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Dynamic Clustering via Asymptotics of the Dependent Dirichlet Process Mixture

机译:通过依赖性Dirichlet工艺混合物的渐近学的动态聚类

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This paper presents a novel algorithm, based upon the dependent Dirichlet process mixture model (DDPMM), for clustering batch-sequential data containing an unknown number of evolving clusters. The algorithm is derived via a low-variance asymptotic analysis of the Gibbs sampling algorithm for the DDPMM, and provides a hard clustering with convergence guarantees similar to those of the k-means algorithm. Empirical results from a synthetic test with moving Gaussian clusters and a test with real ADS-B aircraft trajectory data demonstrate that the algorithm requires orders of magnitude less computational time than contemporary probabilistic and hard clustering algorithms, while providing higher accuracy on the examined datasets.
机译:本文介绍了一种基于从属Dirichlet过程混合模型(DDPMM)的新颖算法,用于簇聚类包含未知数量的演化集群的批量顺序数据。通过对DDPMM的GIBBS采样算法的低方差渐次分析来导出算法,并提供与K-Means算法类似的收敛保证的硬群。具有移动高斯群的合成测试的经验结果和具有真实ADS-B飞机轨迹数据的测试表明,该算法需要比当代概率和硬群算法的计算时间较少的数量级,同时在检查的数据集中提供更高的准确性。

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