Sundararajan Raanju R, Palma Marco A, Pourahmadi Mohsen
Department of Statistics, Texas A&M University, College Station, TX, United States.
Department of Agricultural Economics, Texas A&M University, College Station, TX, United States.
Front Neurosci. 2017 Dec 14;11:704. doi: 10.3389/fnins.2017.00704. eCollection 2017.
In order to reduce the noise of brain signals, neuroeconomic experiments typically aggregate data from hundreds of trials collected from a few individuals. This contrasts with the principle of simple and controlled designs in experimental and behavioral economics. We use a frequency domain variant of the stationary subspace analysis (SSA) technique, denoted as DSSA, to filter out the noise (nonstationary sources) in EEG brain signals. The nonstationary sources in the brain signal are associated with variations in the mental state that are unrelated to the experimental task. DSSA is a powerful tool for reducing the number of trials needed from each participant in neuroeconomic experiments and also for improving the prediction performance of an economic choice task. For a single trial, when DSSA is used as a noise reduction technique, the prediction model in a food snack choice experiment has an increase in overall accuracy by around 10% and in sensitivity and specificity by around 20% and in AUC by around 30%, respectively.
为了降低脑信号的噪声,神经经济学实验通常会汇总从少数个体收集的数百次试验的数据。这与实验经济学和行为经济学中简单且可控设计的原则形成对比。我们使用平稳子空间分析(SSA)技术的频域变体,即DSSA,来滤除脑电图(EEG)脑信号中的噪声(非平稳源)。脑信号中的非平稳源与与实验任务无关的心理状态变化相关。DSSA是一种强大的工具,可减少神经经济学实验中每个参与者所需的试验次数,还可提高经济选择任务的预测性能。对于单次试验,当将DSSA用作降噪技术时,食品零食选择实验中的预测模型在总体准确率、灵敏度和特异性方面分别提高了约10%、20%,在曲线下面积(AUC)方面提高了约30%。