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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >On rival penalization controlled competitive learning for clustering with automatic cluster number selection
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On rival penalization controlled competitive learning for clustering with automatic cluster number selection

机译:基于竞争性惩罚控制的竞争性学习聚类与自动聚类数选择

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摘要

The existing rival penalized competitive learning (RPCL) algorithm and its variants have provided an attractive way to perform data clustering without knowing the exact number of clusters. However, their performance is sensitive to the preselection of the rival delearning rate. In this paper, we further investigate the RPCL and present a mechanism to control the strength of rival penalization dynamically. Consequently, we propose the rival penalization controlled competitive learning (RPCCL) algorithm and its stochastic version. In each of these algorithms, the selection of the delearning rate is circumvented using a novel technique. We compare the performance of RPCCL to RPCL in Gaussian mixture clustering and color image segmentation, respectively. The experiments have produced the promising results.
机译:现有的竞争性惩罚性竞争学习(RPCL)算法及其变体提供了一种有吸引力的方式来执行数据聚类,而无需知道聚类的确切数量。但是,他们的表现对竞争对手的学习率的预先选择很敏感。在本文中,我们将进一步研究RPCL,并提出一种机制来动态控制竞争对手的处罚力度。因此,我们提出了竞争对手的惩罚控制竞争学习(RPCCL)算法及其随机版本。在这些算法的每一个中,使用新颖的技术来规避脱学习率的选择。在高斯混合聚类和彩色图像分割中,我们分别比较了RPCCL和RPCL的性能。实验产生了有希望的结果。

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