eprintid: 12482 rev_number: 2 eprint_status: archive userid: 1 dir: disk0/00/01/24/82 datestamp: 2023-11-10 03:27:02 lastmod: 2023-11-10 03:27:02 status_changed: 2023-11-10 01:48:51 type: conference_item metadata_visibility: show creators_name: Ghani, N.L.A. creators_name: Aziz, I.A. creators_name: Mehat, M. title: Concept Drift Detection on Unlabeled Data Streams: A Systematic Literature Review ispublished: pub keywords: Advanced Analytics; Big data; Data mining; Deterioration; Learning systems; Supervised learning, Data distribution; Data stream mining; Detection methods; Experimental evaluation; Learning performance; Learning process; Potential change; Systematic literature review, Data streams note: cited By 9; Conference of 2020 IEEE Conference on Big Data and Analytics, ICBDA 2020 ; Conference Date: 17 November 2020 Through 19 November 2020; Conference Code:165892 abstract: Dynamic data streams applications are bound to potential changes in data distribution, of which in the context of data stream mining, will cause concept drift. Data stream mining model must have the capability to adapt to concept drift, otherwise, risk the deterioration of its learning performance. Most of the existing surveys on concept drift detection methods focused on labeled data streams, that may be inapplicable to scenario where true labels are unavailable. The aim of this systematic literature review is to study the existing concept drift detection methods on unlabeled data streams, focusing on the learning process and the way concept drift is monitored in the data stream mining model. A total of 15 articles are selected for final analysis, and it is found that most of the drift detection methods were applied in a supervised learning setting. An experimental evaluation of the methods can be performed in the future work to investigate their performance in unsupervised learning setting. © 2020 IEEE. date: 2020 publisher: Institute of Electrical and Electronics Engineers Inc. official_url: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85099684409&doi=10.1109%2fICBDA50157.2020.9289802&partnerID=40&md5=6b7cf6bdd29382114490b732a8f4ad74 id_number: 10.1109/ICBDA50157.2020.9289802 full_text_status: none publication: 2020 IEEE Conference on Big Data and Analytics, ICBDA 2020 pagerange: 61-65 refereed: TRUE isbn: 9781728192468 citation: Ghani, N.L.A. and Aziz, I.A. and Mehat, M. (2020) Concept Drift Detection on Unlabeled Data Streams: A Systematic Literature Review. In: UNSPECIFIED.