Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy

The paper presents a new system for ECG (ElectroCardioGraphy) signal recognition using different neural classifiers and a binary decision tree to provide one more processing stage to give the final recognition result. As the base classifiers, the three classical neural models, i.e., the MLP (Multi L...

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Main Authors: Tran Hoai Linh, Pham Van Nam, Vuong Hoang Nam
Format: Article
Language:English
Published: Sciendo 2014-09-01
Series:International Journal of Applied Mathematics and Computer Science
Subjects:
Online Access:https://doi.org/10.2478/amcs-2014-0047
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spelling doaj-7a5429f51b604e68ac9723ed8b3dfbdb2021-09-06T19:41:08ZengSciendoInternational Journal of Applied Mathematics and Computer Science2083-84922014-09-0124364765510.2478/amcs-2014-0047amcs-2014-0047Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracyTran Hoai Linh0Pham Van Nam1Vuong Hoang Nam2School of Electrical Engineering Hanoi University of Science and Technology, Dai Co Viet Str., No. 1, Hanoi, VietnamSchool of Electrical Engineering Hanoi University of Science and Technology, Dai Co Viet Str., No. 1, Hanoi, VietnamSchool of Electrical Engineering Hanoi University of Science and Technology, Dai Co Viet Str., No. 1, Hanoi, VietnamThe paper presents a new system for ECG (ElectroCardioGraphy) signal recognition using different neural classifiers and a binary decision tree to provide one more processing stage to give the final recognition result. As the base classifiers, the three classical neural models, i.e., the MLP (Multi Layer Perceptron), modified TSK (Takagi-Sugeno-Kang) and the SVM (Support Vector Machine), will be applied. The coefficients in ECG signal decomposition using Hermite basis functions and the peak-to-peak periods of the ECG signals will be used as features for the classifiers. Numerical experiments will be performed for the recognition of different types of arrhythmia in the ECG signals taken from the MIT-BIH (Massachusetts Institute of Technology and Boston’s Beth Israel Hospital) Arrhythmia Database. The results will be compared with individual base classifiers’ performances and with other integration methods to show the high quality of the proposed solutionhttps://doi.org/10.2478/amcs-2014-0047neural classifiersintegration of classifiersdecision treearrhythmia recognitionhermite basis function decomposition
collection DOAJ
language English
format Article
sources DOAJ
author Tran Hoai Linh
Pham Van Nam
Vuong Hoang Nam
spellingShingle Tran Hoai Linh
Pham Van Nam
Vuong Hoang Nam
Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
International Journal of Applied Mathematics and Computer Science
neural classifiers
integration of classifiers
decision tree
arrhythmia recognition
hermite basis function decomposition
author_facet Tran Hoai Linh
Pham Van Nam
Vuong Hoang Nam
author_sort Tran Hoai Linh
title Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
title_short Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
title_full Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
title_fullStr Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
title_full_unstemmed Multiple neural network integration using a binary decision tree to improve the ECG signal recognition accuracy
title_sort multiple neural network integration using a binary decision tree to improve the ecg signal recognition accuracy
publisher Sciendo
series International Journal of Applied Mathematics and Computer Science
issn 2083-8492
publishDate 2014-09-01
description The paper presents a new system for ECG (ElectroCardioGraphy) signal recognition using different neural classifiers and a binary decision tree to provide one more processing stage to give the final recognition result. As the base classifiers, the three classical neural models, i.e., the MLP (Multi Layer Perceptron), modified TSK (Takagi-Sugeno-Kang) and the SVM (Support Vector Machine), will be applied. The coefficients in ECG signal decomposition using Hermite basis functions and the peak-to-peak periods of the ECG signals will be used as features for the classifiers. Numerical experiments will be performed for the recognition of different types of arrhythmia in the ECG signals taken from the MIT-BIH (Massachusetts Institute of Technology and Boston’s Beth Israel Hospital) Arrhythmia Database. The results will be compared with individual base classifiers’ performances and with other integration methods to show the high quality of the proposed solution
topic neural classifiers
integration of classifiers
decision tree
arrhythmia recognition
hermite basis function decomposition
url https://doi.org/10.2478/amcs-2014-0047
work_keys_str_mv AT tranhoailinh multipleneuralnetworkintegrationusingabinarydecisiontreetoimprovetheecgsignalrecognitionaccuracy
AT phamvannam multipleneuralnetworkintegrationusingabinarydecisiontreetoimprovetheecgsignalrecognitionaccuracy
AT vuonghoangnam multipleneuralnetworkintegrationusingabinarydecisiontreetoimprovetheecgsignalrecognitionaccuracy
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