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首页> 外文期刊>International Journal of Fuzzy Systems >Random Feature Map-Based Multiple Kernel Fuzzy Clustering with All Feature Weights
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Random Feature Map-Based Multiple Kernel Fuzzy Clustering with All Feature Weights

机译:所有特征权重的基于随机特征图的多核模糊聚类

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摘要

Kernel clustering methods are useful to discover the non-linear structures hidden in data, but they suffer from the difficulty of kernel selection and high computational complexity. In this paper, we propose a novel random feature map-based multiple kernel fuzzy clustering method with all feature weights, in which low-rank randomized features of multiple kernels are generated by random Fourier feature map and Quasi-Monte Carlo feature map, and maximum entropy technique is applied to optimize the weights of all feature attributes. The proposed method is effective to extract important kernel and the important attributes of the kernel so as to achieve good clustering results. What is more, compared with conventional kernel clustering methods, our method is much more time-saving and is available to large data sets. The experiments based on various data sets show the superiority and efficiency of the proposed method.
机译:内核聚类方法对于发现隐藏在数据中的非线性结构很有用,但是它们遭受内核选择的困难和计算复杂性的困扰。在本文中,我们提出了一种基于新的具有所有特征权重的基于随机特征图的多核模糊聚类方法,该方法通过随机傅里叶特征图和拟蒙特卡洛特征图生成最大概率的低秩随机数。熵技术被用于优化所有特征属性的权重。所提方法有效地提取了重要的核和核的重要属性,从而取得了较好的聚类结果。而且,与传统的内核集群方法相比,我们的方法省时得多,并且可用于大型数据集。基于各种数据集的实验证明了该方法的优越性和有效性。

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