Department of Psychological and Brain Sciences, University of Massachusetts, 135 Hicks Way, Amherst, MA, 01003-9271, USA.
Psychon Bull Rev. 2018 Dec;25(6):2406-2416. doi: 10.3758/s13423-018-1456-3.
Heck and Erdfelder (2016) developed a model that extends discrete-state multinomial processing tree models to response time (RT) data. Their model is an important advance, but it does not have a mechanism to produce the speed-accuracy trade-off, the bedrock empirical observation that rushed decisions are less accurate. I present a similar model, the "discrete-race" model, with a simple mechanism for the speed-accuracy trade-off. In the model, information that supports detection of the stimulus type is available for some proportion of items and unavailable for others. Both the amount of time needed for detection to succeed and the amount of time that the decision maker waits before guessing are variable from trial to trial. Responses are based on detection when it is available and has a finishing time before the guess time for that trial. In other words, the decision maker sometimes loses opportunities to respond correctly on the basis of detection by first making a guess. These lost opportunities are more common when the guess-time distribution tends to have low wait times, which decreases accuracy. I report simulations showing that the model can accurately recover parameter values and is strongly constrained by the speed-accuracy trade-offs across conditions with different levels of response caution.
赫克和埃尔德费尔德(2016)开发了一种模型,将离散状态多项处理树模型扩展到反应时间(RT)数据。他们的模型是一个重要的进展,但它没有产生速度-准确性权衡的机制,而这是仓促决策准确性较低的基础经验观察。我提出了一个类似的模型,即“离散竞赛”模型,它具有一种简单的速度-准确性权衡机制。在该模型中,支持检测刺激类型的信息可用于部分项目,而对其他项目不可用。从试验到试验,检测成功所需的时间和决策者在猜测之前等待的时间都是可变的。响应基于可用的检测,如果在该试验的猜测时间之前完成检测,则进行响应。换句话说,决策者有时会因为首先猜测而失去基于检测正确响应的机会。当猜测时间分布倾向于具有较低等待时间时,这种机会损失更为常见,从而降低了准确性。我报告了模拟结果,表明该模型可以准确地恢复参数值,并且受到不同反应谨慎程度条件下速度-准确性权衡的强烈限制。