Skip to main content
Top

15-03-2024

Online concept evolution detection based on active learning

Authors: Husheng Guo, Hai Li, Lu Cong, Wenjian Wang

Published in: Data Mining and Knowledge Discovery

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Concept evolution detection is an important and difficult problem in streaming data mining. When the labeled samples in streaming data insufficient to reflect the training data distribution, it will often further restrict the detection performance. This paper proposed a concept evolution detection method based on active learning (CE_AL). Firstly, the initial classifiers are constructed by a small number of labeled samples. The sample areas are divided into the automatic labeling and the active labeling areas according to the relationship between the classifiers of different categories. Secondly, for online new coming samples, according to their different areas, two strategies based on the automatic learning-based model labeling and active learning-based expert labeling are adopted respectively, which can improve the online learning performance with only a small number of labeled samples. Besides, the strategy of “data enhance” combined with “model enhance” is adopted to accelerate the convergence of the evolution category detection model. The experimental results show that the proposed CE_AL method can enhance the detection performance of concept evolution and realize efficient learning in an unstable environment by labeling a small number of key samples.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Literature
go back to reference Abd EK, Sofiane L, Karima A, Hamida S (2020) A simple graph embedding for anomaly detection in a stream of heterogeneous labeled graphs. Pattern Recognit 112:107746 Abd EK, Sofiane L, Karima A, Hamida S (2020) A simple graph embedding for anomaly detection in a stream of heterogeneous labeled graphs. Pattern Recognit 112:107746
go back to reference Abdallah ZS, Gaber MM, Srinivasan B (2016) AnyNovel: detection of novel concepts in evolving data streams. Evol Syst 7:73–93CrossRef Abdallah ZS, Gaber MM, Srinivasan B (2016) AnyNovel: detection of novel concepts in evolving data streams. Evol Syst 7:73–93CrossRef
go back to reference Abdualrhman M, Padma M (2019) Deterministic concept drift detection in ensemble classifier based data stream classification process. Int J Grid High Perform Comput (IJGHPC) 11(1):29–48CrossRef Abdualrhman M, Padma M (2019) Deterministic concept drift detection in ensemble classifier based data stream classification process. Int J Grid High Perform Comput (IJGHPC) 11(1):29–48CrossRef
go back to reference Ahn CK (2010) Passive learning and input-to-state stability of switched Hopfield neural networks with time-delay. Inf Sci 180(23):4582–4584CrossRef Ahn CK (2010) Passive learning and input-to-state stability of switched Hopfield neural networks with time-delay. Inf Sci 180(23):4582–4584CrossRef
go back to reference Al-Khateeb T, Masud M, Khan L, Aggarwal C, Han J, Thuraisingham B (2012) Stream classification with recurring and novel class detection using class-based ensemble. In: Proceedings of the IEEE 12th international conference on data mining, pp 31–40 Al-Khateeb T, Masud M, Khan L, Aggarwal C, Han J, Thuraisingham B (2012) Stream classification with recurring and novel class detection using class-based ensemble. In: Proceedings of the IEEE 12th international conference on data mining, pp 31–40
go back to reference Al-Khateeb T, Masud MM, Al-Naami KM, Seker SE, Mustafa AM, Khan L, Trabelsi Z, Aggarwal C, Han JW (2016) Recurring and novel class detection using class-based ensemble for evolving data stream. IEEE Trans Knowl Data Eng 28(10):2752–2764CrossRef Al-Khateeb T, Masud MM, Al-Naami KM, Seker SE, Mustafa AM, Khan L, Trabelsi Z, Aggarwal C, Han JW (2016) Recurring and novel class detection using class-based ensemble for evolving data stream. IEEE Trans Knowl Data Eng 28(10):2752–2764CrossRef
