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2021 | OriginalPaper | Chapter

Incremental Ensemble of One Class Classifier for Data Streams with Concept Drift Adaption

Authors : Shubhangi Suryawanshi, Anurag Goswami, Pramod Patil

Published in: Advanced Computing

Publisher: Springer Singapore

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Abstract

Due to the digital era, and recent development in software and hardware technology uses enormous applications like e-commerce, mailing system, social media, fraud detection, weather and network application. These applications generate a huge amount of continuous, sequenced, temporarily ordered and infinite data called as a data stream. There is a need to manage such data streams with real-time responses and sufficient memory requirements. Data streams lead to a problem of changing data distribution of the target variable is called as the concept drift. The Learning model performance degrades if the concept drift is not addressed, so there is a need for a learning model that adapts the concept drift by retaining the good performance of the model. One-class classification is a promising research area in the field of data streams classification. In the One-class classification, only the positive samples are considered to address the class imbalance and drift detection problem by not considering their counterparts. In this paper, an Incremental One-class Ensemble classifier is used to adapt the concept drift problem in streaming data. Model is evaluated with the Spam and Electricity real-world datasets and the model is used to address Gradual and sudden drift with 82.30% and 81.50% accuracy.

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Literature
2.
go back to reference Aggarwal, C.C.: Chapter 9 A Survey of Stream Classification Algorithms (2015) Aggarwal, C.C.: Chapter 9 A Survey of Stream Classification Algorithms (2015)
3.
go back to reference Mehta, S.: Science direct concept drift in streaming data classification: algorithms, platforms and issues. Procedia Comput. Sci. 122, 804–811 (2017)CrossRef Mehta, S.: Science direct concept drift in streaming data classification: algorithms, platforms and issues. Procedia Comput. Sci. 122, 804–811 (2017)CrossRef
4.
go back to reference Zhang, Y., Li, X., Orlowska, M.: One class classification of text streams with concept drift. In: ICDMW Workshop, pp. 116–125 (2008) Zhang, Y., Li, X., Orlowska, M.: One class classification of text streams with concept drift. In: ICDMW Workshop, pp. 116–125 (2008)
7.
go back to reference Bhatt, Y., Patel, N.S.: A survey on one-class classification using ensembles method. IJIRST 1, 19–23 (2014) Bhatt, Y., Patel, N.S.: A survey on one-class classification using ensembles method. IJIRST 1, 19–23 (2014)
8.
go back to reference Li, Z., Y. Xiong, Y., Huang, W.: Drift-detection based incremental ensemble for reacting to different kinds of concept drift. In: 2019 5th International Conference on Big Data Computing and Communications, pp. 107–114 (2019) Li, Z., Y. Xiong, Y., Huang, W.: Drift-detection based incremental ensemble for reacting to different kinds of concept drift. In: 2019 5th International Conference on Big Data Computing and Communications, pp. 107–114 (2019)
11.
go back to reference Sahami, M., Dumais, S., Heckerman, D., Horvitz, E.: A Bayesian approach to filtering junk e-mail. In: Learning for Text Categorization, Papers from the 1998 Workshop, vol. 62, pp. 98–105, July 1998 Sahami, M., Dumais, S., Heckerman, D., Horvitz, E.: A Bayesian approach to filtering junk e-mail. In: Learning for Text Categorization, Papers from the 1998 Workshop, vol. 62, pp. 98–105, July 1998
12.
go back to reference Krawczyk, B., Minku, L.L., Gama, J., Stefanowski, J., Wozniak, M.: Ensemble learning for data stream analysis: a survey. Inf. Fusion 37, 132–156 (2017)CrossRef Krawczyk, B., Minku, L.L., Gama, J., Stefanowski, J., Wozniak, M.: Ensemble learning for data stream analysis: a survey. Inf. Fusion 37, 132–156 (2017)CrossRef
13.
go back to reference Trivedi, S.K., Dey, S.: Interplay between probabilistic classifiers and boosting algorithms for detecting complex unsolicited emails. J. Adv. Comput. Netw. 1, 132–136 (2013)CrossRef Trivedi, S.K., Dey, S.: Interplay between probabilistic classifiers and boosting algorithms for detecting complex unsolicited emails. J. Adv. Comput. Netw. 1, 132–136 (2013)CrossRef
Metadata
Title
Incremental Ensemble of One Class Classifier for Data Streams with Concept Drift Adaption
Authors
Shubhangi Suryawanshi
Anurag Goswami
Pramod Patil
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-16-0401-0_31

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