An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage
Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series...
Ausführliche Beschreibung
Autor*in: |
He, Guoliang [verfasserIn] Zhao, Wen [verfasserIn] Xia, Xuewen [verfasserIn] Peng, Rong [verfasserIn] Wu, Xiaoying [verfasserIn] |
---|
Format: |
E-Artikel |
---|---|
Sprache: |
Englisch |
Erschienen: |
2018 |
---|
Schlagwörter: |
---|
Übergeordnetes Werk: |
Enthalten in: Soft Computing - Springer-Verlag, 2003, 23(2018), 15 vom: 04. Juni, Seite 6097-6114 |
---|---|
Übergeordnetes Werk: |
volume:23 ; year:2018 ; number:15 ; day:04 ; month:06 ; pages:6097-6114 |
Links: |
---|
DOI / URN: |
10.1007/s00500-018-3261-3 |
---|
Katalog-ID: |
SPR006504833 |
---|
LEADER | 01000caa a22002652 4500 | ||
---|---|---|---|
001 | SPR006504833 | ||
003 | DE-627 | ||
005 | 20201124002905.0 | ||
007 | cr uuu---uuuuu | ||
008 | 201005s2018 xx |||||o 00| ||eng c | ||
024 | 7 | |a 10.1007/s00500-018-3261-3 |2 doi | |
035 | |a (DE-627)SPR006504833 | ||
035 | |a (SPR)s00500-018-3261-3-e | ||
040 | |a DE-627 |b ger |c DE-627 |e rakwb | ||
041 | |a eng | ||
100 | 1 | |a He, Guoliang |e verfasserin |4 aut | |
245 | 1 | 3 | |a An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
264 | 1 | |c 2018 | |
336 | |a Text |b txt |2 rdacontent | ||
337 | |a Computermedien |b c |2 rdamedia | ||
338 | |a Online-Ressource |b cr |2 rdacarrier | ||
520 | |a Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. | ||
650 | 4 | |a Multivariate time series |7 (dpeaa)DE-He213 | |
650 | 4 | |a Early classification |7 (dpeaa)DE-He213 | |
650 | 4 | |a Imbalanced data |7 (dpeaa)DE-He213 | |
700 | 1 | |a Zhao, Wen |e verfasserin |4 aut | |
700 | 1 | |a Xia, Xuewen |e verfasserin |4 aut | |
700 | 1 | |a Peng, Rong |e verfasserin |4 aut | |
700 | 1 | |a Wu, Xiaoying |e verfasserin |4 aut | |
773 | 0 | 8 | |i Enthalten in |t Soft Computing |d Springer-Verlag, 2003 |g 23(2018), 15 vom: 04. Juni, Seite 6097-6114 |w (DE-627)SPR006469531 |7 nnns |
773 | 1 | 8 | |g volume:23 |g year:2018 |g number:15 |g day:04 |g month:06 |g pages:6097-6114 |
856 | 4 | 0 | |u https://dx.doi.org/10.1007/s00500-018-3261-3 |z lizenzpflichtig |3 Volltext |
912 | |a GBV_USEFLAG_A | ||
912 | |a SYSFLAG_A | ||
912 | |a GBV_SPRINGER | ||
951 | |a AR | ||
952 | |d 23 |j 2018 |e 15 |b 04 |c 06 |h 6097-6114 |
author_variant |
g h gh w z wz x x xx r p rp x w xw |
---|---|
matchkey_str |
heguoliangzhaowenxiaxuewenpengrongwuxiao:2018----:nnebefhpltaecasfesnnecasnitalsiblnemliai |
hierarchy_sort_str |
2018 |
publishDate |
2018 |
allfields |
10.1007/s00500-018-3261-3 doi (DE-627)SPR006504833 (SPR)s00500-018-3261-3-e DE-627 ger DE-627 rakwb eng He, Guoliang verfasserin aut An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage 2018 Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 Zhao, Wen verfasserin aut Xia, Xuewen verfasserin aut Peng, Rong verfasserin aut Wu, Xiaoying verfasserin aut Enthalten in Soft Computing Springer-Verlag, 2003 23(2018), 15 vom: 04. Juni, Seite 6097-6114 (DE-627)SPR006469531 nnns volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 https://dx.doi.org/10.1007/s00500-018-3261-3 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER AR 23 2018 15 04 06 6097-6114 |
spelling |
10.1007/s00500-018-3261-3 doi (DE-627)SPR006504833 (SPR)s00500-018-3261-3-e DE-627 ger DE-627 rakwb eng He, Guoliang verfasserin aut An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage 2018 Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 Zhao, Wen verfasserin aut Xia, Xuewen verfasserin aut Peng, Rong verfasserin aut Wu, Xiaoying verfasserin aut Enthalten in Soft Computing Springer-Verlag, 2003 23(2018), 15 vom: 04. Juni, Seite 6097-6114 (DE-627)SPR006469531 nnns volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 https://dx.doi.org/10.1007/s00500-018-3261-3 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER AR 23 2018 15 04 06 6097-6114 |
