BNPdensity: Bayesian nonparametric mixture modelling in R

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY
J. Arbel, G. Kon Kam King, A. Lijoi, L. Nieto-Barajas, I. Prünster
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引用次数: 1

Abstract

Robust statistical data modelling under potential model mis-specification often requires leaving the parametric world for the nonparametric. In the latter, parameters are infinite dimensional objects such as functions, probability distributions or infinite vectors. In the Bayesian nonparametric approach, prior distributions are designed for these parameters, which provide a handle to manage the complexity of nonparametric models in practice. However, most modern Bayesian nonparametric models seem often out of reach to practitioners, as inference algorithms need careful design to deal with the infinite number of parameters. The aim of this work is to facilitate the journey by providing computational tools for Bayesian nonparametric inference. The article describes a set of functions available in the R package BNPdensity in order to carry out density estimation with an infinite mixture model, including all types of censored data. The package provides access to a large class of such models based on normalised random measures, which represent a generalisation of the popular Dirichlet process mixture. One striking advantage of this generalisation is that it offers much more robust priors on the number of clusters than the Dirichlet. Another crucial advantage is the complete flexibility in specifying the prior for the scale and location parameters of the clusters, because conjugacy is not required. Inference is performed using a theoretically grounded approximate sampling methodology known as the Ferguson & Klass algorithm. The package also offers several goodness-of-fit diagnostics such as QQ plots, including a cross-validation criterion, the conditional predictive ordinate. The proposed methodology is illustrated on a classical ecological risk assessment method called the species sensitivity distribution problem, showcasing the benefits of the Bayesian nonparametric framework.

bnp密度:贝叶斯非参数混合建模
在潜在的模型错误规范下,稳健的统计数据建模通常需要离开参数世界而进入非参数世界。在后者中,参数是无限维对象,如函数、概率分布或无限向量。在贝叶斯非参数方法中,为这些参数设计了先验分布,为实际中管理非参数模型的复杂性提供了一个把柄。然而,大多数现代贝叶斯非参数模型对于实践者来说似乎经常是遥不可及的,因为推理算法需要仔细设计来处理无限数量的参数。这项工作的目的是通过为贝叶斯非参数推理提供计算工具来促进这一过程。本文描述了R包BNPdensity中可用的一组函数,用于对无限混合模型(包括所有类型的截尾数据)进行密度估计。该包提供了访问一个大的类这样的模型基于标准化的随机措施,这代表了流行的狄利克雷过程混合物的推广。这种泛化的一个显著优点是,它提供了比狄利克雷更健壮的聚类数量先验。另一个关键的优点是在指定集群的规模和位置参数的先验时完全灵活,因为不需要共轭。推理是使用一种被称为弗格森(Ferguson)的理论基础近似抽样方法进行的。Klass算法。该软件包还提供了一些适合度诊断,如QQ图,包括交叉验证标准,条件预测坐标。该方法以物种敏感性分布问题为例,展示了贝叶斯非参数框架的优越性。
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来源期刊
Australian & New Zealand Journal of Statistics
Australian & New Zealand Journal of Statistics 数学-统计学与概率论
CiteScore
1.30
自引率
9.10%
发文量
31
审稿时长
>12 weeks
期刊介绍: The Australian & New Zealand Journal of Statistics is an international journal managed jointly by the Statistical Society of Australia and the New Zealand Statistical Association. Its purpose is to report significant and novel contributions in statistics, ranging across articles on statistical theory, methodology, applications and computing. The journal has a particular focus on statistical techniques that can be readily applied to real-world problems, and on application papers with an Australasian emphasis. Outstanding articles submitted to the journal may be selected as Discussion Papers, to be read at a meeting of either the Statistical Society of Australia or the New Zealand Statistical Association. The main body of the journal is divided into three sections. The Theory and Methods Section publishes papers containing original contributions to the theory and methodology of statistics, econometrics and probability, and seeks papers motivated by a real problem and which demonstrate the proposed theory or methodology in that situation. There is a strong preference for papers motivated by, and illustrated with, real data. The Applications Section publishes papers demonstrating applications of statistical techniques to problems faced by users of statistics in the sciences, government and industry. A particular focus is the application of newly developed statistical methodology to real data and the demonstration of better use of established statistical methodology in an area of application. It seeks to aid teachers of statistics by placing statistical methods in context. The Statistical Computing Section publishes papers containing new algorithms, code snippets, or software descriptions (for open source software only) which enhance the field through the application of computing. Preference is given to papers featuring publically available code and/or data, and to those motivated by statistical methods for practical problems.
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