Department of Experimental Psychology, University of Oxford, Oxford OX1 3UD, UK.
Department Études Cognitives, Ecole Normale Superieure, 75230 Paris, France.
Neuron. 2014 Mar 19;81(6):1429-1441. doi: 10.1016/j.neuron.2014.01.020.
Neural systems adapt to background levels of stimulation. Adaptive gain control has been extensively studied in sensory systems but overlooked in decision-theoretic models. Here, we describe evidence for adaptive gain control during the serial integration of decision-relevant information. Human observers judged the average information provided by a rapid stream of visual events (samples). The impact that each sample wielded over choices depended on its consistency with the previous sample, with more consistent or expected samples wielding the greatest influence over choice. This bias was also visible in the encoding of decision information in pupillometric signals and in cortical responses measured with functional neuroimaging. These data can be accounted for with a serial sampling model in which the gain of information processing adapts rapidly to reflect the average of the available evidence.
神经系统会适应刺激的背景水平。自适应增益控制在感觉系统中得到了广泛的研究,但在决策理论模型中却被忽视了。在这里,我们描述了在决策相关信息的连续整合过程中自适应增益控制的证据。人类观察者判断快速视觉事件流(样本)提供的平均信息量。每个样本对选择的影响取决于它与前一个样本的一致性,一致性更高或更可预期的样本对选择的影响更大。这种偏差在瞳孔测量信号和功能神经影像学测量的皮质反应中对决策信息的编码中也可见。这些数据可以用一个序列采样模型来解释,该模型中信息处理的增益会迅速适应,以反映可用证据的平均值。