Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees

The current paper deals with the use of multivariate data analysis and decision tree methods in order to reduce the feature set for the normal and special children speech in four different emotions: anger, happiness, neutral and sadness. Ten features were extracted, by an algorithm implemented in a...

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Main Authors: M. A. Siddiqui, S. A. Ali, N. G. Haider
Format: Article
Language:English
Published: D. G. Pylarinos 2018-08-01
Series:Engineering, Technology & Applied Science Research
Subjects:
PCA
Online Access:http://etasr.com/index.php/ETASR/article/view/2177
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spelling doaj-9553255a00b2446fbe148faa0119520f2020-12-02T16:23:48ZengD. G. PylarinosEngineering, Technology & Applied Science Research2241-44871792-80362018-08-0184591Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision TreesM. A. Siddiqui0S. A. Ali1N. G. Haider2Department of Software Engineering, NED University of Engineering and Technology, Karachi, PakistanDepartment of Computer Science & Information Technology, NED University of Engineering and Technology, Karachi, PakistanDepartment of Software Engineering, NED University of Engineering and Technology, Karachi, PakistanThe current paper deals with the use of multivariate data analysis and decision tree methods in order to reduce the feature set for the normal and special children speech in four different emotions: anger, happiness, neutral and sadness. Ten features were extracted, by an algorithm implemented in a previous study to classify the speech emotions of normal and special children. In the current study, the best features are selected using multivariate analysis: principal component analysis (PCA), factor analysis and decision tree. Step by step PCA is applied to reduce the feature set according to the variables that are collinear. The obtained reduced feature sets are applicable to both normal and special children samples. Experimental results revealed that PCA yields the feature set comprising pitch, intensity, formant, LPCC and rate of acceleration. Factor analysis provides three feature sets out of which the feature set comprising of Rasta PLP, MFCC, ZCR, and intensity provides the best result. Decision tree yields a feature set comprising energy, pitch and LPCC. http://etasr.com/index.php/ETASR/article/view/2177speech emotionsPCAfactor analysisdecision treefeatures
collection DOAJ
language English
format Article
sources DOAJ
author M. A. Siddiqui
S. A. Ali
N. G. Haider
spellingShingle M. A. Siddiqui
S. A. Ali
N. G. Haider
Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
Engineering, Technology & Applied Science Research
speech emotions
PCA
factor analysis
decision tree
features
author_facet M. A. Siddiqui
S. A. Ali
N. G. Haider
author_sort M. A. Siddiqui
title Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
title_short Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
title_full Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
title_fullStr Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
title_full_unstemmed Reduced Feature Set for Emotion Based Spoken Utterances of Normal and Special Children Using Multivariate Analysis and Decision Trees
title_sort reduced feature set for emotion based spoken utterances of normal and special children using multivariate analysis and decision trees
publisher D. G. Pylarinos
series Engineering, Technology & Applied Science Research
issn 2241-4487
1792-8036
publishDate 2018-08-01
description The current paper deals with the use of multivariate data analysis and decision tree methods in order to reduce the feature set for the normal and special children speech in four different emotions: anger, happiness, neutral and sadness. Ten features were extracted, by an algorithm implemented in a previous study to classify the speech emotions of normal and special children. In the current study, the best features are selected using multivariate analysis: principal component analysis (PCA), factor analysis and decision tree. Step by step PCA is applied to reduce the feature set according to the variables that are collinear. The obtained reduced feature sets are applicable to both normal and special children samples. Experimental results revealed that PCA yields the feature set comprising pitch, intensity, formant, LPCC and rate of acceleration. Factor analysis provides three feature sets out of which the feature set comprising of Rasta PLP, MFCC, ZCR, and intensity provides the best result. Decision tree yields a feature set comprising energy, pitch and LPCC.
topic speech emotions
PCA
factor analysis
decision tree
features
url http://etasr.com/index.php/ETASR/article/view/2177
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AT saali reducedfeaturesetforemotionbasedspokenutterancesofnormalandspecialchildrenusingmultivariateanalysisanddecisiontrees
AT nghaider reducedfeaturesetforemotionbasedspokenutterancesofnormalandspecialchildrenusingmultivariateanalysisanddecisiontrees
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