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Robust dataset classification approach based on neighbor searching and kernel fuzzy c-means

机译:基于邻域搜索和核模糊c均值的鲁棒数据集分类方法

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摘要

Dataset classification is an essential fundament of computational intelligence in cyber-physical systems (CPS). Due to the complexity of CPS dataset classification and the uncertainty of clustering number, this paper focuses on clarifying the dynamic behavior of acceleration dataset which is achieved from micro electro mechanical systems (MEMS) and complex image segmentation. To reduce the impact of parameters uncertainties with dataset classification, a novel robust dataset classification approach is proposed based on neighbor searching and kernel fuzzy c-means (NSKFCM) methods. Some optimized strategies, including neighbor searching, controlling clustering shape and adaptive distance kernel function, are employed to solve the issues of number of clusters, the stability and consistency of classification, respectively. Numerical experiments finally demonstrate the feasibility and robustness of the proposed method.
机译:数据集分类是网络物理系统(CPS)中计算智能的重要基础。由于CPS数据集分类的复杂性和聚类数的不确定性,本文着重于阐明由微机电系统(MEMS)和复杂图像分割实现的加速度数据集的动态行为。为了减少数据集分类对参数不确定性的影响,提出了一种基于邻居搜索和核模糊c均值(NSKFCM)方法的鲁棒数据集分类方法。分别采用邻居搜索,控制聚类形状和自适应距离核函数等优化策略分别解决了聚类数量,分类稳定性和一致性问题。数值实验最终证明了该方法的可行性和鲁棒性。

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