4.4 Article

Continual learning classification method with single-label memory cells based on the intelligent mechanism of the biological immune system

期刊

JOURNAL OF INTELLIGENT & FUZZY SYSTEMS
卷 42, 期 4, 页码 3975-3991

出版社

IOS PRESS
DOI: 10.3233/JIFS-212226

关键词

Classification; continual learning; biological immune system; machine learning; artificial immune algorithm

资金

  1. National Natural Science Foundation of China [52075310]

向作者/读者索取更多资源

This paper proposes a classification method based on the continual learning mechanism of the biological immune system. It uses single-label memory cells to identify the types of testing data and continuously learns new data to enhance its classification ability. Experimental results show that the method performs well as both a standard batch learning classification method and in handling unseen types of data.
The traditional batch learning classification methods need to obtain all kinds of data once before training. This makes them unable to recognize the data from the unseen types and cannot continuously enhance their classification ability through learning the testing data in the testing process, because they lack continual learning ability. Inspired by the continual learning mechanism of the biological immune system (BIS), this paper proposed a continual learning classification method with single-label memory cells (S-CLCM). The type of testing data is identified by memory cells, and the data type from unseen types is determined by an affinity threshold. New memory cells are cultivated continuously by learning the testing data to enhance the classification ability of S-CLCM gradually. Every memory cell has the same size and a unique type. It becomes a standard batch learning classification method or a standard clustering method under certain conditions. Take the experiments on twenty benchmark datasets to estimate its classification performance and possible superiority. Results show S-CLCM has good performance when it becomes a standard batch learning classification method, and S-CLCM is superior to the other classical classification algorithms when the data from unseen types or new labeled data appear during the testing process. It can improve the classification accuracy by up to 33%, and by at least 14%.

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