EEG-Based Emotion Recognition in Neuromarketing Using Fuzzy Linguistic Summarization
Abstract
In recent years, to increase market share, companies
have preferred neuromarketing over traditional methods for better
analysis of consumer behavior. Since it easily detects customers’
subconscious preferences, electroencephalography (EEG), a brain
imaging method, has become widespread within neuromarketing
techniques. To make sense of EEG signals, dimensional models
are used to convert them into emotions. These steps can reveal
emotions and preferences easily but still require an expert for
detailed stimulus analysis. This article proposed a fuzzy linguistic
summarization approach to provide a decision support tool aimed
at presenting detailed analysis to neuromarketing experts. EEG
signals were recorded to analyze a hotel’s three (audio, video,
web page) advertisements (ads). These were converted into fuzzy
emotion labels in a modified Russell’s circumplex model for more
specific analysis. Then, these emotion labels were used in linguistic
summarization. EEG data were handled in three types: univariate,
multivariate, and multigranular detected time series. Each ad was
summarized according to demographic features, such as gender
and age, allowing comparisons between ads and their segments.
The granular trend detection algorithm was modified to detect the
simultaneous effects of ads. This study will inspire future studies
with three innovations: fuzzy linguistic summarization technique
in neuromarketing, fuzzy emotion recognition, and a modified
multigranular trend detection algorithm that detects simultaneous
agglomeration that is often overlooked.