go back to reference Alothali E, Alashwal H, Harous S (2019) Data stream mining techniques: a review. TELKOMNIKA 17(2):728–737CrossRef Alothali E, Alashwal H, Harous S (2019) Data stream mining techniques: a review. TELKOMNIKA 17(2):728–737CrossRef
go back to reference Ancy S, Paulraj D (2019) Online learning model for handling different concept drifts using diverse ensemble classifiers on evolving data streams. Cybern Syst 50(7):579–608CrossRef Ancy S, Paulraj D (2019) Online learning model for handling different concept drifts using diverse ensemble classifiers on evolving data streams. Cybern Syst 50(7):579–608CrossRef
go back to reference Barbosa Roa N, Travé-Massuyės L, Grisales-Palacio VH (2019) DyClee: dynamic clustering for tracking evolving environments. Pattern Recognit 94:162–186ADSCrossRef Barbosa Roa N, Travé-Massuyės L, Grisales-Palacio VH (2019) DyClee: dynamic clustering for tracking evolving environments. Pattern Recognit 94:162–186ADSCrossRef
go back to reference Brzeninski D, Stefanowski J (2014) Reacting to different types of concept drift: the accuracy updated ensemble algorithm. IEEE Trans Neural Netw Learn Syst 25(1):81–94CrossRef Brzeninski D, Stefanowski J (2014) Reacting to different types of concept drift: the accuracy updated ensemble algorithm. IEEE Trans Neural Netw Learn Syst 25(1):81–94CrossRef
go back to reference Chakraborty D, Narayanan V, Ghosh A (2019) Integration of deep feature extraction and ensemble learning for outlier detection. Pattern Recognit 89:161–171ADSCrossRef Chakraborty D, Narayanan V, Ghosh A (2019) Integration of deep feature extraction and ensemble learning for outlier detection. Pattern Recognit 89:161–171ADSCrossRef
go back to reference Chandak MB (2016) Role of big-data in classification and novel class detection in data streams. J Big Data 3(1):1–9MathSciNetCrossRef Chandak MB (2016) Role of big-data in classification and novel class detection in data streams. J Big Data 3(1):1–9MathSciNetCrossRef
go back to reference de Faria ER, de Leon Ferreira Carvalho AC Ponce, Gama J (2016) MINAS: multiclass learning algorithm for novelty detection in data streams. Data Min Knowl Discov 30(3):640–680MathSciNetCrossRef de Faria ER, de Leon Ferreira Carvalho AC Ponce, Gama J (2016) MINAS: multiclass learning algorithm for novelty detection in data streams. Data Min Knowl Discov 30(3):640–680MathSciNetCrossRef
go back to reference Demiar J, Schuurmans D (2006) Statistical comparisons of classifiers over multiple data sets. J Mach Learn Res 7(1):1–30MathSciNet Demiar J, Schuurmans D (2006) Statistical comparisons of classifiers over multiple data sets. J Mach Learn Res 7(1):1–30MathSciNet
go back to reference Ditzler G, Polikar R (2013) Incremental learning of concept drift from streaming imbalanced data. IEEE Trans Knowl Data Eng 25(10):2283–2301CrossRef Ditzler G, Polikar R (2013) Incremental learning of concept drift from streaming imbalanced data. IEEE Trans Knowl Data Eng 25(10):2283–2301CrossRef
go back to reference Dongre SS, Malik LG, Thomas A (2019) Detecting concept drift using HEDDM in data stream. Int J Intell Eng Inform 7(2–3):164 Dongre SS, Malik LG, Thomas A (2019) Detecting concept drift using HEDDM in data stream. Int J Intell Eng Inform 7(2–3):164
go back to reference Faria ER, Gama J, Carvalho AC (2013) Novelty detection algorithm for data streams multi-class problems. In: Proceedings of the 28th annual ACM symposium on applied computing, pp 795–800 Faria ER, Gama J, Carvalho AC (2013) Novelty detection algorithm for data streams multi-class problems. In: Proceedings of the 28th annual ACM symposium on applied computing, pp 795–800
