Evolved fuzzy min-max neural network for new-labeled data classification
作者:Yanjuan Ma, Jinhai Liu, Fuming Qu, Hongfei Zhu
摘要
Pattern classification is a fundamental problem in many data-driven application domains. New-labeled data refers to the data with the labels that are new and different from source labels. How to learn the new-labeled data is a crucial research in the data classification. In this paper, an evolved fuzzy min-max neural network for new-labeled data classification (FMM-NLA) is proposed. In FMM-NLA, the network can be self-evolved. Unlike the traditional FMM methods, the trained network of FMM-NLA can be expanded when new-labeled data added. FMM-NLA is a continuing-learning method, which can realize the continuing training process without retraining all the data. In order to verify the superiority of the proposed method, benchmark data sets are used. The experimental results show that FMM-NLA is effective in handling new-labeled data. Moreover, the application result on the pipeline defect recognition in depth shows that FMM-NLA is effective in solving the new-labeled defect recognition problem.
论文关键词:Pattern classification, New-labeled data, Fuzzy min-max, Neural network, Continuing-learning
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10489-021-02259-9