Department of Physiology, University of Bern, CH-3012 Bern, Switzerland.
Neural Comput. 2010 Jul;22(7):1698-717. doi: 10.1162/neco.2010.05-09-1010.
We investigate a recently proposed model for decision learning in a population of spiking neurons where synaptic plasticity is modulated by a population signal in addition to reward feedback. For the basic model, binary population decision making based on spike/no-spike coding, a detailed computational analysis is given about how learning performance depends on population size and task complexity. Next, we extend the basic model to n-ary decision making and show that it can also be used in conjunction with other population codes such as rate or even latency coding.
我们研究了最近提出的一种在神经元群体中进行决策学习的模型,其中除了奖励反馈外,突触可塑性还受到群体信号的调节。对于基于尖峰/非尖峰编码的基本模型,我们给出了关于学习性能如何取决于群体大小和任务复杂性的详细计算分析。接下来,我们将基本模型扩展到 n 元决策,并表明它也可以与其他群体代码(如速率甚至潜伏期编码)结合使用。