Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules
This study focuses on using hybrid n-grams as grammar rules for detecting grammatical errors and providing corrections in Filipino. These grammar rules are derived from grammatically-correct and tagged texts which are made up of part-of-speech (POS) tags, lemmas, and surface words sequences. Due to...
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oai:animorepository.dlsu.edu.ph:faculty_research-15832022-01-06T01:52:08Z Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules Go, Matthew Phillip Borra, Allan This study focuses on using hybrid n-grams as grammar rules for detecting grammatical errors and providing corrections in Filipino. These grammar rules are derived from grammatically-correct and tagged texts which are made up of part-of-speech (POS) tags, lemmas, and surface words sequences. Due to the structure of the rules used by this system, it presents an opportunity to have an unsupervised grammar checker for Filipino when coupled with existing POS taggers and morphological analyzers. The approach is also customized to cover different error types present in the Filipino language. The system achieved 82% accuracy when tested on checking erroneous and error-free texts. 2016-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/584 Faculty Research Work Animo Repository Filipino language—Grammar Network grammar Computational linguistics Computer Sciences South and Southeast Asian Languages and Societies |
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De La Salle University |
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De La Salle University Library |
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Philippines Philippines |
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Filipino language—Grammar Network grammar Computational linguistics Computer Sciences South and Southeast Asian Languages and Societies |
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Filipino language—Grammar Network grammar Computational linguistics Computer Sciences South and Southeast Asian Languages and Societies Go, Matthew Phillip Borra, Allan Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
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This study focuses on using hybrid n-grams as grammar rules for detecting grammatical errors and providing corrections in Filipino. These grammar rules are derived from grammatically-correct and tagged texts which are made up of part-of-speech (POS) tags, lemmas, and surface words sequences. Due to the structure of the rules used by this system, it presents an opportunity to have an unsupervised grammar checker for Filipino when coupled with existing POS taggers and morphological analyzers. The approach is also customized to cover different error types present in the Filipino language. The system achieved 82% accuracy when tested on checking erroneous and error-free texts. |
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Go, Matthew Phillip Borra, Allan |
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Go, Matthew Phillip Borra, Allan |
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Go, Matthew Phillip |
title |
Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
title_short |
Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
title_full |
Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
title_fullStr |
Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
title_full_unstemmed |
Developing an unsupervised grammar checker for Filipino using hybrid n-grams as grammar rules |
title_sort |
developing an unsupervised grammar checker for filipino using hybrid n-grams as grammar rules |
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Animo Repository |
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2016 |
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https://animorepository.dlsu.edu.ph/faculty_research/584 |
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