Title
Exploratory Research on Sweetness Perception: Decision Trees to Study Electroencephalographic Data and Its Relationship with the Explicit Response to Sweet Odor, Taste, and FlavorAuthor
Version
Published versionDocument type
Journal ArticleLanguage
EnglishRights
© 2022 by the authorsAccess
Open accessPublisher’s version
https://doi.org/10.3390/s22186787Published at
Sensors n. 18, vol. 22, n. art. 6787Publisher
MDPIKeywords
electroencephalogram (EEG)sucrose
clustering algorithms
sensory modality discrimination
Abstract
Using implicit responses to determine consumers’ response to different stimuli is becoming a popular approach, but research is still needed to understand the outputs of the different technologies used ... [+]
Using implicit responses to determine consumers’ response to different stimuli is becoming a popular approach, but research is still needed to understand the outputs of the different technologies used to collect data. During the present research, electroencephalography (EEG) responses and self-reported liking and emotions were collected on different stimuli (odor, taste, flavor samples) to better understand sweetness perception. Artificial intelligence analytics were used to classify the implicit responses, identifying decision trees to discriminate the stimuli by activated sensory system (odor/taste/flavor) and by nature of the stimuli (‘sweet’ vs. ‘non-sweet’ odors; ‘sweet-taste’, ‘sweet-flavor’, and ‘non-sweet flavor’; and ‘sweet stimuli’ vs. ‘non-sweet stimuli’). Significant differences were found among self-reported-liking of the stimuli and the emotions elicited by the stimuli, but no clear relationship was identified between explicit and implicit data. The present research sums interesting data for the EEG-linked research as well as for EEG data analysis, although much is still unknown about how to properly exploit implicit measurement technologies and their data. [-]
Funder
Diputación Foral de GuipuzkoaXunta de Galicia
Gobierno Vasco
Project
2019-GAST-000024ED431G2019/01
00051-IDA2020-43
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