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Univariate Bayesian nonparametric mixture modeling with unimodal kernels

机译:单峰核的单变量贝叶斯非参数混合建模

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Within the context of mixture modeling, the normal distribution is typically used as the components distribution. However, if a cluster is skewed or heavy tailed, then the normal distribution will be inefficient and many may be needed to model a single cluster. In this paper, we present an attempt to solve this problem. We define a cluster, in the absence of further information, to be a group of data which can be modeled by a unimodal density function. Hence, our intention is to use a family of univariate distribution functions, to replace the normal, for which the only constraint is unimodality. With this aim, we devise a new family of nonparametric unimodal distributions, which has large support over the space of univariate unimodal distributions. The difficult aspect of the Bayesian model is to construct a suitable MCMC algorithm to sample from the correct posterior distribution. The key will be the introduction of strategic latent variables and the use of the Product Space view of Reversible Jump methodology.
机译:在混合物建模的上下文中,通常使用正态分布作为组分分布。但是,如果群集偏斜或拖尾很重,则正态分布将效率低下,可能需要许多建模单个群集。在本文中,我们提出了解决此问题的尝试。在没有更多信息的情况下,我们将集群定义为一组可以通过单峰密度函数建模的数据。因此,我们的意图是使用一族单变量分布函数来代替仅约束为单峰的正态。为此,我们设计了一个新的非参数单峰分布族,该族对单变量单峰分布的空间有很大的支持。贝叶斯模型的困难之处在于构造合适的MCMC算法以从正确的后验分布中采样。关键将是引入战略隐性变量以及使用可逆跳转方法的乘积空间视图。

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