动态环境中多类别在线模糊分类器的研究 / A Study on Multi-Class Online Fuzzy Classifiers for Dynamic Environments
1️⃣ 一句话总结
这篇论文提出了一种适用于动态环境的多类别在线模糊分类器,它通过逐步学习实时数据来扩展传统仅处理两类问题的在线模糊分类方法,并在合成动态数据和多个基准数据集上验证了其有效性。
This paper proposes a multi-class online fuzzy classifier for dynamic environments. A fuzzy classifier comprises a set of fuzzy if-then rules where human users determine the antecedent fuzzy sets beforehand. In contrast, the consequent real values are determined by learning from training data. In an online framework, not all training dataset patterns are available beforehand. Instead, only a few patterns are available at a time step, and the subsequent patterns become available at the following time steps. The conventional online fuzzy classifier considered only two-class problems. This paper investigates the extension to the conventional fuzzy classifiers for multi-class problems. We evaluate the performance of the multi-class online fuzzy classifiers through numerical experiments on synthetic dynamic data and also several benchmark datasets.
动态环境中多类别在线模糊分类器的研究 / A Study on Multi-Class Online Fuzzy Classifiers for Dynamic Environments
这篇论文提出了一种适用于动态环境的多类别在线模糊分类器,它通过逐步学习实时数据来扩展传统仅处理两类问题的在线模糊分类方法,并在合成动态数据和多个基准数据集上验证了其有效性。
源自 arXiv: 2602.14375