Cognitive Science Center Amsterdam, University of Amsterdam, Amsterdam, The Netherlands.
Cogn Sci. 2012 Jan-Feb;36(1):62-101. doi: 10.1111/j.1551-6709.2011.01213.x. Epub 2011 Dec 5.
This article discusses how sequential sampling models can be integrated in a cognitive architecture. The new theory Retrieval by Accumulating Evidence in an Architecture (RACE/A) combines the level of detail typically provided by sequential sampling models with the level of task complexity typically provided by cognitive architectures. We will use RACE/A to model data from two variants of a picture-word interference task in a psychological refractory period design. These models will demonstrate how RACE/A enables interactions between sequential sampling and long-term declarative learning, and between sequential sampling and task control. In a traditional sequential sampling model, the onset of the process within the task is unclear, as is the number of sampling processes. RACE/A provides a theoretical basis for estimating the onset of sequential sampling processes during task execution and allows for easy modeling of multiple sequential sampling processes within a task.
本文讨论了如何将序列采样模型集成到认知架构中。新的理论“在架构中积累证据的检索”(RACE/A)将序列采样模型通常提供的详细程度与认知架构通常提供的任务复杂性水平相结合。我们将使用 RACE/A 来模拟心理不应期设计中两种图片-单词干扰任务变体的数据。这些模型将展示 RACE/A 如何实现序列采样与长期陈述性学习之间、以及序列采样与任务控制之间的交互。在传统的序列采样模型中,任务内过程的开始时间和采样过程的数量都不明确。RACE/A 为在任务执行过程中估计序列采样过程的开始时间提供了理论基础,并允许轻松地在任务中建模多个序列采样过程。