go back to reference Farid DM, Zhang L, Hossain A, Rahman CM, Strachan R, Sexton G, Dahal K (2013) An adaptive ensemble classifier for mining concept drifting data streams. Expert Syst Appl 40(15):5895–5906CrossRef Farid DM, Zhang L, Hossain A, Rahman CM, Strachan R, Sexton G, Dahal K (2013) An adaptive ensemble classifier for mining concept drifting data streams. Expert Syst Appl 40(15):5895–5906CrossRef
go back to reference Freund Y, Schapire RE (1997) A decision-theoretic generalization of on-line learning and an application to boosting. Comput Syst Sci 55(1):119–139MathSciNetCrossRef Freund Y, Schapire RE (1997) A decision-theoretic generalization of on-line learning and an application to boosting. Comput Syst Sci 55(1):119–139MathSciNetCrossRef
go back to reference Frias-Blanco I, Campo-Avila J, Ramos G, Morales-Bueno R (2015) Online and non-parametric drift detection methods based on Hoeffdings bounds. IEEE Trans Knowl Data Eng 27(3):810–823CrossRef Frias-Blanco I, Campo-Avila J, Ramos G, Morales-Bueno R (2015) Online and non-parametric drift detection methods based on Hoeffdings bounds. IEEE Trans Knowl Data Eng 27(3):810–823CrossRef
go back to reference Gandhi J, Gandhi V (2020) Novel class detection with concept drift in data stream-AhtNODE. Int J Distrib Syst Technol 11(1):15–26MathSciNetCrossRef Gandhi J, Gandhi V (2020) Novel class detection with concept drift in data stream-AhtNODE. Int J Distrib Syst Technol 11(1):15–26MathSciNetCrossRef
go back to reference Ghomeshi H, Gaber M, Kovalchuk Y (2019) EACD: evolutionary adaptation to concept drifts in data streams. Data Min Knowl Discov 33(3):663–694CrossRef Ghomeshi H, Gaber M, Kovalchuk Y (2019) EACD: evolutionary adaptation to concept drifts in data streams. Data Min Knowl Discov 33(3):663–694CrossRef
go back to reference Guo HS, Wang WJ (2015) An active learning-based SVM multi-class classification model. Pattern Recognit 48(5):1577–1597ADSCrossRef Guo HS, Wang WJ (2015) An active learning-based SVM multi-class classification model. Pattern Recognit 48(5):1577–1597ADSCrossRef
go back to reference Guo HS, Zhang S, Wang WJ (2021) Selective ensemble-based on line adaptive deep neural networks for streaming data with concept drift. Neural Netw 142:437–456PubMedCrossRef Guo HS, Zhang S, Wang WJ (2021) Selective ensemble-based on line adaptive deep neural networks for streaming data with concept drift. Neural Netw 142:437–456PubMedCrossRef
go back to reference Guo HS, Li H, Ren QY, Wang WJ (2022) Concept drift type identification based on multi-sliding windows. Inf Sci 585:1–23CrossRef Guo HS, Li H, Ren QY, Wang WJ (2022) Concept drift type identification based on multi-sliding windows. Inf Sci 585:1–23CrossRef
go back to reference Haque A, Khan L, Baron M (2015) Semi-supervised adaptive framework for classifying evolving data stream. In: Proceedings of the Pacific-Asia conference on knowledge discovery and data mining, pp 383–394 Haque A, Khan L, Baron M (2015) Semi-supervised adaptive framework for classifying evolving data stream. In: Proceedings of the Pacific-Asia conference on knowledge discovery and data mining, pp 383–394
go back to reference Haque A, Khan L, Baron M (2016a) Sand: semi-supervised adaptive novel class detection and classification over data stream. In: Proceedings of the 30th AAAI conference on artificial intelligence, pp 1652–1658 Haque A, Khan L, Baron M (2016a) Sand: semi-supervised adaptive novel class detection and classification over data stream. In: Proceedings of the 30th AAAI conference on artificial intelligence, pp 1652–1658
go back to reference Haque A, Khan L, Baron M, Thuraisingham B, Aggarwal C (2016b) Efficient handling of concept drift and concept evolution over stream data. In: 2016 IEEE 32nd international conference on data engineering (ICDE), pp 481–492 Haque A, Khan L, Baron M, Thuraisingham B, Aggarwal C (2016b) Efficient handling of concept drift and concept evolution over stream data. In: 2016 IEEE 32nd international conference on data engineering (ICDE), pp 481–492
