预测编码
解码方法
神经科学
计算机科学
编码(社会科学)
神经编码
系统神经科学
计算模型
人工智能
编码(内存)
机器学习
运动前神经元活动
多种型号
心理学
计算神经科学
神经元放电
均方预测误差
神经集成
神经网络
作者
Aditya Srinivasan,Aditya Behal,Kevin G. Guise,Matthew L. Shapiro
出处
期刊:Hippocampus
[Wiley]
日期:2026-04-13
卷期号:36 (3): e70093-e70093
摘要
Finding elements of a complex network which contribute most to the network's overall behavior is an open problem in various fields. This challenge is particularly difficult in neuroscience as it requires identifying which of a mammalian brain's many millions of neurons inform specific behavioral choices. Using methods inspired by compressed sensing, we identified subsets of CA1 neuronal ensembles recorded while only male rats performed spatial memory and cue-approach tasks in a plus maze. These subsets consisted of the units with firing rates which co-varied most closely with overall ensemble activity. Unit activity from these predictive subsets asymmetrically predicted the activity of other units in the ensemble. Excluding the predictive subset had no effect on ensemble decoding of the rat's current location but reduced decoding of past and future locations, suggesting that the predictive subset encodes nonlocal information. Predictive subsets likely represent a hierarchical and sparse coding scheme used by CA1, and further investigation of the properties of these sub-populations may lead to additional insights into the basic computational processes of the brain.
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