competition called quiz bowl.Unlike most of the existing approaches,our model encodes not only the content of questions and answers,but also the temporal cues in a sequence of ordered sentences which gradually remark the answer.Moreover,our model collaboratively uses external knowledge for a better understanding of a given question.The experimental results demonstrate that our method achieves better performance than several state-of-the-art methods. 展开更多
关键词 Question answering Knowledge memory Temporality interaction
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