School of Psychology, University of Birmingham, Birmingham, UK.
Neural Comput. 2010 May;22(5):1113-48. doi: 10.1162/neco.2009.05-09-1025.
Experimental data indicate that perceptual decision making involves integration of sensory evidence in certain cortical areas. Theoretical studies have proposed that the computation in neural decision circuits approximates statistically optimal decision procedures (e.g., sequential probability ratio test) that maximize the reward rate in sequential choice tasks. However, these previous studies assumed that the sensory evidence was represented by continuous values from gaussian distributions with the same variance across alternatives. In this article, we make a more realistic assumption that sensory evidence is represented in spike trains described by the Poisson processes, which naturally satisfy the mean-variance relationship observed in sensory neurons. We show that for such a representation, the neural circuits involving cortical integrators and basal ganglia can approximate the optimal decision procedures for two and multiple alternative choice tasks.
实验数据表明,感知决策涉及某些皮层区域中感觉证据的整合。理论研究提出,神经决策回路中的计算近似于统计最优决策程序(例如,序列概率比检验),这些程序在序列选择任务中使奖励率最大化。然而,这些先前的研究假设感觉证据由具有相同方差的高斯分布的连续值表示,这些值在备选方案之间是连续的。在本文中,我们做出了一个更现实的假设,即感觉证据由泊松过程描述的尖峰序列表示,而泊松过程自然满足感觉神经元中观察到的均值-方差关系。我们表明,对于这样的表示,涉及皮层积分器和基底神经节的神经回路可以近似于两个和多个备选任务的最优决策程序。