论文标题

一类用于多项式概率模型的共轭先验,其中包括多元正常一个

A Class of Conjugate Priors for Multinomial Probit Models which Includes the Multivariate Normal One

论文作者

Fasano, Augusto, Durante, Daniele

论文摘要

多项式概率模型通常是实现的表示,用于学习如何随p所观察到的预测因子而变化的类别响应数据的类概率。尽管已经开发了几种常见的方法来进行估计,推理和分类,但贝叶斯推断仍在落后。这是由于显然没有可易于处理的共轭先验,这可能有助于对多项式概率系数的后部推断。这样的问题促使人们努力发展有效的马尔可夫链蒙特卡洛方法,但最先进的解决方案仍然面临着严重的计算瓶颈,尤其是在高维度下。在本文中,我们表明,整个统一偏度正常(Sun)分布都与多种多项式概率模型共轭。利用此结果和日落性能,我们根据几种感兴趣的功能的封闭形式的结果以及开发基于可缩放和准确的变化近似近似的独立和相同分布的样品来改进后推理和分类的最新解决方案,以进行后推理和分类。如模拟和胃肠道施用中所示,相对于当前方法的改进的幅度在实际上,当重点放在高维研究上时,相对于当前方法尤为明显。

Multinomial probit models are routinely-implemented representations for learning how the class probabilities of categorical response data change with p observed predictors. Although several frequentist methods have been developed for estimation, inference and classification within such a class of models, Bayesian inference is still lagging behind. This is due to the apparent absence of a tractable class of conjugate priors, that may facilitate posterior inference on the multinomial probit coefficients. Such an issue has motivated increasing efforts toward the development of effective Markov chain Monte Carlo methods, but state-of-the-art solutions still face severe computational bottlenecks, especially in high dimensions. In this article, we show that the entire class of unified skew-normal (SUN) distributions is conjugate to several multinomial probit models. Leveraging this result and the SUN properties, we improve upon state-of-the-art solutions for posterior inference and classification both in terms of closed-form results for several functionals of interest, and also by developing novel computational methods relying either on independent and identically distributed samples from the exact posterior or on scalable and accurate variational approximations based on blocked partially-factorized representations. As illustrated in simulations and in a gastrointestinal lesions application, the magnitude of the improvements relative to current methods is particularly evident, in practice, when the focus is on high-dimensional studies.

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