Department of Statistics, Virginia Tech.
Addiction Recovery Research Center, Virginia Tech Carilion Research Institute.
J Exp Anal Behav. 2019 Mar;111(2):239-251. doi: 10.1002/jeab.504. Epub 2019 Feb 19.
Statistical inference (including interval estimation and model selection) is increasingly used in the analysis of behavioral data. As with many other fields, statistical approaches for these analyses traditionally use classical (i.e., frequentist) methods. Interpreting classical intervals and p-values correctly can be burdensome and counterintuitive. By contrast, Bayesian methods treat data, parameters, and hypotheses as random quantities and use rules of conditional probability to produce direct probabilistic statements about models and parameters given observed study data. In this work, we reanalyze two data sets using Bayesian procedures. We precede the analyses with an overview of the Bayesian paradigm. The first study reanalyzes data from a recent study of controls, heavy smokers, and individuals with alcohol and/or cocaine substance use disorder, and focuses on Bayesian hypothesis testing for covariates and interval estimation for discounting rates among various substance use disorder profiles. The second example analyzes hypothetical environmental delay-discounting data. This example focuses on using historical data to establish prior distributions for parameters while allowing subjective expert opinion to govern the prior distribution on model preference. We review the subjective nature of specifying Bayesian prior distributions but also review established methods to standardize the generation of priors and remove subjective influence while still taking advantage of the interpretive advantages of Bayesian analyses. We present the Bayesian approach as an alternative paradigm for statistical inference and discuss its strengths and weaknesses.
统计推断(包括区间估计和模型选择)在行为数据的分析中越来越多地被使用。与许多其他领域一样,这些分析的统计方法传统上使用经典(即频率主义)方法。正确解释经典区间和 p 值可能会很繁琐和违反直觉。相比之下,贝叶斯方法将数据、参数和假设视为随机量,并使用条件概率规则根据观察到的研究数据对模型和参数做出直接的概率陈述。在这项工作中,我们使用贝叶斯程序重新分析了两个数据集。在分析之前,我们概述了贝叶斯范例。第一项研究重新分析了最近一项关于对照、重度吸烟者以及同时患有酒精和/或可卡因物质使用障碍个体的研究数据,并侧重于贝叶斯协变量假设检验和各种物质使用障碍特征的折扣率区间估计。第二个例子分析了假设的环境延迟折扣数据。这个例子侧重于使用历史数据为参数建立先验分布,同时允许主观专家意见来控制模型偏好的先验分布。我们回顾了指定贝叶斯先验分布的主观性,但也回顾了标准先验分布生成和消除主观影响的既定方法,同时仍然利用贝叶斯分析的解释优势。我们将贝叶斯方法作为统计推断的替代范例进行讨论,并讨论其优缺点。