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论清代“问答”体诗话
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作者 卢宇宁 《成都理工大学学报(社会科学版)》 2020年第4期84-87,共4页
“问答”体诗话是古代诗话发展到清代出现的新范式。这种新体诗话以“问答”体式突破了传统诗话的理论建构模式,并透露着清代诗学繁荣的重要信息。“问答”体诗话记载的师生诗友间诗学讨论具有诗学沙龙的性质和特色,沙龙式诗学讨论导致... “问答”体诗话是古代诗话发展到清代出现的新范式。这种新体诗话以“问答”体式突破了传统诗话的理论建构模式,并透露着清代诗学繁荣的重要信息。“问答”体诗话记载的师生诗友间诗学讨论具有诗学沙龙的性质和特色,沙龙式诗学讨论导致了高端诗论的提出。诗歌批评是“问答”体话的重要内容,既重诗人人品又不因人废诗等批评理念及对杜甫“溢美献佞”之诗的批判实践,不但在古代诗歌批评史上具有典范意义,也是当代人所应继承发扬的宝贵诗学财富。 展开更多
关键词 清代 “问答”体 诗话
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A multi-attention RNN-based relation linking approach for question answering over knowledge base 被引量:1
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作者 Li Huiying Zhao Man Yu Wenqi 《Journal of Southeast University(English Edition)》 EI CAS 2020年第4期385-392,共8页
Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural... Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural network(RNN)model is proposed,which works for both simple and complex questions.First,the vector representations of questions are learned by the bidirectional long short-term memory(Bi-LSTM)model at the word and character levels,and named entities in questions are labeled by the conditional random field(CRF)model.Candidate entities are generated based on a dictionary,the disambiguation of candidate entities is realized based on predefined rules,and named entities mentioned in questions are linked to entities in knowledge base.Next,questions are classified into simple or complex questions by the machine learning method.Starting from the identified entities,for simple questions,one-hop relations are collected in the knowledge base as candidate relations;for complex questions,two-hop relations are collected as candidates.Finally,the multi-attention Bi-LSTM model is used to encode questions and candidate relations,compare their similarity,and return the candidate relation with the highest similarity as the result of relation linking.It is worth noting that the Bi-LSTM model with one attentions is adopted for simple questions,and the Bi-LSTM model with two attentions is adopted for complex questions.The experimental results show that,based on the effective entity linking method,the Bi-LSTM model with the attention mechanism improves the relation linking effectiveness of both simple and complex questions,which outperforms the existing relation linking methods based on graph algorithm or linguistics understanding. 展开更多
关键词 question answering over knowledge base(KBQA) entity linking relation linking multi-attention bidirectional long short-term memory(Bi-LSTM) large-scale complex question answering dataset(LC-QuAD)
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Geometric characterization for the least Lagrangian action of n-body problems
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作者 张世清 周青 《Science China Mathematics》 SCIE 2001年第1期15-20,共6页
For n-body problems with quasihomogeneous potentials in ?k (2[ n/2] ? k) we prove that the minimum of the Lagrangian action integral defined on the zero mean loop space is exactly the circles with center at the origin... For n-body problems with quasihomogeneous potentials in ?k (2[ n/2] ? k) we prove that the minimum of the Lagrangian action integral defined on the zero mean loop space is exactly the circles with center at the origin and the configuration of the n-bodies is always a regular n - 1 simplex with fixed side length. 展开更多
关键词 n-body problems Lagrangian action integral homographic solutions
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