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A unifying approach to hard and probabilistic clustering

机译:艰难和概率聚类的统一方法

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We derive the clustering problem from first principles showing that the goal of achieving a probabilistic, or "hard", multi class clustering result is equivalent to the algebraic problem of a completely positive factorization under a doubly stochastic constraint. We show that spectral clustering, normalized cuts, kernel K-means and the various normalizations of the associated affinity matrix are particular instances and approximations of this general principle. We propose an efficient algorithm for achieving a completely positive factorization and extend the basic clustering scheme to situations where partial label information is available.
机译:我们从第一个原则中得出聚类问题,显示实现概率或“硬”,多类聚类结果等于在双随机约束下完全正分解的代数问题。我们表明,谱聚类,归一化切割,内核K均值和相关关联矩阵的各种常规态是该一般原理的特定情况和近似。我们提出了一种实现完全正分解的有效算法,并将基本聚类方案扩展到部分标签信息可用的情况。

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