allfields_unstemmed |
10.1007/s00500-018-3261-3 doi (DE-627)SPR006504833 (SPR)s00500-018-3261-3-e DE-627 ger DE-627 rakwb eng He, Guoliang verfasserin aut An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage 2018 Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 Zhao, Wen verfasserin aut Xia, Xuewen verfasserin aut Peng, Rong verfasserin aut Wu, Xiaoying verfasserin aut Enthalten in Soft Computing Springer-Verlag, 2003 23(2018), 15 vom: 04. Juni, Seite 6097-6114 (DE-627)SPR006469531 nnns volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 https://dx.doi.org/10.1007/s00500-018-3261-3 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER AR 23 2018 15 04 06 6097-6114 |
allfieldsGer |
10.1007/s00500-018-3261-3 doi (DE-627)SPR006504833 (SPR)s00500-018-3261-3-e DE-627 ger DE-627 rakwb eng He, Guoliang verfasserin aut An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage 2018 Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 Zhao, Wen verfasserin aut Xia, Xuewen verfasserin aut Peng, Rong verfasserin aut Wu, Xiaoying verfasserin aut Enthalten in Soft Computing Springer-Verlag, 2003 23(2018), 15 vom: 04. Juni, Seite 6097-6114 (DE-627)SPR006469531 nnns volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 https://dx.doi.org/10.1007/s00500-018-3261-3 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER AR 23 2018 15 04 06 6097-6114 |
allfieldsSound |
10.1007/s00500-018-3261-3 doi (DE-627)SPR006504833 (SPR)s00500-018-3261-3-e DE-627 ger DE-627 rakwb eng He, Guoliang verfasserin aut An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage 2018 Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 Zhao, Wen verfasserin aut Xia, Xuewen verfasserin aut Peng, Rong verfasserin aut Wu, Xiaoying verfasserin aut Enthalten in Soft Computing Springer-Verlag, 2003 23(2018), 15 vom: 04. Juni, Seite 6097-6114 (DE-627)SPR006469531 nnns volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 https://dx.doi.org/10.1007/s00500-018-3261-3 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER AR 23 2018 15 04 06 6097-6114 |
language |
English |
source |
Enthalten in Soft Computing 23(2018), 15 vom: 04. Juni, Seite 6097-6114 volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 |
sourceStr |
Enthalten in Soft Computing 23(2018), 15 vom: 04. Juni, Seite 6097-6114 volume:23 year:2018 number:15 day:04 month:06 pages:6097-6114 |
format_phy_str_mv |
Article |
institution |
findex.gbv.de |
topic_facet |
Multivariate time series Early classification Imbalanced data |
isfreeaccess_bool |
false |
container_title |
Soft Computing |
authorswithroles_txt_mv |
He, Guoliang @@aut@@ Zhao, Wen @@aut@@ Xia, Xuewen @@aut@@ Peng, Rong @@aut@@ Wu, Xiaoying @@aut@@ |
publishDateDaySort_date |
2018-06-04T00:00:00Z |
hierarchy_top_id |
SPR006469531 |
id |
SPR006504833 |
language_de |
englisch |
fullrecord |
<?xml version="1.0" encoding="UTF-8"?><collection xmlns="http://www.loc.gov/MARC21/slim"><record><leader>01000caa a22002652 4500</leader><controlfield tag="001">SPR006504833</controlfield><controlfield tag="003">DE-627</controlfield><controlfield tag="005">20201124002905.0</controlfield><controlfield tag="007">cr uuu---uuuuu</controlfield><controlfield tag="008">201005s2018 xx |||||o 00| ||eng c</controlfield><datafield tag="024" ind1="7" ind2=" "><subfield code="a">10.1007/s00500-018-3261-3</subfield><subfield code="2">doi</subfield></datafield><datafield tag="035" ind1=" " ind2=" "><subfield code="a">(DE-627)SPR006504833</subfield></datafield><datafield tag="035" ind1=" " ind2=" "><subfield code="a">(SPR)s00500-018-3261-3-e</subfield></datafield><datafield tag="040" ind1=" " ind2=" "><subfield code="a">DE-627</subfield><subfield code="b">ger</subfield><subfield code="c">DE-627</subfield><subfield code="e">rakwb</subfield></datafield><datafield