Psychology Department, New York University, New York, New York, United States of America.
Center for Neural Science, New York University, New York, New York, United States of America.
PLoS Comput Biol. 2019 Jul 8;15(7):e1006681. doi: 10.1371/journal.pcbi.1006681. eCollection 2019 Jul.
Optimal sensory decision-making requires the combination of uncertain sensory signals with prior expectations. The effect of prior probability is often described as a shift in the decision criterion. Can observers track sudden changes in probability? To answer this question, we used a change-point detection paradigm that is frequently used to examine behavior in changing environments. In a pair of orientation-categorization tasks, we investigated the effects of changing probabilities on decision-making. In both tasks, category probability was updated using a sample-and-hold procedure: probability was held constant for a period of time before jumping to another probability state that was randomly selected from a predetermined set of probability states. We developed an ideal Bayesian change-point detection model in which the observer marginalizes over both the current run length (i.e., time since last change) and the current category probability. We compared this model to various alternative models that correspond to different strategies-from approximately Bayesian to simple heuristics-that the observers may have adopted to update their beliefs about probabilities. While a number of models provided decent fits to the data, model comparison favored a model in which probability is estimated following an exponential averaging model with a bias towards equal priors, consistent with a conservative bias, and a flexible variant of the Bayesian change-point detection model with incorrect beliefs. We interpret the former as a simpler, more biologically plausible explanation suggesting that the mechanism underlying change of decision criterion is a combination of on-line estimation of prior probability and a stable, long-term equal-probability prior, thus operating at two very different timescales.
最优的感觉决策需要将不确定的感觉信号与先验期望结合起来。先验概率的影响通常被描述为决策标准的转移。观察者能否跟踪概率的突然变化?为了回答这个问题,我们使用了一种变化点检测范式,该范式常用于研究变化环境中的行为。在一对定向分类任务中,我们研究了概率变化对决策的影响。在这两个任务中,类别概率是通过抽样保持程序更新的:在跳到另一个概率状态之前,概率会保持恒定一段时间,该概率状态是从预定的概率状态集中随机选择的。我们开发了一个理想的贝叶斯变化点检测模型,其中观察者对当前运行长度(即自上次变化以来的时间)和当前类别概率进行边缘化。我们将该模型与各种替代模型进行了比较,这些模型对应于观察者可能采用的不同策略,从近似贝叶斯到简单启发式策略,以更新他们对概率的信念。虽然许多模型对数据提供了不错的拟合,但模型比较更倾向于一种模型,该模型在对概率进行估计时采用了具有先验均等偏差的指数平均模型,与保守偏差一致,以及贝叶斯变化点检测模型的灵活变体,其中存在错误的信念。我们将前者解释为一种更简单、更符合生物学的解释,表明决策标准变化的机制是先验概率的在线估计与稳定的、长期的均等概率先验的组合,因此在两个非常不同的时间尺度上运作。