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How Each Movement Changes the Next: An Experimental and Theoretical Study of Fast Adaptive Priors in Reaching

机译:每个动作如何改变下一个动作:到达时快速自适应先验的实验和理论研究

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摘要

Most voluntary actions rely on neural circuits that map sensory cues onto appropriate motor responses. One might expect that for everyday movements, like reaching, this mapping would remain stable over time, at least in the absence of error feedback. Here we describe a simple and novel psychophysical phenomenon in which recent experience shapes the statistical properties of reaching, independent of any movement errors. Specifically, when recent movements are made to targets near a particular location subsequent movements to that location become less variable, but at the cost of increased bias for reaches to other targets. This process exhibits the variance–bias tradeoff that is a hallmark of Bayesian estimation. We provide evidence that this process reflects a fast, trial-by-trial learning of the prior distribution of targets. We also show that these results may reflect an emergent property of associative learning in neural circuits. We demonstrate that adding Hebbian (associative) learning to a model network for reach planning leads to a continuous modification of network connections that biases network dynamics toward activity patterns associated with recent inputs. This learning process quantitatively captures the key results of our experimental data in human subjects, including the effect that recent experience has on the variance-bias tradeoff. This network also provides a good approximation of a normative Bayesian estimator. These observations illustrate how associative learning can incorporate recent experience into ongoing computations in a statistically principled way.
机译:大多数自愿行动都依赖于将感觉线索映射到适当的运动反应的神经回路。可能有人希望,对于日常运动,例如到达,至少在没有错误反馈的情况下,这种映射会随着时间的推移保持稳定。在这里,我们描述了一种简单而新颖的心理物理学现象,其中,最近的经验影响了到达的统计属性,而与任何运动错误无关。具体而言,当对特定位置附近的目标进行最近的移动时,到该位置的后续移动变化较小,但代价是到达其他目标的偏差增加。这个过程表现出方差-偏差折衷,这是贝叶斯估计的标志。我们提供的证据表明,此过程反映了对目标的先前分布的快速,逐次试验学习。我们还表明,这些结果可能反映了神经回路中联想学习的新兴特性。我们证明,将Hebbian(关联)学习添加到模型网络以进行覆盖面规划会导致网络连接的不断修改,从而使网络动态偏向与最新输入相关的活动模式。这种学习过程定量地捕获了我们在人类受试者中实验数据的关键结果,包括最近的经验对方差-偏见权衡的影响。该网络还提供了标准贝叶斯估计量的良好近似。这些观察结果说明了联想学习如何以统计学上有原则的方式将最新的经验整合到正在进行的计算中。

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