go back to reference Hashemi S, Yang Y, Mirzamomen Z, Kangavari M (2009) Adapted one-versus-all decision trees for data stream classification. IEEE Trans Knowl Data Eng 21(5):624–637CrossRef Hashemi S, Yang Y, Mirzamomen Z, Kangavari M (2009) Adapted one-versus-all decision trees for data stream classification. IEEE Trans Knowl Data Eng 21(5):624–637CrossRef
go back to reference Hayat MZ, Hashemi MR (2010) A DCT based approach for detecting novelty and concept drift in data streams. In: Proceedings of the 2010 international conference of soft computing and pattern recognition, pp 373–378 Hayat MZ, Hashemi MR (2010) A DCT based approach for detecting novelty and concept drift in data streams. In: Proceedings of the 2010 international conference of soft computing and pattern recognition, pp 373–378
go back to reference Kuncheva L, Zliobaite I (2009) On the window size for classification in changing environments. IEEE Trans Knowl Data Eng 13(6):861–872 Kuncheva L, Zliobaite I (2009) On the window size for classification in changing environments. IEEE Trans Knowl Data Eng 13(6):861–872
go back to reference Lu CH, Yu CH (2019) Online data stream analytics for dynamic environments using self-regularized learning framework. IEEE Syst J 13(4):3697–3707ADSCrossRef Lu CH, Yu CH (2019) Online data stream analytics for dynamic environments using self-regularized learning framework. IEEE Syst J 13(4):3697–3707ADSCrossRef
go back to reference Lughofer E, Pratama M (2018) Online active learning in data stream regression using uncertainty sampling based on evolving generalized fuzzy models. IEEE Trans Fuzzy Syst 26(1):292–309CrossRef Lughofer E, Pratama M (2018) Online active learning in data stream regression using uncertainty sampling based on evolving generalized fuzzy models. IEEE Trans Fuzzy Syst 26(1):292–309CrossRef
go back to reference Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2008) A practical approach to classify evolving data streams: training with limited amount of labeled data. In: Proceedings of the 2008 IEEE 8th international conference on data mining, pp 929–934 Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2008) A practical approach to classify evolving data streams: training with limited amount of labeled data. In: Proceedings of the 2008 IEEE 8th international conference on data mining, pp 929–934
go back to reference Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2009) Integrating novel class detection with classification for concept-drifting data streams. Mach Learn Knowl Discov Databases 5782:79–94 Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2009) Integrating novel class detection with classification for concept-drifting data streams. Mach Learn Knowl Discov Databases 5782:79–94
go back to reference Masud MM, Al-Khateeb TM, Khan L, Aggarwal C, Gao J, Han J, Thuraisingham B (2011a) Detecting recurring and novel classes in concept-drifting data streams. In: Proceedings of the 2011 IEEE 11th international conference on data mining, pp 1176–1181 Masud MM, Al-Khateeb TM, Khan L, Aggarwal C, Gao J, Han J, Thuraisingham B (2011a) Detecting recurring and novel classes in concept-drifting data streams. In: Proceedings of the 2011 IEEE 11th international conference on data mining, pp 1176–1181
go back to reference Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2011) Classification and novel class detection in concept-drifting data streams under time constraints. IEEE Trans Knowl Data Eng 23(6):859–874CrossRef Masud MM, Gao J, Khan L, Han JW, Thuraisingham B (2011) Classification and novel class detection in concept-drifting data streams under time constraints. IEEE Trans Knowl Data Eng 23(6):859–874CrossRef
