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Identifying Finite Mixtures of Nonparametric Product Distributions and Causal Inference of Confounders

机译:识别非参数产品分布的有限混合和混杂因素的因果推论

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We propose a kernel method to identify finite mixtures of nonparametric product distributions. It is based on a Hilbert space embedding of the joint distribution. The rank of the constructed tensor is equal to the number of mixture components. We present an algorithm to recover the components by partitioning the data points into clusters such that the variables are jointly conditionally independent given the cluster. This method can be used to identify finite confounders.
机译:我们提出了一种核方法来识别非参数产品分布的有限混合。它基于联合分布的希尔伯特空间嵌入。构造张量的等级等于混合分量的数量。我们提出了一种通过将数据点划分为聚类来恢复组件的算法,以使变量在给定聚类的情况下共同有条件地独立。该方法可用于识别有限混杂因子。

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