Department of Psychology, The University of Chicago, 5848 S University Ave, Chicago, IL, 60637, USA.
Neuroscience Institute, The University of Chicago, 5812 South Ellis Ave, Chicago, IL, 60637, USA.
Atten Percept Psychophys. 2024 May;86(4):1086-1107. doi: 10.3758/s13414-023-02805-2. Epub 2023 Nov 20.
Attention fluctuates between optimal and suboptimal states. However, whether these fluctuations affect how we learn visual regularities remains untested. Using web-based real-time triggering, we investigated the impact of sustained attentional state on statistical learning using online and offline measures of learning. In three experiments (N = 450), participants performed a continuous performance task (CPT) with shape stimuli. Unbeknownst to participants, we measured response times (RTs) preceding each trial in real time and inserted distinct shape triplets in the trial stream when RTs indicated that a participant was attentive or inattentive. We measured online statistical learning using changes in RTs to regular triplets relative to random triplets encountered in the same attentional states. We measured offline statistical learning with a target detection task in which participants responded to target shapes selected from the regular triplets and with tasks in which participants explicitly re-created the regular triplets or selected regular shapes from foils. Online learning evidence was greater in high vs. low attentional states when combining data from all three experiments, although this was not evident in any experiment alone. On the other hand, we saw no evidence of impacts of attention fluctuations on measures of statistical learning collected offline, after initial exposure in the CPT. These results suggest that attention fluctuations may impact statistical learning while regularities are being extracted online, but that these effects do not persist to subsequent tests of learning about regularities.
注意力在最佳和次优状态之间波动。然而,这些波动是否会影响我们学习视觉规律尚待检验。我们使用基于网络的实时触发,通过在线和离线学习测量,研究了持续注意状态对统计学习的影响。在三个实验中(N=450),参与者使用形状刺激执行连续绩效任务(CPT)。在参与者不知情的情况下,我们实时测量了每个试验前的反应时间(RT),并在 RT 表明参与者注意力集中或不集中时,在试验流中插入不同的形状三连体。我们使用相对于在相同注意状态下遇到的随机三连体的规则三连体的 RT 变化来衡量在线统计学习。我们使用目标检测任务来衡量离线统计学习,参与者对从规则三连体中选择的目标形状做出反应,以及参与者从规则三连体中选择规则形状或从干扰项中选择规则形状的任务。将三个实验的数据结合起来,在高注意状态和低注意状态下的在线学习证据都更大,尽管在任何一个实验中都不明显。另一方面,在 CPT 中进行初步接触后,我们没有看到注意力波动对离线统计学习测量的影响。这些结果表明,注意力波动可能会影响在线提取规律时的统计学习,但这些影响不会持续到对规律的后续学习测试中。