Reducing Brain Signal Noise in the Prediction of Economic Choices: A Case Study in Neuroeconomics

Front Neurosci. 2017 Dec 14:11:704. doi: 10.3389/fnins.2017.00704. eCollection 2017.

Abstract

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.

Keywords: C32; D87; EEG data; choice behavior; multi-dimensional time series; neuroeconomics; stationary subspace analysis.