Inner spike and slab Bayesian nonparametric models

IF 2 Q2 ECONOMICS
Antonio Canale , Antonio Lijoi , Bernardo Nipoti , Igor Prünster
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引用次数: 2

Abstract

Discrete Bayesian nonparametric models whose expectation is a convex linear combination of a point mass at some point of the support and a diffuse probability distribution allow to incorporate strong prior information, while still being extremely flexible. Recent contributions in the statistical literature have successfully implemented such a modelling strategy in a variety of applications, including density estimation, nonparametric regression and model-based clustering. A thorough study is presented on a large class of nonparametric models, named inner spike and slab hNRMI models and obtained by considering homogeneous normalized random measures with independent increments (hNRMI) with base measure given by a convex linear combination of a point mass and a diffuse probability distribution. In turn, the distributional properties of these models are investigated, with focus on: i) the exchangeable partition probability function they induce, ii) the distribution of the number of distinct values in an exchangeable sample, iii) the posterior predictive distribution, and iv) the distribution of the number of elements that coincide with the only point of the support with positive probability. These theoretical findings represent the main building block for an actual implementation of Bayesian inner spike and slab hNRMI models by means of a generalized Pólya urn scheme.

内部尖峰和板贝叶斯非参数模型
离散贝叶斯非参数模型的期望是某个支持点的点质量和扩散概率分布的凸线性组合,该模型允许结合强的先验信息,同时仍然非常灵活。统计文献中最近的贡献已经在各种应用中成功地实现了这种建模策略,包括密度估计、非参数回归和基于模型的聚类。深入研究了一大类非参数模型,称为内尖峰和板状hNRMI模型,该模型是通过考虑具有独立增量的齐次归一化随机测度(hNRMI)获得的,其基测度由点质量和扩散概率分布的凸线性组合给出。反过来,研究了这些模型的分布性质,重点是:i)它们诱导的可交换分配概率函数,ii)可交换样本中不同值数量的分布,iii)后验预测分布,以及iv)与具有正概率的支撑的唯一点重合的元素的数量的分布。这些理论发现代表了通过广义Pólya-urn方案实际实现贝叶斯内尖峰和板hNRMI模型的主要组成部分。
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来源期刊
CiteScore
3.10
自引率
10.50%
发文量
84
期刊介绍: Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.
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