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Estimation of cluster centroids in presence of noisy observations

机译:在存在嘈杂的观察中估算集群质心

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This paper considers the problem of clustering vector-valued datasets whose replicate observations are contaminated by weighted additive zero-mean white measurement noise. A corresponding error model of the cluster centroid is developed. Subsequently, an optimal iterative algorithm is proposed for updating cluster centroids obtained by using the k-means algorithm implemented on each set of noisy observations. The gain of the proposed algorithm aims for periteration minimization of the mean square estimate error. Three other methods are considered for performance evaluation. A numerical toy example is presented in order to illustrate the performance capabilities of the proposed method.
机译:本文考虑通过加权添加剂零平均白色测量噪声污染的传染媒介值数据集的群体污染。开发了群集质心的相应错误模型。随后,提出了一种最佳迭代算法,用于更新通过使用在每组噪声观测上实现的K-means算法而获得的簇质心。所提出的算法的增益旨在最小化均线估计误差。考虑三种其他方法进行绩效评估。提供了一个数值玩具示例,以说明所提出的方法的性能能力。

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