Fine tuning on support vector regression parameters for personalized english word-error correction algorithm

A better understanding on word classification and regression could lead to a better detection and correction technique. We used different features or attributes to represent a machine-printed English word, and support vector machines is used to evaluate those features into two class types of word: c...

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Main Authors: Hasan, A.B., Kiong, T.S., Paw, J.K.S., Tasrip, E., Azmi, M.S.M.
Format: Article
Language:en_US
Published: 2017
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Institution: Universiti Tenaga Nasional
Language: en_US
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spelling my.uniten.dspace-58112018-01-03T07:32:21Z Fine tuning on support vector regression parameters for personalized english word-error correction algorithm Hasan, A.B. Kiong, T.S. Paw, J.K.S. Tasrip, E. Azmi, M.S.M. A better understanding on word classification and regression could lead to a better detection and correction technique. We used different features or attributes to represent a machine-printed English word, and support vector machines is used to evaluate those features into two class types of word: correct and wrong word. Our proposed support vectors model classified the words by using fewer words during the training process because those training words are to be considered as personalized words. Those wrong words could be replaced by correct words predicted by the regression process. Our results are very encouraging when compared with Microsoft's spell checker, and further improvement is in sight. 2017-12-08T07:26:22Z 2017-12-08T07:26:22Z 2012 Article https://www.scopus.com/record/display.uri?eid=2-s2.0-84867162827&origin=resultslist&sort=plf-f&src=s&sid=6c60b32433ff7c7c7b9f48dd16febdb6&sot en_US Australian Journal of Basic and Applied Sciences Volume 6, Issue 6, June 2012, Pages 15-20
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language en_US
description A better understanding on word classification and regression could lead to a better detection and correction technique. We used different features or attributes to represent a machine-printed English word, and support vector machines is used to evaluate those features into two class types of word: correct and wrong word. Our proposed support vectors model classified the words by using fewer words during the training process because those training words are to be considered as personalized words. Those wrong words could be replaced by correct words predicted by the regression process. Our results are very encouraging when compared with Microsoft's spell checker, and further improvement is in sight.
format Article
author Hasan, A.B.
Kiong, T.S.
Paw, J.K.S.
Tasrip, E.
Azmi, M.S.M.
spellingShingle Hasan, A.B.
Kiong, T.S.
Paw, J.K.S.
Tasrip, E.
Azmi, M.S.M.
Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
author_facet Hasan, A.B.
Kiong, T.S.
Paw, J.K.S.
Tasrip, E.
Azmi, M.S.M.
author_sort Hasan, A.B.
title Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
title_short Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
title_full Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
title_fullStr Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
title_full_unstemmed Fine tuning on support vector regression parameters for personalized english word-error correction algorithm
title_sort fine tuning on support vector regression parameters for personalized english word-error correction algorithm
publishDate 2017
_version_ 1644493781802680320