维数之咒
计算
动力学(音乐)
计算机科学
神经计算模型
人工智能
分类
机制(生物学)
人口
人工神经网络
理论计算机科学
算法
物理
量子力学
社会学
人口学
声学
作者
Alexis Dubreuil,Adrian Valente,Manuel Beirán,Francesca Mastrogiuseppe,Srdjan Ostojic
标识
DOI:10.1101/2020.07.03.185942
摘要
Abstract Neural computations are currently investigated using two separate approaches: sorting neurons into functional populations, or examining the low-dimensional dynamics of collective activity. Whether and how these two aspects interact to shape computations is currently unclear. Using a novel approach to extract computational mechanisms from networks trained on neuroscience tasks, here we show that the dimensionality of the dynamics and cell-class structure play fundamentally complementary roles. While various tasks can be implemented by increasing the dimensionality in networks with fully random population structure, flexible input-output mappings instead required a non-random population structure that can be described in terms of multiple sub-populations. Our analyses revealed that such a population structure enabled flexible computations through a mechanism based on gain-controlled modulations that flexibly shape the dynamical landscape of collective dynamics. Our results lead to task-specific predictions for the structure of neural selectivity, inactivation experiments, and for the implication of different neurons in multi-tasking.
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