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Warped Mixtures for Nonparametric Cluster Shapes

机译:非参数簇形状的扭曲混合物

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A mixture of Gaussians fit to a single curved or heavy-tailed cluster will report that the data contains many clusters. To produce more appropriate clusterings, we introduce a model which warps a latent mixture of Gaussians to produce nonparametric cluster shapes. The possibly low-dimensional latent mixture model allows us to summarize the properties of the high-dimensional clusters (or density manifolds) describing the data. The number of manifolds, as well as the shape and dimension of each manifold is automatically inferred. We derive a simple inference scheme for this model which analytically integrates out both the mixture parameters and the warping function. We show that our model is effective for density estimation, performs better than infinite Gaussian mixture models at recovering the true number of clusters, and produces interpretable summaries of high-dimensional datasets.
机译:混合到单个弯曲或重尾群集的高斯混合将报告数据包含许多群集。为了产生更合适的聚类,我们引入了一个模型,该模型会使高斯的潜在混合变形以产生非参数的聚类形状。可能的低维潜在混合模型使我们能够总结描述数据的高维簇(或密度流形)的属性。可以自动推断出歧管的数量以及每个歧管的形状和尺寸。我们为该模型导出了一个简单的推理方案,该方案分析性地集成了混合参数和翘曲函数。我们证明了我们的模型对于密度估计是有效的,在恢复集群的真实数量方面比无限高斯混合模型表现更好,并且可以生成可解释的高维数据集摘要。

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