Key Laboratory of Behavioral Science, Institute of Psychology, Chinese Academy of Sciences.
Department of Psychology, Chinese Academy of Sciences.
Psychol Sci. 2022 May;33(5):830-843. doi: 10.1177/09567976211056620. Epub 2022 Apr 28.
Practice makes perfect in almost all perceptual tasks, but how perceptual improvements accumulate remains unknown. Here, we developed a multicomponent theoretical framework to model contributions of both long- and short-term processes in perceptual learning. Applications of the framework to the block-by-block learning curves of 49 adult participants in seven perceptual tasks identified ubiquitous long-term general learning and within-session relearning in most tasks. More importantly, we also found between-session forgetting in the vernier-offset discrimination, face-view discrimination, and auditory-frequency discrimination tasks; between-session off-line gain in the visual shape search task; and within-session adaptation and both between-session forgetting and off-line gain in the contrast detection task. The main results of the vernier-offset discrimination and visual shape search tasks were replicated in a new experiment. The multicomponent model provides a theoretical framework to identify component processes in perceptual learning and a potential tool to optimize learning in normal and clinical populations.
在几乎所有的感知任务中,练习都能让技艺臻于完美,但感知能力的提升是如何积累的仍不得而知。在这里,我们开发了一个多成分理论框架,以对感知学习中长时和短时过程的贡献进行建模。该框架在七个感知任务中,对 49 名成年参与者的逐块学习曲线的应用,确定了在大多数任务中普遍存在的长期一般学习和会话内再学习。更重要的是,我们还发现了在游标偏移辨别、人脸视角辨别和听觉频率辨别任务中的会话间遗忘;在视觉形状搜索任务中的会话间离线增益;以及在对比度检测任务中的会话内适应、会话间遗忘和离线增益。游标偏移辨别和视觉形状搜索任务的主要结果在一个新的实验中得到了复制。该多成分模型为识别感知学习中的成分过程提供了一个理论框架,也为在正常和临床人群中优化学习提供了一种潜在的工具。