Mortimer B. Zuckerman Mind Brain Behavior Institute, Columbia University, New York, NY, United States.
Department of Neuroscience, Columbia University, New York, NY, United States.
Elife. 2021 Nov 19;10:e71627. doi: 10.7554/eLife.71627.
The ability to predict the dynamics of objects, linking applied force to motion, underlies our capacity to perform many of the tasks we carry out on a daily basis. Thus, a fundamental question is how the dynamics of the myriad objects we interact with are organized in memory. Using a custom-built three-dimensional robotic interface that allowed us to simulate objects of varying appearance and weight, we examined how participants learned the weights of sets of objects that they repeatedly lifted. We find strong support for the novel hypothesis that motor memories of object dynamics are organized categorically, in terms of families, based on covariation in their visual and mechanical properties. A striking prediction of this hypothesis, supported by our findings and not predicted by standard associative map models, is that outlier objects with weights that deviate from the family-predicted weight will never be learned despite causing repeated lifting errors.
预测物体动态的能力,即将作用力与运动联系起来,是我们完成日常生活中许多任务的基础。因此,一个基本问题是,我们与之交互的无数物体的动态是如何在记忆中组织起来的。我们使用定制的三维机器人界面,模拟不同外观和重量的物体,研究参与者如何学习他们反复举起的一组物体的重量。我们强烈支持一个新颖的假设,即物体动态的运动记忆是基于视觉和机械特性的共变,按照家族来进行分类组织的。这一假设的一个惊人预测是,尽管会导致反复的举升错误,但偏离家族预测重量的异常物体的重量永远不会被学习。这一预测得到了我们发现的支持,而不是标准的联想映射模型所预测的。