Koen Joshua D, Barrett Frederick S, Harlow Iain M, Yonelinas Andrew P
Center for Vital Longevity, University of Texas at Dallas, Dallas, TX, USA.
Department of Psychiatry and Behavioral Sciences, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Behav Res Methods. 2017 Aug;49(4):1399-1406. doi: 10.3758/s13428-016-0796-z.
Signal-detection theory, and the analysis of receiver-operating characteristics (ROCs), has played a critical role in the development of theories of episodic memory and perception. The purpose of the current paper is to present the ROC Toolbox. This toolbox is a set of functions written in the Matlab programming language that can be used to fit various common signal detection models to ROC data obtained from confidence rating experiments. The goals for developing the ROC Toolbox were to create a tool (1) that is easy to use and easy for researchers to implement with their own data, (2) that can flexibly define models based on varying study parameters, such as the number of response options (e.g., confidence ratings) and experimental conditions, and (3) that provides optimal routines (e.g., Maximum Likelihood estimation) to obtain parameter estimates and numerous goodness-of-fit measures.The ROC toolbox allows for various different confidence scales and currently includes the models commonly used in recognition memory and perception: (1) the unequal variance signal detection (UVSD) model, (2) the dual process signal detection (DPSD) model, and (3) the mixture signal detection (MSD) model. For each model fit to a given data set the ROC toolbox plots summary information about the best fitting model parameters and various goodness-of-fit measures. Here, we present an overview of the ROC Toolbox, illustrate how it can be used to input and analyse real data, and finish with a brief discussion on features that can be added to the toolbox.
信号检测理论以及对接收者操作特征(ROC)的分析,在情景记忆和知觉理论的发展中发挥了关键作用。本文的目的是介绍ROC工具箱。这个工具箱是一组用Matlab编程语言编写的函数,可用于将各种常见的信号检测模型拟合到从信心评级实验中获得的ROC数据。开发ROC工具箱的目标是创建一个工具:(1)易于使用且研究人员能够轻松地用自己的数据来实施;(2)能够根据不同的研究参数灵活地定义模型,比如反应选项的数量(例如信心评级)和实验条件;(3)能够提供最优的程序(例如最大似然估计)来获得参数估计值以及众多的拟合优度指标。ROC工具箱允许使用各种不同的信心量表,目前包括识别记忆和知觉中常用的模型:(1)不等方差信号检测(UVSD)模型;(2)双过程信号检测(DPSD)模型;(3)混合信号检测(MSD)模型。对于拟合到给定数据集的每个模型,ROC工具箱会绘制关于最佳拟合模型参数和各种拟合优度指标的汇总信息。在这里,我们将概述ROC工具箱,说明如何使用它来输入和分析实际数据,并最后简要讨论可以添加到该工具箱中的功能。