Canadian Institutes of Health Research Group in Sensory-Motor Integration, Department of Physiology, Queen's University Kingston, ON, Canada.
Front Comput Neurosci. 2011 Feb 11;5:7. doi: 10.3389/fncom.2011.00007. eCollection 2011.
The speed-accuracy trade-off (SAT) is ubiquitous in decision tasks. While the neural mechanisms underlying decisions are generally well characterized, the application of decision-theoretic methods to the SAT has been difficult to reconcile with experimental data suggesting that decision thresholds are inflexible. Using a network model of a cortical decision circuit, we demonstrate the SAT in a manner consistent with neural and behavioral data and with mathematical models that optimize speed and accuracy with respect to one another. In simulations of a reaction time task, we modulate the gain of the network with a signal encoding the urgency to respond. As the urgency signal builds up, the network progresses through a series of processing stages supporting noise filtering, integration of evidence, amplification of integrated evidence, and choice selection. Analysis of the network's dynamics formally characterizes this progression. Slower buildup of urgency increases accuracy by slowing down the progression. Faster buildup has the opposite effect. Because the network always progresses through the same stages, decision-selective firing rates are stereotyped at decision time.
速度-准确性权衡(SAT)在决策任务中普遍存在。尽管决策的神经机制通常得到很好的描述,但决策理论方法在 SAT 中的应用一直难以与实验数据相协调,这些数据表明决策阈值是不灵活的。我们使用皮质决策回路的网络模型,以与神经和行为数据以及彼此优化速度和准确性的数学模型一致的方式展示 SAT。在反应时间任务的模拟中,我们使用编码响应紧迫性的信号来调制网络的增益。随着紧迫性信号的积累,网络通过一系列支持噪声滤波、证据整合、整合证据放大和选择选择的处理阶段进展。对网络动态的分析正式描述了这一进展。紧迫性的缓慢积累通过减缓进展来提高准确性。更快的积累则有相反的效果。由于网络总是通过相同的阶段进展,因此决策选择性的发射率在决策时是刻板的。