Spatial attention-enhanced EEG analysis for profiling consumer choices
Over the years, research in neuroscience-driven marketing has progressively delved into the conscious and subconscious behaviors of consumers. Existing Electroencephalography (EEG)-based studies related to consumer preferences toward products are not comprehensive. Due to non-stationarity issues o...
Saved in:
Main Authors: | , , , |
---|---|
Format: | Article |
Published: |
Institute of Electrical and Electronics Engineers Inc.
2024
|
Online Access: | http://psasir.upm.edu.my/id/eprint/105868/ https://ieeexplore.ieee.org/document/10409161 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Summary: | Over the years, research in neuroscience-driven marketing has progressively delved into the
conscious and subconscious behaviors of consumers. Existing Electroencephalography (EEG)-based studies
related to consumer preferences toward products are not comprehensive. Due to non-stationarity issues of
EEG, a significant variance is observed in inter-trial and inter-session EEG signals of a subject, which leads
to challenges in building a universal consumer preference model across diverse subjects, sessions, and tasks.
Transfer learning mitigates this challenge by utilizing data or knowledge from similar subjects, sessions,
or tasks to improve the learning process for a new subject, session, or task, thereby enhancing overall
model performance. Moreover, high-dimensional EEG features often lead to poor classification results.
Therefore, selecting meaningful or refined features is of utmost importance for classification. Therefore,
we propose a robust EEG-based neuromarketing framework combining deep transfer learning, spatial
attention models, and deep neural networks. The proposed framework predicts the consumer choices (in
terms of ‘‘likes’’ and ‘‘dislikes’’) for e-commerce products. Initially, the knowledge distillation is performed
from the pre-trained network to the proposed model, and the model is trained on the connectivity features of
EEG. Next, the attention-based features are extracted from high-level connectivity features using the spatial
attention model (Convolutional Block Attention Module: CBAM). CBAM extracts the attention feature maps
along channel and spatial dimensions for adaptive feature refinement. The refined features improve the
classification accuracy. Finally, the attention-based features are passed to the 2D CNN-based deep learning
model to evaluate consumer choices. The proposed model achieves 95.60% classification accuracy with the
experimental dataset. The proposed model achieves a significant improvement of 2.60% over the existing
neuromarketing-based studies. |
---|