Department of Cognitive Sciences, University of California, Irvine Irvine, CA, USA.
Department of Cognitive Sciences, University of California, Irvine Irvine, CA, USA ; Department of Biomedical Engineering, University of California, Irvine Irvine, CA, USA.
Front Psychol. 2015 Feb 5;8:18. doi: 10.3389/fpsyg.2015.00018. eCollection 2015.
Sequential sampling decision-making models have been successful in accounting for reaction time (RT) and accuracy data in two-alternative forced choice tasks. These models have been used to describe the behavior of populations of participants, and explanatory structures have been proposed to account for between individual variability in model parameters. In this study we show that individual differences in behavior from a novel perceptual decision making task can be attributed to (1) differences in evidence accumulation rates, (2) differences in variability of evidence accumulation within trials, and (3) differences in non-decision times across individuals. Using electroencephalography (EEG), we demonstrate that these differences in cognitive variables, in turn, can be explained by attentional differences as measured by phase-locking of steady-state visual evoked potential (SSVEP) responses to the signal and noise components of the visual stimulus. Parameters of a cognitive model (a diffusion model) were obtained from accuracy and RT distributions and related to phase-locking indices (PLIs) of SSVEPs with a single step in a hierarchical Bayesian framework. Participants who were able to suppress the SSVEP response to visual noise in high frequency bands were able to accumulate correct evidence faster and had shorter non-decision times (preprocessing or motor response times), leading to more accurate responses and faster response times. We show that the combination of cognitive modeling and neural data in a hierarchical Bayesian framework relates physiological processes to the cognitive processes of participants, and that a model with a new (out-of-sample) participant's neural data can predict that participant's behavior more accurately than models without physiological data.
序贯抽样决策模型已成功解释了二择一强制选择任务中的反应时间(RT)和准确性数据。这些模型已被用于描述参与者群体的行为,并且已经提出了解释结构来解释模型参数的个体间变异性。在这项研究中,我们表明,一种新的知觉决策任务中的个体行为差异可以归因于(1)证据积累率的差异,(2)试验内证据积累的可变性差异,以及(3)个体间非决策时间的差异。使用脑电图(EEG),我们证明这些认知变量的差异反过来可以用信号和噪声成分的稳态视觉诱发电位(SSVEP)响应的相位锁定来解释个体的注意差异。认知模型(扩散模型)的参数是从准确性和 RT 分布中获得的,并与 SSVEP 的相位锁定指数(PLIs)相关,该过程是在分层贝叶斯框架中进行的。能够抑制高频带视觉噪声的 SSVEP 响应的参与者能够更快地积累正确的证据,并且具有较短的非决策时间(预处理或运动反应时间),从而导致更准确的响应和更快的响应时间。我们表明,在分层贝叶斯框架中结合认知建模和神经数据可以将生理过程与参与者的认知过程联系起来,并且具有新(样本外)参与者神经数据的模型可以比没有生理数据的模型更准确地预测该参与者的行为。