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Probabilistic Multilevel Clustering via Composite Transportation Distance

机译:基于复合运输距离的概率多层次聚类

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We propose a novel probabilistic approach to multilevel clustering problems based on composite transportation distance, which is a variant of transportation distance where the underlying metric is Kullback-Leibler divergence. Our method involves solving a joint optimization problem over spaces of probability measures to simultaneously discover grouping structures within groups and among groups. By exploiting the connection of our method to the problem of finding composite transportation barycenters, we develop fast and efficient optimization algorithms even for potentially large-scale multilevel datasets. Finally, we present experimental results with both synthetic and real data to demonstrate the efficiency and scalability of the proposed approach.
机译:我们提出了一种基于复合运输距离的多级聚类问题的新型概率方法,该方法是运输距离的一种变体,其潜在度量是库尔巴克-莱布利尔散度。我们的方法涉及解决概率测度空间上的联合优化问题,以同时发现组内和组间的分组结构。通过利用我们的方法与寻找复合运输重心的问题的联系,我们甚至针对潜在的大规模多级数据集开发了快速有效的优化算法。最后,我们用合成数据和真实数据给出实验结果,以证明所提出方法的效率和可扩展性。

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