go back to reference Masud M, Gao J, Khan L (2011) Classification and novel class detection in concept-drifting data streams under time constraints. IEEE Trans Knowl Data Eng 23(6):859–874CrossRef Masud M, Gao J, Khan L (2011) Classification and novel class detection in concept-drifting data streams under time constraints. IEEE Trans Knowl Data Eng 23(6):859–874CrossRef
go back to reference Masud MM, Chen Q, Khan L, Aggarwal CC, Gao J, Han JW, Srivastava A, Oza NC (2013) Classification and adaptive novel class detection of feature-evolving data streams. IEEE Trans Knowl Data Eng 25(7):1484–1497CrossRef Masud MM, Chen Q, Khan L, Aggarwal CC, Gao J, Han JW, Srivastava A, Oza NC (2013) Classification and adaptive novel class detection of feature-evolving data streams. IEEE Trans Knowl Data Eng 25(7):1484–1497CrossRef
go back to reference Miao Y, Qiu L, Chen H, Zhang J, Wen Y (2013) Novel class detection within classification for data streams. In: Proceedings of the 10th international symposium on neural networks, pp 413–420 Miao Y, Qiu L, Chen H, Zhang J, Wen Y (2013) Novel class detection within classification for data streams. In: Proceedings of the 10th international symposium on neural networks, pp 413–420
go back to reference Minku LL, Yao X (2012) DDD: a new ensemble approach for dealing with concept drift. IEEE Trans Knowl Data Eng 24(4):619–633CrossRef Minku LL, Yao X (2012) DDD: a new ensemble approach for dealing with concept drift. IEEE Trans Knowl Data Eng 24(4):619–633CrossRef
go back to reference Mohamad S, Sayed-Mouchaweh M, Bouchachia A (2016) Active Learning for Data Streams under Concept Drift and concept evolution. In: ECML/PKDD 2016 workshop on large-scale learning from data streams in evolving environments (STREAMEVOLV-2016) Mohamad S, Sayed-Mouchaweh M, Bouchachia A (2016) Active Learning for Data Streams under Concept Drift and concept evolution. In: ECML/PKDD 2016 workshop on large-scale learning from data streams in evolving environments (STREAMEVOLV-2016)
go back to reference Mu X, Ting KM, Zhou ZH (2017) Classification under streaming emerging new classes: a solution using completely-random trees. IEEE Trans Knowl Data Eng 29(8):1605–1618CrossRef Mu X, Ting KM, Zhou ZH (2017) Classification under streaming emerging new classes: a solution using completely-random trees. IEEE Trans Knowl Data Eng 29(8):1605–1618CrossRef
go back to reference Oikarinen E, Tiittanen H, Henelius A, Puola mki K (2021) Detecting virtual concept drift of regressors without ground truth values. Data Min Knowl Discov 1:1MathSciNet Oikarinen E, Tiittanen H, Henelius A, Puola mki K (2021) Detecting virtual concept drift of regressors without ground truth values. Data Min Knowl Discov 1:1MathSciNet
go back to reference Parker B, Mustafa AM, Khan L (2012) Novel class detection and feature via a tiered ensemble approach for stream mining. In: Proceedings of the 2012 IEEE 24th international conference on tools with artificial intelligence, pp 1171–1178 Parker B, Mustafa AM, Khan L (2012) Novel class detection and feature via a tiered ensemble approach for stream mining. In: Proceedings of the 2012 IEEE 24th international conference on tools with artificial intelligence, pp 1171–1178
go back to reference Pesaranghader A, Viktor H (2016) Fast hoeffding drift detection method for evolving data streams. In: Proceedings of the Joint European conference on machine learning and knowledge discovery in databases, pp 96–111 Pesaranghader A, Viktor H (2016) Fast hoeffding drift detection method for evolving data streams. In: Proceedings of the Joint European conference on machine learning and knowledge discovery in databases, pp 96–111
go back to reference Pinag F, dos Santos EM, Gama J (2020) A drift detection method based on dynamic classifier selection. Data Min Knowl Discov 34(1):50–74MathSciNetCrossRef Pinag F, dos Santos EM, Gama J (2020) A drift detection method based on dynamic classifier selection. Data Min Knowl Discov 34(1):50–74MathSciNetCrossRef
