Neural activity is often described in terms of population-level factors extracted from the responses of many neurons. Factors provide a lower-dimensional description with the aim of shedding light on network computations. Yet, mechanistically, computations are performed not by continuously valued factors but by interactions among neurons that spike discretely and variably. Models provide a means of bridging these levels of description. We developed a general method for training model networks of spiking neurons by leveraging factors extracted from either data or firing-rate-based networks. In addition to providing a useful model-building framework, this formalism illustrates how reliable and continuously valued factors can arise from seemingly stochastic spiking. Our framework establishes procedures for embedding this property in network models with different levels of realism. The relationship between spikes and factors in such networks provides a foundation for interpreting (and subtly redefining) commonly used quantities such as firing rates.
The centrality of population-level factors to network computation is demonstrated by a versatile approach for training spiking networks.
通过一种训练脉冲神经网络的通用方法,证明了群体层面因素对网络计算的核心作用
阅读:5
作者:DePasquale Brian, Sussillo David, Abbott L F, Churchland Mark M
| 期刊: | Neuron | 影响因子: | 15.000 |
| 时间: | 2023 | 起止号: | 2023 Mar 1; 111(5):631-649 |
| doi: | 10.1016/j.neuron.2022.12.007 | 研究方向: | 神经科学 |
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