tag="041" ind1=" " ind2=" "><subfield code="a">eng</subfield></datafield><datafield tag="100" ind1="1" ind2=" "><subfield code="a">He, Guoliang</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="245" ind1="1" ind2="3"><subfield code="a">An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage</subfield></datafield><datafield tag="264" ind1=" " ind2="1"><subfield code="c">2018</subfield></datafield><datafield tag="336" ind1=" " ind2=" "><subfield code="a">Text</subfield><subfield code="b">txt</subfield><subfield code="2">rdacontent</subfield></datafield><datafield tag="337" ind1=" " ind2=" "><subfield code="a">Computermedien</subfield><subfield code="b">c</subfield><subfield code="2">rdamedia</subfield></datafield><datafield tag="338" ind1=" " ind2=" "><subfield code="a">Online-Ressource</subfield><subfield code="b">cr</subfield><subfield code="2">rdacarrier</subfield></datafield><datafield tag="520" ind1=" " ind2=" "><subfield code="a">Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data.</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Multivariate time series</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Early classification</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Imbalanced data</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Zhao, Wen</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Xia, Xuewen</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Peng, Rong</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Wu, Xiaoying</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="773" ind1="0" ind2="8"><subfield code="i">Enthalten in</subfield><subfield code="t">Soft Computing</subfield><subfield code="d">Springer-Verlag, 2003</subfield><subfield code="g">23(2018), 15 vom: 04. Juni, Seite 6097-6114</subfield><subfield code="w">(DE-627)SPR006469531</subfield><subfield code="7">nnns</subfield></datafield><datafield tag="773" ind1="1" ind2="8"><subfield code="g">volume:23</subfield><subfield code="g">year:2018</subfield><subfield code="g">number:15</subfield><subfield code="g">day:04</subfield><subfield code="g">month:06</subfield><subfield code="g">pages:6097-6114</subfield></datafield><datafield tag="856" ind1="4" ind2="0"><subfield code="u">https://dx.doi.org/10.1007/s00500-018-3261-3</subfield><subfield code="z">lizenzpflichtig</subfield><subfield code="3">Volltext</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">GBV_USEFLAG_A</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">SYSFLAG_A</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">GBV_SPRINGER</subfield></datafield><datafield tag="951" ind1=" " ind2=" "><subfield code="a">AR</subfield></datafield><datafield tag="952" ind1=" " ind2=" "><subfield code="d">23</subfield><subfield code="j">2018</subfield><subfield code="e">15</subfield><subfield code="b">04</subfield><subfield code="c">06</subfield><subfield code="h">6097-6114</subfield></datafield></record></collection>
|
author |
He, Guoliang |
spellingShingle |
He, Guoliang misc Multivariate time series misc Early classification misc Imbalanced data An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
authorStr |
He, Guoliang |
ppnlink_with_tag_str_mv |
@@773@@(DE-627)SPR006469531 |
format |
electronic Article |
delete_txt_mv |
keep |
author_role |
aut aut aut aut aut |
collection |
springer |
remote_str |
true |
illustrated |
Not Illustrated |
topic_title |
An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage Multivariate time series (dpeaa)DE-He213 Early classification (dpeaa)DE-He213 Imbalanced data (dpeaa)DE-He213 |
topic |
misc Multivariate time series misc Early classification misc Imbalanced data |
topic_unstemmed |
misc Multivariate time series misc Early classification misc Imbalanced data |
topic_browse |
misc Multivariate time series misc Early classification misc Imbalanced data |
format_facet |
