Classifier Ensemble Feature Selection for Automatic Fault Diagnosis
Made available in DSpace on 2018-08-02T00:04:07Z (GMT). No. of bitstreams: 1 tese_11215_thesis.pdf: 2358608 bytes, checksum: 6882526be259a3ef945f027bb764d17f (MD5) Previous issue date: 2017-07-14 === "An efficient ensemble feature selection scheme applied for fault diagnosis is proposed, bas...
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ndltd-IBICT-oai-dspace2.ufes.br-10-98722019-01-21T18:52:56Z Classifier Ensemble Feature Selection for Automatic Fault Diagnosis BOLDT, F. A. Varejão, F. M. Rauber, T. W. Made available in DSpace on 2018-08-02T00:04:07Z (GMT). No. of bitstreams: 1 tese_11215_thesis.pdf: 2358608 bytes, checksum: 6882526be259a3ef945f027bb764d17f (MD5) Previous issue date: 2017-07-14 "An efficient ensemble feature selection scheme applied for fault diagnosis is proposed, based on three hypothesis: a. A fault diagnosis system does not need to be restricted to a single feature extraction model, on the contrary, it should use as many feature models as possible, since the extracted features are potentially discriminative and the feature pooling is subsequently reduced with feature selection; b. The feature selection process can be accelerated, without loss of classification performance, combining feature selection methods, in a way that faster and weaker methods reduce the number of potentially non-discriminative features, sending to slower and stronger methods a filtered smaller feature set; c. The optimal feature set for a multi-class problem might be different for each pair of classes. Therefore, the feature selection should be done using an one versus one scheme, even when multi-class classifiers are used. However, since the number of classifiers grows exponentially to the number of the classes, expensive techniques like Error-Correcting Output Codes (ECOC) might have a prohibitive computational cost for large datasets. Thus, a fast one versus one approach must be used to alleviate such a computational demand. These three hypothesis are corroborated by experiments. The main hypothesis of this work is that using these three approaches together is possible to improve significantly the classification performance of a classifier to identify conditions in industrial processes. Experiments have shown such an improvement for the 1-NN classifier in industrial processes used as case study." 2018-08-02T00:04:07Z 2018-08-01 2018-08-02T00:04:07Z 2017-07-14 info:eu-repo/semantics/publishedVersion info:eu-repo/semantics/doctoralThesis BOLDT, F. A., Classifier Ensemble Feature Selection for Automatic Fault Diagnosis http://repositorio.ufes.br/handle/10/9872 info:eu-repo/semantics/openAccess application/pdf Universidade Federal do Espírito Santo Doutorado em Ciência da Computação Programa de Pós-Graduação em Informática UFES BR reponame:Repositório Institucional da UFES instname:Universidade Federal do Espírito Santo instacron:UFES |
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Made available in DSpace on 2018-08-02T00:04:07Z (GMT). No. of bitstreams: 1
tese_11215_thesis.pdf: 2358608 bytes, checksum: 6882526be259a3ef945f027bb764d17f (MD5)
Previous issue date: 2017-07-14 === "An efficient ensemble feature selection scheme applied for fault diagnosis is
proposed, based on three hypothesis:
a. A fault diagnosis system does not need to be restricted to a single feature
extraction model, on the contrary, it should use as many feature models as
possible, since the extracted features are potentially discriminative and the
feature pooling is subsequently reduced with feature selection;
b. The feature selection process can be accelerated, without loss of classification
performance, combining feature selection methods, in a way that faster and
weaker methods reduce the number of potentially non-discriminative features,
sending to slower and stronger methods a filtered smaller feature set;
c. The optimal feature set for a multi-class problem might be different for each
pair of classes. Therefore, the feature selection should be done using an one
versus one scheme, even when multi-class classifiers are used. However, since
the number of classifiers grows exponentially to the number of the classes,
expensive techniques like Error-Correcting Output Codes (ECOC) might have
a prohibitive computational cost for large datasets. Thus, a fast one versus one
approach must be used to alleviate such a computational demand.
These three hypothesis are corroborated by experiments.
The main hypothesis of this work is that using these three approaches
together is possible to improve significantly the classification performance of a
classifier to identify conditions in industrial processes. Experiments have shown such
an improvement for the 1-NN classifier in industrial processes used as case study." |
author2 |
Varejão, F. M. |
author_facet |
Varejão, F. M. BOLDT, F. A. |
author |
BOLDT, F. A. |
spellingShingle |
BOLDT, F. A. Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
author_sort |
BOLDT, F. A. |
title |
Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
title_short |
Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
title_full |
Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
title_fullStr |
Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
title_full_unstemmed |
Classifier Ensemble Feature Selection for Automatic Fault Diagnosis |
title_sort |
classifier ensemble feature selection for automatic fault diagnosis |
publisher |
Universidade Federal do Espírito Santo |
publishDate |
2018 |
url |
http://repositorio.ufes.br/handle/10/9872 |
work_keys_str_mv |
AT boldtfa classifierensemblefeatureselectionforautomaticfaultdiagnosis |
_version_ |
1718857468251996160 |