Alamia Andrea, Zénon Alexandre
Institute of Neuroscience, Université catholique de Louvain Bruxelles, Belgium.
Front Hum Neurosci. 2016 Feb 9;10:42. doi: 10.3389/fnhum.2016.00042. eCollection 2016.
Visual attention seems essential for learning the statistical regularities in our environment, a process known as statistical learning. However, how attention is allocated when exploring a novel visual scene whose statistical structure is unknown remains unclear. In order to address this question, we investigated visual attention allocation during a task in which we manipulated the conditional probability of occurrence of colored stimuli, unbeknown to the subjects. Participants were instructed to detect a target colored dot among two dots moving along separate circular paths. We evaluated implicit statistical learning, i.e., the effect of color predictability on reaction times (RTs), and recorded eye position concurrently. Attention allocation was indexed by comparing the Mahalanobis distance between the position, velocity and acceleration of the eyes and the two colored dots. We found that learning the conditional probabilities occurred very early during the course of the experiment as shown by the fact that, starting already from the first block, predictable stimuli were detected with shorter RT than unpredictable ones. In terms of attentional allocation, we found that the predictive stimulus attracted gaze only when it was informative about the occurrence of the target but not when it predicted the occurrence of a task-irrelevant stimulus. This suggests that attention allocation was influenced by regularities only when they were instrumental in performing the task. Moreover, we found that the attentional bias towards task-relevant predictive stimuli occurred at a very early stage of learning, concomitantly with the first effects of learning on RT. In conclusion, these results show that statistical regularities capture visual attention only after a few occurrences, provided these regularities are instrumental to perform the task.
视觉注意力似乎对于学习我们环境中的统计规律至关重要,这一过程被称为统计学习。然而,当探索一个其统计结构未知的新视觉场景时,注意力是如何分配的仍不清楚。为了解决这个问题,我们在一项任务中研究了视觉注意力分配,在该任务中我们操纵了彩色刺激出现的条件概率,而受试者对此并不知情。参与者被指示在沿着不同圆形路径移动的两个点中检测一个目标彩色点。我们评估了内隐统计学习,即颜色可预测性对反应时间(RTs)的影响,并同时记录了眼睛位置。通过比较眼睛与两个彩色点的位置、速度和加速度之间的马氏距离来确定注意力分配。我们发现,在实验过程中很早就出现了对条件概率的学习,这一事实表明,从第一个实验块开始,与不可预测的刺激相比,可预测的刺激被检测到的反应时间更短。在注意力分配方面,我们发现预测性刺激只有在它能提供有关目标出现的信息时才会吸引注视,而当它预测与任务无关的刺激出现时则不会。这表明只有当规律有助于执行任务时,注意力分配才会受到规律的影响。此外,我们发现对与任务相关的预测性刺激的注意力偏差在学习的非常早期阶段就出现了,这与学习对反应时间的最初影响同时发生。总之,这些结果表明,统计规律只有在出现几次之后才会捕获视觉注意力,前提是这些规律有助于执行任务。