Elektronische Aufsätze Aufsätze Elektronische Ressource |
format_main_str_mv |
Text Zeitschrift/Artikel |
carriertype_str_mv |
cr |
hierarchy_parent_title |
Soft Computing |
hierarchy_parent_id |
SPR006469531 |
hierarchy_top_title |
Soft Computing |
isfreeaccess_txt |
false |
familylinks_str_mv |
(DE-627)SPR006469531 |
title |
An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
ctrlnum |
(DE-627)SPR006504833 (SPR)s00500-018-3261-3-e |
title_full |
An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
author_sort |
He, Guoliang |
journal |
Soft Computing |
journalStr |
Soft Computing |
lang_code |
eng |
isOA_bool |
false |
recordtype |
marc |
publishDateSort |
2018 |
contenttype_str_mv |
txt |
container_start_page |
6097 |
author_browse |
He, Guoliang Zhao, Wen Xia, Xuewen Peng, Rong Wu, Xiaoying |
container_volume |
23 |
format_se |
Elektronische Aufsätze |
author-letter |
He, Guoliang |
doi_str_mv |
10.1007/s00500-018-3261-3 |
author2-role |
verfasserin |
title_sort |
ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
title_auth |
An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
abstract |
Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. |
abstractGer |
Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. |
abstract_unstemmed |
Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data. |
collection_details |
GBV_USEFLAG_A SYSFLAG_A GBV_SPRINGER |
container_issue |
15 |
title_short |
An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage |
url |
https://dx.doi.org/10.1007/s00500-018-3261-3 |
remote_bool |
true |
author2 |
Zhao, Wen Xia, Xuewen Peng, Rong Wu, Xiaoying |
author2Str |
Zhao, Wen Xia, Xuewen Peng, Rong Wu, Xiaoying |
ppnlink |
SPR006469531 |
mediatype_str_mv |
c |
isOA_txt |
false |
hochschulschrift_bool |
false |
doi_str |
10.1007/s00500-018-3261-3 |
up_date |
2024-07-03T23:18:51.930Z |
_version_ |
1803601819132231680 |
fullrecord_marcxml |
<?xml version="1.0" encoding="UTF-8"?><collection xmlns="http://www.loc.gov/MARC21/slim"><record><leader>01000caa a22002652 4500</leader><controlfield tag="001">SPR006504833</controlfield><controlfield tag="003">DE-627</controlfield><controlfield tag="005">20201124002905.0</controlfield><controlfield tag="007">cr uuu---uuuuu</controlfield><controlfield tag="008">201005s2018 xx |||||o 00| ||eng c</controlfield><datafield tag="024" ind1="7" ind2=" "><subfield code="a">10.1007/s00500-018-3261-3</subfield><subfield code="2">doi</subfield></datafield><datafield tag="035" ind1=" " ind2=" "><subfield code="a">(DE-627)SPR006504833</subfield></datafield><datafield tag="035" ind1=" " ind2=" "><subfield code="a">(SPR)s00500-018-3261-3-e</subfield></datafield><datafield tag="040" ind1=" " ind2=" "><subfield code="a">DE-627</subfield><subfield code="b">ger</subfield><subfield code="c">DE-627</subfield><subfield code="e">rakwb</subfield></datafield><datafield tag="041" ind1=" " ind2=" "><subfield code="a">eng</subfield></datafield><datafield tag="100" ind1="1" ind2=" "><subfield code="a">He, Guoliang</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="245" ind1="1" ind2="3"><subfield code="a">An ensemble of shapelet-based classifiers on inter-class and intra-class imbalanced multivariate time series at the early stage</subfield></datafield><datafield tag="264" ind1=" " ind2="1"><subfield code="c">2018</subfield></datafield><datafield tag="336" ind1=" " ind2=" "><subfield code="a">Text</subfield><subfield code="b">txt</subfield><subfield code="2">rdacontent</subfield></datafield><datafield tag="337" ind1=" " ind2=" "><subfield code="a">Computermedien</subfield><subfield code="b">c</subfield><subfield code="2">rdamedia</subfield></datafield><datafield tag="338" ind1=" " ind2=" "><subfield code="a">Online-Ressource</subfield><subfield code="b">cr</subfield><subfield code="2">rdacarrier</subfield></datafield><datafield