Recent Advances in Concept Drift Adaptation Methods for Deep Learning

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Abstract

In the “Big Data” age, the amount and distribution of data have increased wildly and changed over time in various time-series-based tasks, e.g weather prediction, network intrusion detection. However, deep learning models may become outdated facing variable input data distribution, which is called concept drift. To address this problem, large number of samples are usually required to update deep learning models, which is impractical in many realistic applications. This challenge drives researchers to explore the effective ways to adapt deep learning models to concept drift. In this paper, we first mathematically describe the categories of concept drift including abrupt drift, gradual drift, recurrent drift, incremental drift. We then divide existing studies into two categories (i.e., model parameter updating and model structure updating), and analyze the pros and cons of representative methods in each category. Finally, we evaluate the performance of these methods, and point out the future directions of concept drift adaptation for deep learning.

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Yuan, L., Li, H., Xia, B., Gao, C., Liu, M., Yuan, W., & You, X. (2022). Recent Advances in Concept Drift Adaptation Methods for Deep Learning. In IJCAI International Joint Conference on Artificial Intelligence (pp. 5654–5661). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2022/788

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