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Learning to cluster using high order graphical models with latent variables

机译:学习使用具有潜在变量的高阶图形模型进行聚类

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This paper proposes a very general max-margin learning framework for distance-based clustering. To this end, it formulates clustering as a high order energy minimization problem with latent variables, and applies a dual decomposition approach for training this model. The resulting framework allows learning a very broad class of distance functions, permits an automatic determination of the number of clusters during testing, and is also very efficient. As an additional contribution, we show how our method can be generalized to handle the training of a very broad class of important models in computer vision: arbitrary high-order latent CRFs. Experimental results verify its effectiveness.
机译:本文为基于距离的聚类提出了一个非常通用的最大利润学习框架。为此,它将聚类公式化为具有潜在变量的高阶能量最小化问题,并应用双重分解方法来训练该模型。由此产生的框架允许学习非常广泛的距离函数类,允许在测试过程中自动确定簇的数量,并且效率很高。作为一个额外的贡献,我们展示了如何将我们的方法推广到计算机视觉中非常广泛的重要模型的训练:任意高阶潜在CRF。实验结果证明了其有效性。

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