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Computational efficient Variational Bayesian Gaussian Mixture Models via Coreset

机译:通过核集计算有效的变分贝叶斯高斯混合模型

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Variational Bayesian Gaussian Mixture Model is a popular clustering algorithm with a reliable performance. However, it is noted that the model fitting process takes long time, especially when dealing with large scale data, since it utilizes the whole dataset. To address this issue, in paper we propose a new algorithm termed a weighted VBGMM via Coreset. Specifically, a new coreset construction method is first proposed to sample the data which is used to fit the model. To evaluate the algorithm, two datasets are used: 1) six rat kidney images datasets 2) three human kidney images datasets. The results show that our proposed algorithm is much faster (~ 20 times) comparing to classic VBGMM while maintaining the similar performance on whole dataset.
机译:变分贝叶斯高斯混合模型是一种性能可靠的流行聚类算法。但是,请注意,模型拟合过程要花费很长时间,尤其是在处理大规模数据时,因为它会利用整个数据集。为了解决这个问题,本文提出了一种通过Coreset称为加权VBGMM的新算法。具体而言,首先提出了一种新的核心集构建方法,以对用于拟合模型的数据进行采样。为了评估该算法,使用了两个数据集:1)六个大鼠肾脏图像数据集2)三个人类肾脏图像数据集。结果表明,与经典的VBGMM相比,我们提出的算法要快得多(约20倍),同时在整个数据集上保持相似的性能。

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