Department of Psychology, University of Maryland, College Park, MD 20742, USA.
Psychol Rev. 2012 Apr;119(2):321-44. doi: 10.1037/a0027039. Epub 2012 Feb 13.
The authors propose a general modeling framework called the general monotone model (GeMM), which allows one to model psychological phenomena that manifest as nonlinear relations in behavior data without the need for making (overly) precise assumptions about functional form. Using both simulated and real data, the authors illustrate that GeMM performs as well as or better than standard statistical approaches (including ordinary least squares, robust, and Bayesian regression) in terms of power and predictive accuracy when the functional relations are strictly linear but outperforms these approaches under conditions in which the functional relations are monotone but nonlinear. Finally, the authors recast their framework within the context of contemporary models of behavioral decision making, including the lens model and the take-the-best heuristic, and use GeMM to highlight several important issues within the judgment and decision-making literature.
作者提出了一个通用的建模框架,称为通用单调模型(GeMM),它允许人们对表现为行为数据中非线性关系的心理现象进行建模,而无需对函数形式做出(过于)精确的假设。作者使用模拟和真实数据来说明,当功能关系严格线性时,GeMM 在功效和预测准确性方面与标准统计方法(包括普通最小二乘法、稳健和贝叶斯回归)一样好或更好,但在功能关系单调但非线性的情况下,GeMM 的表现优于这些方法。最后,作者在行为决策的当代模型背景下重新构建了他们的框架,包括镜头模型和择优启发式,并使用 GeMM 突出了判断和决策文献中的几个重要问题。