TY - GEN
T1 - Concept Drift Detection by Tracking Weighted Prediction Confidence of Incremental Learning
AU - Wang, Pingfan
AU - Woo, Wailok
AU - Jin, Nanlin
AU - Davies, Duncan
N1 - Funding Information:
This work was supported by the European Regional Development Fund (ERDF) [25R17P01847]; Northumbria University Newcastle, Newcastle Tyne Upon, UK; Notify Technology Ltd, Newcastle, UK
Publisher Copyright:
© 2022 ACM.
PY - 2022/3
Y1 - 2022/3
N2 - Data stream mining is great significant in many real-world scenarios, especially in the big data area. However, conventional machine learning algorithms are incapable to process because of its two characteristics (1) potential unlimited number of data is generated in real-time way, it is impossible to store all the data (2) evolving over time, namely, concept drift, will influence the performance of predictor trained on previous data. Concept drift detection method could detect and locate the concept drift in data stream. However, existing methods only utilize the prediction result as indicator. In this article, we propose a weighted concept drift indicator based on incremental ensemble learning to detect the concept. The indicator not only considers the prediction result, but the change of prediction stability of predictor with occurs of concept drift. Also, an incremental ensemble learning based on vote mechanism is especially used to get constantly updated value of indicator. Based on the experiment result on both benchmark and real-world dataset, our method could effectively detect concept drift and outperform other existing methods.
AB - Data stream mining is great significant in many real-world scenarios, especially in the big data area. However, conventional machine learning algorithms are incapable to process because of its two characteristics (1) potential unlimited number of data is generated in real-time way, it is impossible to store all the data (2) evolving over time, namely, concept drift, will influence the performance of predictor trained on previous data. Concept drift detection method could detect and locate the concept drift in data stream. However, existing methods only utilize the prediction result as indicator. In this article, we propose a weighted concept drift indicator based on incremental ensemble learning to detect the concept. The indicator not only considers the prediction result, but the change of prediction stability of predictor with occurs of concept drift. Also, an incremental ensemble learning based on vote mechanism is especially used to get constantly updated value of indicator. Based on the experiment result on both benchmark and real-world dataset, our method could effectively detect concept drift and outperform other existing methods.
KW - concept drift detection
KW - data stream mining
KW - ensemble learning
KW - incremental learning
KW - prediction stability
UR - http://www.scopus.com/inward/record.url?scp=85131862255&partnerID=8YFLogxK
U2 - 10.1145/3531232.3531264
DO - 10.1145/3531232.3531264
M3 - Conference Proceeding
AN - SCOPUS:85131862255
T3 - ACM International Conference Proceeding Series
SP - 218
EP - 223
BT - IVSP 2022 - 2022 4th International Conference on Image, Video and Signal Processing
PB - Association for Computing Machinery (ACM)
T2 - 4th International Conference on Image, Video and Signal Processing, IVSP 2022
Y2 - 18 March 2022 through 20 March 2022
ER -