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Continual learning classification method with new labeled data based on the artificial immune system

机译:基于人工免疫系统的新标记数据的连续学习分类方法

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摘要

In this paper, a new supervised learning classification method, continual learning classification method with new labeled data based on the artificial immune system (CLCMNLD), is proposed as a new way to improve the classification performance in real-time by continually learning the new labeled data during the testing stage. It is inspired by the mechanism that vaccines can enhance immunity. New types of memory cells were continuously cultured by learning new labeled data during the testing stage. CLCMNLD will degenerate into a common supervised learning classification method when there is no new labeled data comes out during the testing stage. The effectiveness of the proposed CLCMNLD is tested on twenty well-known datasets from the UCI Machine Learning Repository that are commonly used in the domain of data classification. The experiments reveal that CLCMNLD has better classification performance when it degenerates into a common supervised learning classification method, and it outperforms the other methods when there are some new labeled data comes out during the testing stage. The more types of new labeled data, the more advantages it has. (C) 2020 Elsevier B.V. All rights reserved.
机译:在本文中,提出了一种新的监督分类方法,基于人工免疫系统(CLCMNLD)的新标记数据的连续学习分类方法,作为通过不断学习新标记的实时提高分类性能的新方法测试阶段期间的数据。它受到疫苗可以增强免疫力的机制的启发。通过在测试阶段学习新标记数据,不断培养新类型的存储器单元。当测试阶段没有新的标记数据时,CLCMNLD将退化为共同的监督学习分类方法。所提出的CLCMNLD的有效性在来自UCI机器学习存储库的二十个众所周知的数据集上测试,该数据集通常用于数据分类域中。实验表明,当它退化为共同的监督学习分类方法时,CLCMNLD具有更好的分类性能,并且当有一些新的标记数据出现在测试阶段时,它越优于其他方法。新标记数据的类型越多,它的优势就越多。 (c)2020 Elsevier B.V.保留所有权利。

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