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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Fast Parzen density estimation using clustering-based branch and bound
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Fast Parzen density estimation using clustering-based branch and bound

机译:使用基于聚类的分支定界法进行快速Parzen密度估计

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摘要

This correspondence proposes a fast Parzen density estimation algorithm that would be especially useful in nonparametric discriminant analysis problems. By preclustering the data and applying a simple branch and bound procedure to the clusters, significant numbers of data samples that would contribute little to the density estimate can be excluded without detriment to actual evaluation via the kernel functions. This technique is especially helpful in the multivariant case, and does not require a uniform sampling grid. The proposed algorithm may also be used in conjunction with the data reduction technique of Fukunaga and Hayes (1989) to further reduce the computational load. Experimental results are presented to verify the effectiveness of this algorithm.
机译:该对应关系提出了一种快速的Parzen密度估计算法,该算法在非参数判别分析问题中特别有用。通过对数据进行预聚类并将简单的分支定界过程应用于群集,可以排除对密度估计几乎没有贡献的大量数据样本,而不会损害通过内核函数进行的实际评估。该技术在多变量情况下特别有用,并且不需要统一的采样网格。所提出的算法也可以与Fukunaga和Hayes(1989)的数据约简技术结合使用,以进一步减少计算量。实验结果证明了该算法的有效性。

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