Mayzel Jonathan, Schneidman Elad
Department of Brain Sciences, Weizmann Institute of Science, Rehovot, Israel.
Elife. 2024 Dec 16;13:RP96566. doi: 10.7554/eLife.96566.
Studying and understanding the code of large neural populations hinge on accurate statistical models of population activity. A novel class of models, based on learning to weigh sparse nonlinear Random Projections (RP) of the population, has demonstrated high accuracy, efficiency, and scalability. Importantly, these RP models have a clear and biologically plausible implementation as shallow neural networks. We present a new class of RP models that are learned by optimizing the randomly selected sparse projections themselves. This 'reshaping' of projections is akin to changing synaptic connections in just one layer of the corresponding neural circuit model. We show that Reshaped RP models are more accurate and efficient than the standard RP models in recapitulating the code of tens of cortical neurons from behaving monkeys. Incorporating more biological features and utilizing synaptic normalization in the learning process, results in accurate models that are more efficient. Remarkably, these models exhibit homeostasis in firing rates and total synaptic weights of projection neurons. We further show that these sparse homeostatic reshaped RP models outperform fully connected neural network models. Thus, our new scalable, efficient, and highly accurate population code models are not only biologically plausible but are actually optimized due to their biological features. These findings suggest a dual functional role of synaptic normalization in neural circuits: maintaining spiking and synaptic homeostasis while concurrently optimizing network performance and efficiency in encoding information and learning.
研究和理解大型神经群体的编码依赖于群体活动的精确统计模型。一类基于学习权衡群体稀疏非线性随机投影(RP)的新型模型已展现出高精度、高效率和可扩展性。重要的是,这些RP模型作为浅层神经网络具有清晰且符合生物学原理的实现方式。我们提出了一类新的RP模型,它们通过优化随机选择的稀疏投影本身来进行学习。这种投影的“重塑”类似于在相应神经回路模型的仅一层中改变突触连接。我们表明,在概括行为猴子的数十个皮层神经元的编码方面,重塑RP模型比标准RP模型更准确、更高效。在学习过程中纳入更多生物学特征并利用突触归一化,可得到更高效的准确模型。值得注意的是,这些模型在投射神经元的放电率和总突触权重方面表现出稳态。我们进一步表明,这些稀疏稳态重塑RP模型优于全连接神经网络模型。因此,我们新的可扩展、高效且高精度的群体编码模型不仅在生物学上合理,而且实际上因其生物学特征而得到了优化。这些发现表明突触归一化在神经回路中具有双重功能作用:维持放电和突触稳态,同时在编码信息和学习过程中优化网络性能和效率。