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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Incremental Local Distribution-Based Clustering Using Bayesian Adaptive Resonance Theory
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Incremental Local Distribution-Based Clustering Using Bayesian Adaptive Resonance Theory

机译:基于贝叶斯自适应共振理论的基于增量局部分布的聚类

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摘要

Most of the existing Bayesian clustering algorithms perform well on the balanced data. When the data are highly imbalanced, these Bayesian clustering algorithms tend to strongly favor the larger clusters, but provide a notably low detection of the smaller clusters. In this paper, we present an incremental local distribution-based clustering algorithm with the Bayesian adaptive resonance theory (ILBART). This algorithm is developed to adapt itself to a changing environment without using any predefined parameters. The algorithm not only accurately finds the clusters, even in data sets with a severely imbalanced distribution, but also efficiently processes the dynamic data according to the evolving relationships among the clusters. We test our proposed algorithm with experiments conducted on several imbalanced data sets. The experimental results show that our proposed algorithm performs well for clustering imbalanced data and can also obtain a better performance than many other relevant clustering algorithms in several performance indices.
机译:大多数现有的贝叶斯聚类算法在平衡数据上表现良好。当数据高度不平衡时,这些贝叶斯聚类算法倾向于强烈偏爱较大的聚类,但对较小聚类的检测却很低。在本文中,我们提出了一种基于贝叶斯自适应共振理论(ILBART)的基于增量局部分布的聚类算法。开发该算法是为了使其自身适应不断变化的环境,而无需使用任何预定义的参数。该算法不仅可以准确地找到聚类,甚至可以在分布严重不平衡的数据集中找到聚类,还可以根据聚类之间不断发展的关系有效地处理动态数据。我们通过对几个不平衡数据集进行的实验来测试我们提出的算法。实验结果表明,本文提出的算法在不均衡数据的聚类中表现良好,在多个性能指标上也比许多其他相关聚类算法具有更好的性能。

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