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https://dspace.iiti.ac.in/handle/123456789/4827
Title: | Adaptive Online Learning with Regularized Kernel for One-Class Classification |
Authors: | Gautam, Chandan Tiwari, Aruna Ahuja, Kapil |
Keywords: | Anomaly detection;Benchmarking;Classification (of information);Data streams;Learning systems;Adaptive online learning;Changing environment;Extreme learning machine;Incremental learning;One-class Classification;One-class classifier;Real-time anomaly detections;Training and testing;E-learning |
Issue Date: | 2021 |
Publisher: | Institute of Electrical and Electronics Engineers Inc. |
Citation: | Gautam, C., Tiwari, A., Suresh, S., & Ahuja, K. (2021). Adaptive online learning with regularized kernel for one-class classification. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 51(3), 1917-1932. doi:10.1109/TSMC.2019.2907672 |
Abstract: | In the past few years, kernel-based one-class extreme learning machine (ELM) receives quite a lot of attention by researchers for offline/batch learning due to its noniterative and fast learning capability. This paper extends this concept for adaptive online learning with regularized kernel-based one-class ELM classifiers for detection of outliers, and are collectively referred to as ORK-OCELM. Two frameworks, viz., boundary and reconstruction, are presented to detect the target class in ORK-OCELM. The kernel hyperplane-based baseline one-class ELM model considers whole data in a single chunk, however, the proposed one-class classifiers are adapted in an online fashion from the stream of training samples. The performance of ORK-OCELM is evaluated on a standard benchmark as well as synthetic datasets for both types of environments, i.e., stationary and nonstationary. While evaluating on stationary datasets, these classifiers are compared against batch learning-based one-class classifiers. Similarly, while evaluating on nonstationary datasets, the comparison is done with incremental learning-based online one-class classifiers. The results indicate that the proposed classifiers yield better or similar outcomes for both. In the nonstationary dataset evaluation, adaptability of the proposed classifiers in a changing environment is also demonstrated. It is further shown that the proposed classifiers have large stream data handling capability even under limited system memory. Moreover, the proposed classifiers gain significant time improvement compared to traditional online one-class classifiers (in all aspects of training and testing). A faster learning ability of the proposed classifiers makes them more suitable for real-time anomaly detection. © 2013 IEEE. |
URI: | https://doi.org/10.1109/TSMC.2019.2907672 https://dspace.iiti.ac.in/handle/123456789/4827 |
ISSN: | 2168-2216 |
Type of Material: | Journal Article |
Appears in Collections: | Department of Computer Science and Engineering |
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