Familiarity of marketing stimuli may affect consumer behaviour at a peri-perceptual processing level. The current study introduces a method for deep learning of electroencephalogram (EEG) data using a spiking neural network (SNN) approach that reveals the complexity of peri-perceptual processes of familiarity. The method is applied to data from 20 participants viewing familiar and unfamiliar logos. The results support the potential of SNN models as novel tools in the exploration of peri-perceptual mechanisms that respond differentially to familiar and unfamiliar stimuli. Specifically, the activation pattern of the time-locked response identified by the proposed SNN model at approximately 200 milliseconds post-stimulus suggests greater connectivity and more widespread dynamic spatio-temporal patterns for familiar than unfamiliar logos. The proposed SNN approach can be applied to study other peri-perceptual or perceptual brain processes in cognitive and computational neuroscience.
%0 Journal Article
%1 gholamidoborjeh2018modelling
%A Gholami Doborjeh, Zohreh
%A Kasabov, Nikola
%A Gholami Doborjeh, Maryam
%A Sumich, Alexander
%D 2018
%J Scientific Reports
%K spiking
%N 1
%P 8912--
%R 10.1038/s41598-018-27169-8
%T Modelling Peri-Perceptual Brain Processes in a Deep Learning Spiking Neural Network Architecture
%U https://doi.org/10.1038/s41598-018-27169-8
%V 8
%X Familiarity of marketing stimuli may affect consumer behaviour at a peri-perceptual processing level. The current study introduces a method for deep learning of electroencephalogram (EEG) data using a spiking neural network (SNN) approach that reveals the complexity of peri-perceptual processes of familiarity. The method is applied to data from 20 participants viewing familiar and unfamiliar logos. The results support the potential of SNN models as novel tools in the exploration of peri-perceptual mechanisms that respond differentially to familiar and unfamiliar stimuli. Specifically, the activation pattern of the time-locked response identified by the proposed SNN model at approximately 200 milliseconds post-stimulus suggests greater connectivity and more widespread dynamic spatio-temporal patterns for familiar than unfamiliar logos. The proposed SNN approach can be applied to study other peri-perceptual or perceptual brain processes in cognitive and computational neuroscience.
@article{gholamidoborjeh2018modelling,
abstract = {Familiarity of marketing stimuli may affect consumer behaviour at a peri-perceptual processing level. The current study introduces a method for deep learning of electroencephalogram (EEG) data using a spiking neural network (SNN) approach that reveals the complexity of peri-perceptual processes of familiarity. The method is applied to data from 20 participants viewing familiar and unfamiliar logos. The results support the potential of SNN models as novel tools in the exploration of peri-perceptual mechanisms that respond differentially to familiar and unfamiliar stimuli. Specifically, the activation pattern of the time-locked response identified by the proposed SNN model at approximately 200 milliseconds post-stimulus suggests greater connectivity and more widespread dynamic spatio-temporal patterns for familiar than unfamiliar logos. The proposed SNN approach can be applied to study other peri-perceptual or perceptual brain processes in cognitive and computational neuroscience.},
added-at = {2019-07-17T10:55:33.000+0200},
author = {Gholami Doborjeh, Zohreh and Kasabov, Nikola and Gholami Doborjeh, Maryam and Sumich, Alexander},
biburl = {https://www.bibsonomy.org/bibtex/244b9938aa450bb850dbe18cff4664d58/topel},
doi = {10.1038/s41598-018-27169-8},
interhash = {2700e8a5d62878fd82d4c741f2d45c3b},
intrahash = {44b9938aa450bb850dbe18cff4664d58},
issn = {20452322},
journal = {Scientific Reports},
keywords = {spiking},
number = 1,
pages = {8912--},
refid = {Gholami Doborjeh2018},
timestamp = {2019-07-17T10:55:33.000+0200},
title = {Modelling Peri-Perceptual Brain Processes in a Deep Learning Spiking Neural Network Architecture},
url = {https://doi.org/10.1038/s41598-018-27169-8},
volume = 8,
year = 2018
}