go back to reference Rakitianskaia AS, Engelbrecht AP (2012) Training feedforward neural networks with dynamic particle swarm optimization. Swarm Intell 6(3):233–270CrossRef Rakitianskaia AS, Engelbrecht AP (2012) Training feedforward neural networks with dynamic particle swarm optimization. Swarm Intell 6(3):233–270CrossRef
go back to reference Spinosa EJ, Carvalho AP, Gama J (2007) OLINDDA: a cluster-based approach for detecting novelty and concept drift in data streams. In: Proceedings of the 2007 ACM symposium on applied computing, pp 448–452 Spinosa EJ, Carvalho AP, Gama J (2007) OLINDDA: a cluster-based approach for detecting novelty and concept drift in data streams. In: Proceedings of the 2007 ACM symposium on applied computing, pp 448–452
go back to reference Sugiyama M, Ogawa H (2001) Incremental projection learning for optimal generalization. Neural Netw 14:53–66PubMedCrossRef Sugiyama M, Ogawa H (2001) Incremental projection learning for optimal generalization. Neural Netw 14:53–66PubMedCrossRef
go back to reference Sun Y, Tang K, Minku LL, Wang S, Yao X (2016) Online ensemble learning of data streams with gradually evolved classes. IEEE Trans Knowl Data Eng 28(6):1532–1545CrossRef Sun Y, Tang K, Minku LL, Wang S, Yao X (2016) Online ensemble learning of data streams with gradually evolved classes. IEEE Trans Knowl Data Eng 28(6):1532–1545CrossRef
go back to reference Warmuth MK, Liao J, Ratsch G (2006) Totally corrective boosting algorithms that maximize the margin. In: Proceedings of the 23rd international conference on machine learning, pp 1001–1008 Warmuth MK, Liao J, Ratsch G (2006) Totally corrective boosting algorithms that maximize the margin. In: Proceedings of the 23rd international conference on machine learning, pp 1001–1008
go back to reference Webb GI, Hyde R, Cao H, Nguyen HL, Petitjean F (2016) Characterizing concept drift. Data Min Knowl Discov 30(4):964–994MathSciNetCrossRef Webb GI, Hyde R, Cao H, Nguyen HL, Petitjean F (2016) Characterizing concept drift. Data Min Knowl Discov 30(4):964–994MathSciNetCrossRef
go back to reference Webb GI, Lee LK, Goethals B, Petitjean F (2018) Analyzing concept drift and shift from sample data. Data Min Knowl Discov 32(5):1179–1199MathSciNetCrossRef Webb GI, Lee LK, Goethals B, Petitjean F (2018) Analyzing concept drift and shift from sample data. Data Min Knowl Discov 32(5):1179–1199MathSciNetCrossRef
go back to reference Zaremoodi P, Beigy H, Kamali Siahroudi S (2015) Novel class detection in data streams using local patterns and neighborhood graph. Neurocomputing 158:234–245CrossRef Zaremoodi P, Beigy H, Kamali Siahroudi S (2015) Novel class detection in data streams using local patterns and neighborhood graph. Neurocomputing 158:234–245CrossRef
go back to reference ZareMoodi P, Kamali Siahroudi S, Beigy H (2019) Concept-evolution detection in non-stationary data streams: a fuzzy clustering approach. Knowl Inf Syst 60(3):1329–1352CrossRef ZareMoodi P, Kamali Siahroudi S, Beigy H (2019) Concept-evolution detection in non-stationary data streams: a fuzzy clustering approach. Knowl Inf Syst 60(3):1329–1352CrossRef
go back to reference Zyblewski P, Sabourin R, Wozniak M (2020) Preprocessed dynamic classifier ensemble selection for highly imbalanced drifted data streams. Inf Fusion 66:138–154CrossRef Zyblewski P, Sabourin R, Wozniak M (2020) Preprocessed dynamic classifier ensemble selection for highly imbalanced drifted data streams. Inf Fusion 66:138–154CrossRef
Metadata
Title
Online concept evolution detection based on active learning
Authors
Husheng Guo
Hai Li
Lu Cong
Wenjian Wang
Publication date
15-03-2024
Publisher
Springer US
Published in
Data Mining and Knowledge Discovery
Print ISSN: 1384-5810
Electronic ISSN: 1573-756X
DOI
https://doi.org/10.1007/s10618-024-01011-4

Premium Partner