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2024 | OriginalPaper | Chapter

IRBM: Incremental Restricted Boltzmann Machines for Concept Drift Detection and Adaption in Evolving Data Streams

Authors : Shubhangi Suryawanshi, Anurag Goswami, Pramod Patil

Published in: Advanced Computing

Publisher: Springer Nature Switzerland

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Abstract

In today’s dynamically evolving data landscapes, detecting and adapting to concept drifts in streaming data is imperative. Concept drift occurs when there’s a shift in the statistical characteristics of input features, like their mean or variance, or when the relationship between these features and the target label changes over time. This drift can decrease a model’s accuracy because the model is trained on older data. As the data evolves, the model becomes outdated, which can lead to incorrect predictions and reduced performance. This paper introduces the Incremental Restricted Boltzmann Machine (IRBM), an approach designed to address these challenges. The IRBM adapts the traditional architecture and learning paradigms of Restricted Boltzmann Machines (RBMs) to incrementally process and learn from evolving data streams, ensuring model efficacy and accuracy over time. Through extensive experiments, we demonstrate the IRBM’s ability to swiftly detect concept drifts, adapt its internal representations, and maintain robust performance even when confronted with significant data evolutions. The proposed approach outperforms existing methods with an accuracy of 77.42%, 75.32%, 92.12% and 89.21% for electricity, phishing, weather, and rotating hyperplane respectively. Our findings suggest that the IRBM not only offers an effective approach to understanding and adapting to changing patterns in streaming data but also outperforms the other state-of-the-art techniques.

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Literature
1.
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)
2.
go back to reference Domingos, P., Hulten, G.: Mining high-speed data streams. In: Proceedings of the 6th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 71–80 (2000) Domingos, P., Hulten, G.: Mining high-speed data streams. In: Proceedings of the 6th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 71–80 (2000)
3.
go back to reference Tsymbal, A.: The problem of concept drift: definitions and related work. Computer Science Department, Trinity College, Dublin, Ireland, Technical report, vol. 106 (2004) Tsymbal, A.: The problem of concept drift: definitions and related work. Computer Science Department, Trinity College, Dublin, Ireland, Technical report, vol. 106 (2004)
5.
go back to reference Hesse, G., Lorenz, M.: Conceptual survey on data stream processing systems, pp. 798–803 (2015) Hesse, G., Lorenz, M.: Conceptual survey on data stream processing systems, pp. 798–803 (2015)
6.
go back to reference Mehta, S.: Concept drift in streaming data classification algorithms, platforms and issues. Procedia Comput. Sci. 122, 804–811 (2017)CrossRef Mehta, S.: Concept drift in streaming data classification algorithms, platforms and issues. Procedia Comput. Sci. 122, 804–811 (2017)CrossRef
8.
go back to reference Gama, J., Žliobaite, I., Bifet, A., Pechenizkiy, M., Bouchachia, A.: A survey on concept drift adaptation. ACM Comput. Surv. 46(4), 44 (2014)CrossRef Gama, J., Žliobaite, I., Bifet, A., Pechenizkiy, M., Bouchachia, A.: A survey on concept drift adaptation. ACM Comput. Surv. 46(4), 44 (2014)CrossRef
9.
go back to reference Cohen, L., Avrahami-Bakish, G., Last, M., Kandel, A., Kipersztok, O.: Real-time data mining of non-stationary data streams from sensor networks. Inform. Fusion 9(3), 344–353 (2008)CrossRef Cohen, L., Avrahami-Bakish, G., Last, M., Kandel, A., Kipersztok, O.: Real-time data mining of non-stationary data streams from sensor networks. Inform. Fusion 9(3), 344–353 (2008)CrossRef
10.
go back to reference Lu, J., Liu, A., Dong, F., Gu, F., Gama, J., Zhang, G.: Learning under concept drift: a review. IEEE Trans. Knowl. Data Eng. 31, 2346–2363 (2018) Lu, J., Liu, A., Dong, F., Gu, F., Gama, J., Zhang, G.: Learning under concept drift: a review. IEEE Trans. Knowl. Data Eng. 31, 2346–2363 (2018)
14.
go back to reference Korycki, Ł., Krawczyk, B.: Concept drift detection from multi-class imbalanced data streams. arXiv Learning (2021) Korycki, Ł., Krawczyk, B.: Concept drift detection from multi-class imbalanced data streams. arXiv Learning (2021)
16.
go back to reference Vu, H., Nguyen, T.D., Phung, D.: Detection of unknown anomalies in streaming videos with generative energy-based Boltzmann models. arXiv Computer Vision and Pattern Recognition (2018) Vu, H., Nguyen, T.D., Phung, D.: Detection of unknown anomalies in streaming videos with generative energy-based Boltzmann models. arXiv Computer Vision and Pattern Recognition (2018)
18.
go back to reference Xu, S., Wang, J.: Dynamic extreme learning machine for data stream classification. Neurocomputing 238, 433–449 (2017)CrossRef Xu, S., Wang, J.: Dynamic extreme learning machine for data stream classification. Neurocomputing 238, 433–449 (2017)CrossRef
20.
go back to reference Neto, Á.C.L., Coelho, R.A., de Castro, C.L.: An incremental learning approach using long short-term memory neural networks. J. Control Autom. Electr. Syst. 33, 1457–1465 (2020)CrossRef Neto, Á.C.L., Coelho, R.A., de Castro, C.L.: An incremental learning approach using long short-term memory neural networks. J. Control Autom. Electr. Syst. 33, 1457–1465 (2020)CrossRef
Metadata
Title
IRBM: Incremental Restricted Boltzmann Machines for Concept Drift Detection and Adaption in Evolving Data Streams
Authors
Shubhangi Suryawanshi
Anurag Goswami
Pramod Patil
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-031-56700-1_37

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