Development of semantic feature engineering for statistical analysis on parse ranking
In this report, the use of semantic information in parse selection is investigated. It is shown that increasing sense-based semantic features based on deep linguistic processing directly helps improving the effectiveness of parse selection. A Python software model was implemented to carry out featur...
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sg-ntu-dr.10356-523092023-03-03T20:27:28Z Development of semantic feature engineering for statistical analysis on parse ranking Yin, Xiaocheng. Koe Choon Chiaw, Lawrence School of Computer Engineering Centre for Advanced Information Systems Kim Jung-Jae Francis Bond DRNTU::Engineering::Computer science and engineering::Information systems::Information storage and retrieval DRNTU::Humanities::Linguistics::Semantics In this report, the use of semantic information in parse selection is investigated. It is shown that increasing sense-based semantic features based on deep linguistic processing directly helps improving the effectiveness of parse selection. A Python software model was implemented to carry out feature engineering on semantic parsing results by parsers and the data was from SemCor corpus. Different types of semantic features are generated using the model and training and testing was conducted using a maximum entropy model TADM. Also, baseline features are generalized upwards in the WordNet hierarchy to help investigate the effectiveness of disambiguation in parse selection. Generalized features provide better parse selection accuracy than more specific features. Bachelor of Engineering (Computer Engineering) 2013-05-06T01:46:59Z 2013-05-06T01:46:59Z 2013 2013 Final Year Project (FYP) http://hdl.handle.net/10356/52309 en Nanyang Technological University 71 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Information systems::Information storage and retrieval DRNTU::Humanities::Linguistics::Semantics Yin, Xiaocheng. Development of semantic feature engineering for statistical analysis on parse ranking |
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In this report, the use of semantic information in parse selection is investigated. It is shown that increasing sense-based semantic features based on deep linguistic processing directly helps improving the effectiveness of parse selection. A Python software model was implemented to carry out feature engineering on semantic parsing results by parsers and the data was from SemCor corpus. Different types of semantic features are generated using the model and training and testing was conducted using a maximum entropy model TADM. Also, baseline features are generalized upwards in the WordNet hierarchy to help investigate the effectiveness of disambiguation in parse selection. Generalized features provide better parse selection accuracy than more specific features. |
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Koe Choon Chiaw, Lawrence |
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Koe Choon Chiaw, Lawrence Yin, Xiaocheng. |
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Final Year Project |
author |
Yin, Xiaocheng. |
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Yin, Xiaocheng. |
title |
Development of semantic feature engineering for statistical analysis on parse ranking |
title_short |
Development of semantic feature engineering for statistical analysis on parse ranking |
title_full |
Development of semantic feature engineering for statistical analysis on parse ranking |
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Development of semantic feature engineering for statistical analysis on parse ranking |
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Development of semantic feature engineering for statistical analysis on parse ranking |
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development of semantic feature engineering for statistical analysis on parse ranking |
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2013 |
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http://hdl.handle.net/10356/52309 |
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1759853178662158336 |