Continual learning classification method with the weighted k-nearest neighbor rule for time-varying data space based on the artificial immune system
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摘要
Supervised learning classification methods play an important role in various fields. However, most of them cannot effectively classify the data from time-varying data spaces, for they lack continual learning ability. Inspired by the intelligent mechanism that memory cells of the biological immune system can evolve with the evolution of invaders, a continual learning classification method with the weighted k-nearest neighbor rule for time-varying data space (WKNN-CLCMTVD) is proposed. Memory cells selected by the weighted k-nearest neighbor rule are used to identify the type of testing data. Memory cells are continuously cultivated, updated, and eliminated through learning testing data to improve the classification ability of WKNN-CLCMTVD. It degenerates into a standard supervised learning classification method when all data independent of time. Take experiments on twenty benchmark datasets, a 2-dimensional synthetic dataset, and XJTU-SY rolling element bearing accelerated life test datasets to evaluate the performance of WKNN-CLCMTVD. Results show that it has better classification ability for time-invariant data and outperforms the other methods for time-varying data space. Results also show that its running speed is far faster than that of other continual learning classification methods.
论文关键词:Artificial immune system,Time-varying data,Classification,Continual learning,Weighted k-nearest neighbor
论文评审过程:Received 22 January 2021, Revised 1 December 2021, Accepted 3 January 2022, Available online 10 January 2022, Version of Record 29 January 2022.
论文官网地址:https://doi.org/10.1016/j.knosys.2022.108145