Bond Krista M, Taylor Jordan A
Department of Psychology, Princeton University, Princeton, New Jersey; and.
Department of Psychology, Princeton University, Princeton, New Jersey; and Princeton Neuroscience Institute, Princeton University, Princeton, New Jersey
J Neurophysiol. 2015 Jun 1;113(10):3836-49. doi: 10.1152/jn.00009.2015. Epub 2015 Apr 8.
There is mounting evidence for the idea that performance in a visuomotor rotation task can be supported by both implicit and explicit forms of learning. The implicit component of learning has been well characterized in previous experiments and is thought to arise from the adaptation of an internal model driven by sensorimotor prediction errors. However, the role of explicit learning is less clear, and previous investigations aimed at characterizing the explicit component have relied on indirect measures such as dual-task manipulations, posttests, and descriptive computational models. To address this problem, we developed a new method for directly assaying explicit learning by having participants verbally report their intended aiming direction on each trial. While our previous research employing this method has demonstrated the possibility of measuring explicit learning over the course of training, it was only tested over a limited scope of manipulations common to visuomotor rotation tasks. In the present study, we sought to better characterize explicit and implicit learning over a wider range of task conditions. We tested how explicit and implicit learning change as a function of the specific visual landmarks used to probe explicit learning, the number of training targets, and the size of the rotation. We found that explicit learning was remarkably flexible, responding appropriately to task demands. In contrast, implicit learning was strikingly rigid, with each task condition producing a similar degree of implicit learning. These results suggest that explicit learning is a fundamental component of motor learning and has been overlooked or conflated in previous visuomotor tasks.
越来越多的证据支持这样一种观点,即在视觉运动旋转任务中的表现可以由内隐和外显两种学习形式来支持。学习的内隐成分在先前的实验中已得到很好的表征,并且被认为源于由感觉运动预测误差驱动的内部模型的适应。然而,外显学习的作用尚不清楚,先前旨在表征外显成分的研究依赖于诸如双任务操作、后测和描述性计算模型等间接测量方法。为了解决这个问题,我们开发了一种新方法,通过让参与者在每次试验中口头报告他们预期的瞄准方向来直接测定外显学习。虽然我们之前使用这种方法的研究已经证明了在训练过程中测量外显学习的可能性,但它只在视觉运动旋转任务常见的有限操作范围内进行了测试。在本研究中,我们试图在更广泛的任务条件下更好地表征外显和内隐学习。我们测试了外显和内隐学习如何随着用于探测外显学习的特定视觉地标、训练目标的数量以及旋转的大小而变化。我们发现外显学习非常灵活,能够对任务需求做出适当反应。相比之下,内隐学习则非常僵化,每种任务条件下产生的内隐学习程度相似。这些结果表明,外显学习是运动学习的一个基本组成部分,在先前的视觉运动任务中被忽视或混淆了。