Question Classification Using Extreme Learning Machine on Semantic Features

In statistical machine learning approaches for question classification, efforts based on lexical feature space require high computation power and complex data structures. This is due to the large number of unique words (or high dimensionality). Choosing semantic features instead could significantly...

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Main Authors: H. Hardy, Yu-N Cheah
Format: Article
Language:English
Published: ITB Journal Publisher 2014-11-01
Series:Journal of ICT Research and Applications
Online Access:http://journals.itb.ac.id/index.php/jictra/article/view/831
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spelling doaj-ca8f8c8b59b145708cf10d1be4d6d27a2020-11-25T00:10:57ZengITB Journal PublisherJournal of ICT Research and Applications2337-57872338-54992014-11-0171365810.5614/itbj.ict.res.appl.2013.7.1.3544Question Classification Using Extreme Learning Machine on Semantic FeaturesH. Hardy0Yu-N Cheah1Department of Computer Science, STMIK MikroskilSchool of Computer Sciences, Universiti Sains MalaysiaIn statistical machine learning approaches for question classification, efforts based on lexical feature space require high computation power and complex data structures. This is due to the large number of unique words (or high dimensionality). Choosing semantic features instead could significantly reduce the dimensionality of the feature space. This article describes the use of Extreme Learning Machine (ELM) for question classification based on semantic features to improve both the training and testing speeds compared to the benchmark Support Vector Machine (SVM) classifier. Improvements have also been made to the head word extraction and word sense disambiguation processes. These have resulted in a higher accuracy (an increase of 0.2%) for the classification of coarse classes compared to the benchmark. For the fine classes, however, there is a 1.0% decrease in accuracy but is compensated by a significant increase in speed (92.1% on average).http://journals.itb.ac.id/index.php/jictra/article/view/831
collection DOAJ
language English
format Article
sources DOAJ
author H. Hardy
Yu-N Cheah
spellingShingle H. Hardy
Yu-N Cheah
Question Classification Using Extreme Learning Machine on Semantic Features
Journal of ICT Research and Applications
author_facet H. Hardy
Yu-N Cheah
author_sort H. Hardy
title Question Classification Using Extreme Learning Machine on Semantic Features
title_short Question Classification Using Extreme Learning Machine on Semantic Features
title_full Question Classification Using Extreme Learning Machine on Semantic Features
title_fullStr Question Classification Using Extreme Learning Machine on Semantic Features
title_full_unstemmed Question Classification Using Extreme Learning Machine on Semantic Features
title_sort question classification using extreme learning machine on semantic features
publisher ITB Journal Publisher
series Journal of ICT Research and Applications
issn 2337-5787
2338-5499
publishDate 2014-11-01
description In statistical machine learning approaches for question classification, efforts based on lexical feature space require high computation power and complex data structures. This is due to the large number of unique words (or high dimensionality). Choosing semantic features instead could significantly reduce the dimensionality of the feature space. This article describes the use of Extreme Learning Machine (ELM) for question classification based on semantic features to improve both the training and testing speeds compared to the benchmark Support Vector Machine (SVM) classifier. Improvements have also been made to the head word extraction and word sense disambiguation processes. These have resulted in a higher accuracy (an increase of 0.2%) for the classification of coarse classes compared to the benchmark. For the fine classes, however, there is a 1.0% decrease in accuracy but is compensated by a significant increase in speed (92.1% on average).
url http://journals.itb.ac.id/index.php/jictra/article/view/831
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