Notaro Giuseppe, van Zoest Wieske, Altman Magda, Melcher David, Hasson Uri
Center for Mind/Brain Sciences (CIMeC), The University of Trento, Trento, Italy.
Center for Practical Wisdom, The University of Chicago, Chicago, USA.
J Vis. 2019 Feb 1;19(2):8. doi: 10.1167/19.2.8.
A core question underlying neurobiological and computational models of behavior is how individuals learn environmental statistics and use them to make predictions. Most investigations of this issue have relied on reactive paradigms, in which inferences about predictive processes are derived by modeling responses to stimuli that vary in likelihood. Here we deployed a novel anticipatory oculomotor metric to determine how input statistics impact anticipatory behavior that is decoupled from target-driven-response. We implemented transition constraints between target locations, so that the probability of a target being presented on the same side as the previous trial was 70% in one condition (pret70) and 30% in the other (pret30). Rather than focus on responses to targets, we studied subtle endogenous anticipatory fixation offsets (AFOs) measured while participants fixated the screen center, awaiting a target. These AFOs were small (<0.4° from center on average), but strongly tracked global-level statistics. Speaking to learning dynamics, trial-by-trial fluctuations in AFO were well-described by a learning model, which identified a lower learning rate in pret70 than pret30, corroborating prior suggestions that pret70 is subjectively treated as more regular. Most importantly, direct comparisons with saccade latencies revealed that AFOs: (a) reflected similar temporal integration windows, (b) carried more information about the statistical context than did saccade latencies, and (c) accounted for most of the information that saccade latencies also contained about inputs statistics. Our work demonstrates how strictly predictive processes reflect learning dynamics, and presents a new direction for studying learning and prediction.
行为的神经生物学和计算模型所基于的一个核心问题是,个体如何学习环境统计信息并利用它们进行预测。对这个问题的大多数研究都依赖于反应性范式,即在这种范式中,关于预测过程的推断是通过对不同可能性刺激的反应进行建模得出的。在这里,我们采用了一种新颖的预期性眼动指标,以确定输入统计信息如何影响与目标驱动反应脱钩的预期行为。我们在目标位置之间实施了转换约束,使得在一种条件下(pret70)目标出现在与前一次试验相同一侧的概率为70%,而在另一种条件下(pret30)为30%。我们没有关注对目标的反应,而是研究了参与者注视屏幕中心等待目标时测量到的微妙的内源性预期注视偏移(AFOs)。这些AFOs很小(平均偏离中心<0.4°),但能很好地跟踪全局水平的统计信息。关于学习动态,一个学习模型很好地描述了AFOs在逐次试验中的波动情况,该模型确定pret70条件下的学习率低于pret30条件,这证实了之前的观点,即pret70在主观上被认为更具规律性。最重要的是,与扫视潜伏期的直接比较表明,AFOs:(a)反映了相似的时间整合窗口,(b)比扫视潜伏期携带了更多关于统计背景的信息,并且(c)涵盖了扫视潜伏期也包含的关于输入统计信息的大部分内容。我们的工作展示了严格的预测过程如何反映学习动态,并为研究学习和预测提出了一个新方向。