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  • title: Solving Soft Clustering Ensemble via k-Sparse Discrete Wasserstein Barycenter
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            Solving Soft Clustering Ensemble via k-Sparse Discrete Wasserstein Barycenter
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            Solving Soft Clustering Ensemble via k-Sparse Discrete Wasserstein Barycenter

            Dec 6, 2021

            Speakers

            RQ

            Ruizhe Qin

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            ML

            Mengying Li

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            HD

            Hu Ding

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            About

            Clustering ensemble is one of the most important problems in ensemble learning. Though it has been extensively studied in the past decades, the existing methods often suffer from the issues like high computational complexity and the difficulty on understanding the consensus. In this paper, we study the more general soft clustering ensemble problem where each individual solution is a soft clustering. We connect it to the well-known discrete Wasserstein barycenter problem in geometry. Based on som…

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