Department of Electrical and Computer Engineering, Rice University, Houston, TX, USA.
Changzhou University, Aliyun School of Big Data, Changzhou, China.
Nat Commun. 2021 Nov 16;12(1):6557. doi: 10.1038/s41467-021-26793-9.
Sensory data about most natural task-relevant variables are entangled with task-irrelevant nuisance variables. The neurons that encode these relevant signals typically constitute a nonlinear population code. Here we present a theoretical framework for quantifying how the brain uses or decodes its nonlinear information. Our theory obeys fundamental mathematical limitations on information content inherited from the sensory periphery, describing redundant codes when there are many more cortical neurons than primary sensory neurons. The theory predicts that if the brain uses its nonlinear population codes optimally, then more informative patterns should be more correlated with choices. More specifically, the theory predicts a simple, easily computed quantitative relationship between fluctuating neural activity and behavioral choices that reveals the decoding efficiency. This relationship holds for optimal feedforward networks of modest complexity, when experiments are performed under natural nuisance variation. We analyze recordings from primary visual cortex of monkeys discriminating the distribution from which oriented stimuli were drawn, and find these data are consistent with the hypothesis of near-optimal nonlinear decoding.
关于大多数与自然任务相关的变量的感觉数据与与任务不相关的干扰变量纠缠在一起。编码这些相关信号的神经元通常构成非线性群体代码。在这里,我们提出了一个理论框架,用于量化大脑如何使用或解码其非线性信息。我们的理论遵守了从感觉外围继承的信息内容的基本数学限制,当皮质神经元的数量远远超过初级感觉神经元时,描述了冗余代码。该理论预测,如果大脑最优地使用其非线性群体代码,那么更具信息量的模式应该与选择更相关。更具体地说,该理论预测了一种简单、易于计算的定量关系,该关系将波动的神经活动与行为选择联系起来,从而揭示了解码效率。当在自然干扰变化下进行实验时,该关系适用于适度复杂的最优前馈网络。我们分析了猴子初级视觉皮层的记录,这些猴子可以区分定向刺激的分布,并且发现这些数据与近乎最优的非线性解码假设一致。