Classifying EEG Signals of�Mind-Wandering Across Different Styles of�Meditation
Source
Lecture Notes in Computer Science
Author(s)
Editor(s)
Mahmud, M.
He, J.
Vassanelli, S.
van Zundert, A.
Zhong, N.
Abstract
In the modern world, it is easy to get lost in thought, partly because of the vast knowledge available at our fingertips via smartphones that divide our cognitive resources and partly because of our intrinsic thoughts. In this work, we aim to find the differences in the neural signatures of mind-wandering and meditation that are common across different meditative styles. We use EEG recording done during meditation sessions by experts of different meditative styles, namely shamatha, zazen, dzogchen, and visualization. We evaluate the models using the leave-one-out validation technique to train on three meditative styles and test the fourth left-out style. With this method, we achieve an average classification accuracy of above 70%, suggesting that EEG signals of meditation techniques have a unique neural signature across meditative styles and can be differentiated from mind-wandering states. In addition, we generate lower-dimensional embeddings from higher-dimensional ones using t-SNE, PCA, and LLE algorithms and observe visual differences in embeddings between meditation and mind-wandering. We also discuss the general flow of the proposed design and contributions to the field of neuro-feedback-enabled mind-wandering detection and correction devices. � 2022 Elsevier B.V., All rights reserved.
Keywords
Biomedical signal processing
Electroencephalography
Embeddings
Feedback
Cognition
Cognitive resources
Deep learning
EEG signals
Machine-learning
Meditation
Mind-wandering
Neural signatures
Neuro-feedback
Smart phones
