Gluck Mark A, Shohamy Daphna, Myers Catherine
Center for Molecular and Behavioral Neuroscience, Rutgers University, Newark, New Jersey 07102, USA.
Learn Mem. 2002 Nov-Dec;9(6):408-18. doi: 10.1101/lm.45202.
Probabilistic category learning is often assumed to be an incrementally learned cognitive skill, dependent on nondeclarative memory systems. One paradigm in particular, the weather prediction task, has been used in over half a dozen neuropsychological and neuroimaging studies to date. Because of the growing interest in using this task and others like it as behavioral tools for studying the cognitive neuroscience of cognitive skill learning, it becomes especially important to understand how subjects solve this kind of task and whether all subjects learn it in the same way. We present here new experimental and theoretical analyses of the weather prediction task that indicate that there are at least three different strategies that describe how subjects learn this task. (1) An optimal multi-cue strategy, in which they respond to each pattern on the basis of associations of all four cues with each outcome; (2) a one-cue strategy, in which they respond on the basis of presence or absence of a single cue, disregarding all other cues; or (3) a singleton strategy, in which they learn only about the four patterns that have only one cue present and all others absent. This variability in how subjects approach this task may have important implications for interpreting how different brain regions are involved in probabilistic category learning.
概率性类别学习通常被认为是一种通过逐步学习获得的认知技能,依赖于非陈述性记忆系统。到目前为止,一种特别的范式,即天气预报任务,已经在超过六项神经心理学和神经影像学研究中被使用。由于越来越多的人对使用这个任务以及类似的任务作为研究认知技能学习的认知神经科学的行为工具感兴趣,了解受试者如何解决这类任务以及所有受试者是否以相同的方式学习它变得尤为重要。我们在此展示了对天气预报任务的新实验和理论分析,结果表明至少有三种不同的策略可以描述受试者学习该任务的方式。(1)一种最优多线索策略,即他们根据所有四个线索与每个结果的关联对每个模式做出反应;(2)一种单线索策略,即他们根据单个线索的有无做出反应,而忽略所有其他线索;或者(3)一种单例策略,即他们只学习仅存在一个线索而其他线索都不存在的四种模式。受试者处理这个任务方式的这种变异性可能对解释不同脑区如何参与概率性类别学习具有重要意义。