Information Extraction Using Semantic Relation Learning And Greedy Mapping
In this thesis, the work is motivated to learn the extraction of significant information from natural language text and specify the meanings of the content. The work of information extraction and mapping results in three main challenges. First, to propose a generic and flexible framework that integrat...
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my-mmu-ep.71522018-05-25T08:17:00Z Information Extraction Using Semantic Relation Learning And Greedy Mapping 2016-09 Saravadee, Sae Tan QA75.5-76.95 Electronic computers. Computer science In this thesis, the work is motivated to learn the extraction of significant information from natural language text and specify the meanings of the content. The work of information extraction and mapping results in three main challenges. First, to propose a generic and flexible framework that integrates the information extraction and mapping processes into a workflow, such that it can be easily adapted to changes and requirements. Second, to define a representation model that is able to cater various structures with different features and characteristics. Third, to propose a learning algorithm for information extraction and mapping with minimum training effort. In order to address these challenges, a flexible information extraction and mapping framework, SemIE (Semantic-based Information Extraction and Mapping), is proposed. SemIE identifies significant relations from domain-specific text by utilising a semantic structure that describes the domain of discourse. 2016-09 Thesis http://shdl.mmu.edu.my/7152/ http://library.mmu.edu.my/diglib/onlinedb/dig_lib.php phd doctoral Multimedia University Faculty of Computing and Informatics |
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Multimedia University |
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MMU Institutional Repository |
topic |
QA75.5-76.95 Electronic computers Computer science |
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QA75.5-76.95 Electronic computers Computer science Saravadee, Sae Tan Information Extraction Using Semantic Relation Learning And Greedy Mapping |
description |
In this thesis, the work is motivated to learn the extraction of significant information from natural language text and specify the meanings of the content. The work of information extraction and mapping results in three main challenges. First, to propose a generic and flexible framework that integrates the information extraction and mapping processes into a workflow, such that it can be easily adapted to changes and requirements. Second, to define a representation model that is able to cater various structures with different features and characteristics. Third, to propose a learning algorithm for information extraction and mapping with minimum training effort. In order to address these challenges, a flexible information extraction and mapping framework, SemIE (Semantic-based Information Extraction and Mapping), is proposed. SemIE identifies significant relations from domain-specific text by utilising a semantic structure that describes the domain of discourse. |
format |
Thesis |
qualification_name |
Doctor of Philosophy (PhD.) |
qualification_level |
Doctorate |
author |
Saravadee, Sae Tan |
author_facet |
Saravadee, Sae Tan |
author_sort |
Saravadee, Sae Tan |
title |
Information Extraction Using Semantic Relation Learning And Greedy Mapping |
title_short |
Information Extraction Using Semantic Relation Learning And Greedy Mapping |
title_full |
Information Extraction Using Semantic Relation Learning And Greedy Mapping |
title_fullStr |
Information Extraction Using Semantic Relation Learning And Greedy Mapping |
title_full_unstemmed |
Information Extraction Using Semantic Relation Learning And Greedy Mapping |
title_sort |
information extraction using semantic relation learning and greedy mapping |
granting_institution |
Multimedia University |
granting_department |
Faculty of Computing and Informatics |
publishDate |
2016 |
_version_ |
1747829654563061760 |