tag="520" ind1=" " ind2=" "><subfield code="a">Abstract Early classification of time series will weaken the accuracy to some degree. If the time series data are imbalanced, it will be also challenging to accurately identify minority class examples. Up to now, these two problems have been intensively addressed separately on univariate time series data, but yet to be well studied when they occur together. Compared with univariate time series, multivariate time series (MTS) is more complex, which contains multiple variables, and the interconnections between variables are hidden. Therefore, it is even more challenging to handle the combination of both problems on multivariate time series. In this paper, we propose an adaptive classification ensemble method called early prediction on imbalanced MTS to deal with early classification on inter-class and intra-class imbalanced MTS data simultaneously. First, an adaptive ensemble framework is designed to learn an early classification model on imbalanced MTS data. Based on a multiple under-sampling approach and dynamical subspace generation method, the diversity of base classifiers is realized as well as all majority class examples being fully utilized. Second, to deal with the implicit issue of intra-class imbalance in the training data, a cluster-based shapelet selection method is introduced to obtain an optimal set of stable and robust shapelets. Finally, an associate-pattern mining approach is designed to efficiently learn base classifiers, which could enhance the interpretability of classification. Experimental results show that our proposed method can achieve effective early prediction on inter-class and intra-class imbalanced MTS data.</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Multivariate time series</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Early classification</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="650" ind1=" " ind2="4"><subfield code="a">Imbalanced data</subfield><subfield code="7">(dpeaa)DE-He213</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Zhao, Wen</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Xia, Xuewen</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Peng, Rong</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="700" ind1="1" ind2=" "><subfield code="a">Wu, Xiaoying</subfield><subfield code="e">verfasserin</subfield><subfield code="4">aut</subfield></datafield><datafield tag="773" ind1="0" ind2="8"><subfield code="i">Enthalten in</subfield><subfield code="t">Soft Computing</subfield><subfield code="d">Springer-Verlag, 2003</subfield><subfield code="g">23(2018), 15 vom: 04. Juni, Seite 6097-6114</subfield><subfield code="w">(DE-627)SPR006469531</subfield><subfield code="7">nnns</subfield></datafield><datafield tag="773" ind1="1" ind2="8"><subfield code="g">volume:23</subfield><subfield code="g">year:2018</subfield><subfield code="g">number:15</subfield><subfield code="g">day:04</subfield><subfield code="g">month:06</subfield><subfield code="g">pages:6097-6114</subfield></datafield><datafield tag="856" ind1="4" ind2="0"><subfield code="u">https://dx.doi.org/10.1007/s00500-018-3261-3</subfield><subfield code="z">lizenzpflichtig</subfield><subfield code="3">Volltext</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">GBV_USEFLAG_A</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">SYSFLAG_A</subfield></datafield><datafield tag="912" ind1=" " ind2=" "><subfield code="a">GBV_SPRINGER</subfield></datafield><datafield tag="951" ind1=" " ind2=" "><subfield code="a">AR</subfield></datafield><datafield tag="952" ind1=" " ind2=" "><subfield code="d">23</subfield><subfield code="j">2018</subfield><subfield code="e">15</subfield><subfield code="b">04</subfield><subfield code="c">06</subfield><subfield code="h">6097-6114</subfield></datafield></record></collection>
|
score |
7.402128 |