Franck Christopher T, Koffarnus Mikhail N, House Leanna L, Bickel Warren K
Department of Statistics, Virginia Tech; Addiction Recovery Research Center, Virginia Tech Carilion Research Institute.
J Exp Anal Behav. 2015 Jan;103(1):218-33. doi: 10.1002/jeab.128. Epub 2014 Dec 30.
The study of delay discounting, or valuation of future rewards as a function of delay, has contributed to understanding the behavioral economics of addiction. Accurate characterization of discounting can be furthered by statistical model selection given that many functions have been proposed to measure future valuation of rewards. The present study provides a convenient Bayesian model selection algorithm that selects the most probable discounting model among a set of candidate models chosen by the researcher. The approach assigns the most probable model for each individual subject. Importantly, effective delay 50 (ED50) functions as a suitable unifying measure that is computable for and comparable between a number of popular functions, including both one- and two-parameter models. The combined model selection/ED50 approach is illustrated using empirical discounting data collected from a sample of 111 undergraduate students with models proposed by Laibson (1997); Mazur (1987); Myerson & Green (1995); Rachlin (2006); and Samuelson (1937). Computer simulation suggests that the proposed Bayesian model selection approach outperforms the single model approach when data truly arise from multiple models. When a single model underlies all participant data, the simulation suggests that the proposed approach fares no worse than the single model approach.
延迟折扣研究,即将未来奖励的价值视为延迟的函数,有助于理解成瘾行为经济学。鉴于已经提出了许多函数来衡量奖励的未来价值,通过统计模型选择可以进一步准确描述折扣情况。本研究提供了一种便捷的贝叶斯模型选择算法,该算法可在研究人员选择的一组候选模型中选择最可能的折扣模型。该方法为每个个体受试者分配最可能的模型。重要的是,有效延迟50(ED50)作为一种合适的统一度量,对于许多流行函数(包括单参数和双参数模型)来说是可计算且可比的。使用从111名本科生样本中收集的经验性折扣数据,结合莱布森(1997年)、马祖尔(1987年)、迈尔森和格林(1995年)、拉赫林(2006年)以及萨缪尔森(1937年)提出的数据,对模型选择/ED50组合方法进行了说明。计算机模拟表明,当数据真正来自多个模型时,所提出的贝叶斯模型选择方法优于单一模型方法。当所有参与者数据都基于单一模型时,模拟表明所提出的方法表现不逊色于单一模型方法。