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Slice sampling normalized kernel-weighted completely random measure mixture models

机译:切片采样标准化内核加权完全随机测量混合模型

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A number of dependent nonparametric processes have been proposed to model non-stationary data with unknown latent dimensionality. However, the inference algorithms are often slow and unwieldy, and are in general highly specific to a given model formulation. In this paper, we describe a large class of dependent nonparametric processes, including several existing models, and present a slice sampler that allows efficient inference across this class of models.
机译:已经提出了许多依赖性非参数进程来模拟具有未知潜在维度的非静止数据。然而,推理算法通常慢且笨重,并且通常对给定的模型配方非常特别。在本文中,我们描述了一大类依赖性非参数过程,包括若干现有模型,并呈现了允许在这类模型中有效推论的切片采样器。

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