Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose

In the application of electronic noses (E-noses), probabilistic prediction is a good way to estimate how confident we are about our prediction. In this work, a homemade E-nose system embedded with 16 metal-oxide semi-conductive gas sensors was used to discriminate nine kinds of ginsengs of different...

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Main Authors: You Wang, Jiacheng Miao, Xiaofeng Lyu, Linfeng Liu, Zhiyuan Luo, Guang Li
Format: Article
Language:English
Published: MDPI AG 2016-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/16/7/1088
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spelling doaj-72cd575b45474ac3801337474931b0992020-11-25T00:01:32ZengMDPI AGSensors1424-82202016-07-01167108810.3390/s16071088s16071088Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic NoseYou Wang0Jiacheng Miao1Xiaofeng Lyu2Linfeng Liu3Zhiyuan Luo4Guang Li5State Key Laboratory of Industrial Control Technology, Institute of Cyber Systems and Control, Zhejiang University, Hangzhou 310027, Zhejiang, ChinaState Key Laboratory of Industrial Control Technology, Institute of Cyber Systems and Control, Zhejiang University, Hangzhou 310027, Zhejiang, ChinaState Key Laboratory of Industrial Control Technology, Institute of Cyber Systems and Control, Zhejiang University, Hangzhou 310027, Zhejiang, ChinaState Key Laboratory of Industrial Control Technology, Institute of Cyber Systems and Control, Zhejiang University, Hangzhou 310027, Zhejiang, ChinaComputer Learning Research Centre, Royal Holloway, University of London, Egham Hill, Egham, Surrey TW20 0EX, UKState Key Laboratory of Industrial Control Technology, Institute of Cyber Systems and Control, Zhejiang University, Hangzhou 310027, Zhejiang, ChinaIn the application of electronic noses (E-noses), probabilistic prediction is a good way to estimate how confident we are about our prediction. In this work, a homemade E-nose system embedded with 16 metal-oxide semi-conductive gas sensors was used to discriminate nine kinds of ginsengs of different species or production places. A flexible machine learning framework, Venn machine (VM) was introduced to make probabilistic predictions for each prediction. Three Venn predictors were developed based on three classical probabilistic prediction methods (Platt’s method, Softmax regression and Naive Bayes). Three Venn predictors and three classical probabilistic prediction methods were compared in aspect of classification rate and especially the validity of estimated probability. A best classification rate of 88.57% was achieved with Platt’s method in offline mode, and the classification rate of VM-SVM (Venn machine based on Support Vector Machine) was 86.35%, just 2.22% lower. The validity of Venn predictors performed better than that of corresponding classical probabilistic prediction methods. The validity of VM-SVM was superior to the other methods. The results demonstrated that Venn machine is a flexible tool to make precise and valid probabilistic prediction in the application of E-nose, and VM-SVM achieved the best performance for the probabilistic prediction of ginseng samples.http://www.mdpi.com/1424-8220/16/7/1088electronic noseginsengVenn machineprobabilistic predictionsupport vector machine
collection DOAJ
language English
format Article
sources DOAJ
author You Wang
Jiacheng Miao
Xiaofeng Lyu
Linfeng Liu
Zhiyuan Luo
Guang Li
spellingShingle You Wang
Jiacheng Miao
Xiaofeng Lyu
Linfeng Liu
Zhiyuan Luo
Guang Li
Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
Sensors
electronic nose
ginseng
Venn machine
probabilistic prediction
support vector machine
author_facet You Wang
Jiacheng Miao
Xiaofeng Lyu
Linfeng Liu
Zhiyuan Luo
Guang Li
author_sort You Wang
title Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
title_short Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
title_full Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
title_fullStr Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
title_full_unstemmed Valid Probabilistic Predictions for Ginseng with Venn Machines Using Electronic Nose
title_sort valid probabilistic predictions for ginseng with venn machines using electronic nose
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2016-07-01
description In the application of electronic noses (E-noses), probabilistic prediction is a good way to estimate how confident we are about our prediction. In this work, a homemade E-nose system embedded with 16 metal-oxide semi-conductive gas sensors was used to discriminate nine kinds of ginsengs of different species or production places. A flexible machine learning framework, Venn machine (VM) was introduced to make probabilistic predictions for each prediction. Three Venn predictors were developed based on three classical probabilistic prediction methods (Platt’s method, Softmax regression and Naive Bayes). Three Venn predictors and three classical probabilistic prediction methods were compared in aspect of classification rate and especially the validity of estimated probability. A best classification rate of 88.57% was achieved with Platt’s method in offline mode, and the classification rate of VM-SVM (Venn machine based on Support Vector Machine) was 86.35%, just 2.22% lower. The validity of Venn predictors performed better than that of corresponding classical probabilistic prediction methods. The validity of VM-SVM was superior to the other methods. The results demonstrated that Venn machine is a flexible tool to make precise and valid probabilistic prediction in the application of E-nose, and VM-SVM achieved the best performance for the probabilistic prediction of ginseng samples.
topic electronic nose
ginseng
Venn machine
probabilistic prediction
support vector machine
url http://www.mdpi.com/1424-8220/16/7/1088
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