Automatic Recognition of Personality Profiles Using EEG Functional Connectivity during Emotional Processing
Automatic Recognition of Personality Profiles Using EEG Functional Connectivity during Emotional Processing
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Date
2020-05-03
Authors
Manousos A. Klados
Panagiota Konstantinidi
Rosalia Dacosta-Aguayo
Vasiliki-Despoina Kostaridou
Alessandro Vinciarelli
Michalis Zervakis
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Publisher
MDPI
Abstract
Personality is the characteristic set of an individual’s behavioral and emotional patterns
that evolve from biological and environmental factors. The recognition of personality profiles is
crucial in making human–computer interaction (HCI) applications realistic, more focused, and user
friendly. The ability to recognize personality using neuroscientific data underpins the neurobiological
basis of personality. This paper aims to automatically recognize personality, combining scalp
electroencephalogram (EEG) and machine learning techniques. As the resting state EEG has not so
far been proven e cient for predicting personality, we used EEG recordings elicited during emotion
processing. This study was based on data from the AMIGOS dataset reflecting the response of
37 healthy participants. Brain networks and graph theoretical parameters were extracted from cleaned
EEG signals, while each trait score was dichotomized into low- and high-level using the k-means
algorithm. A feature selection algorithm was used afterwards to reduce the feature-set size to the best
10 features to describe each trait separately. Support vector machines (SVM) were finally employed
to classify each instance. Our method achieved a classification accuracy of 83.8% for extraversion,
86.5% for agreeableness, 83.8% for conscientiousness, 83.8% for neuroticism, and 73% for openness.
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Citation
Klados MA, Konstantinidi P, Dacosta-Aguayo R, Kostaridou V-D, Vinciarelli A, Zervakis M. Automatic Recognition of Personality Profiles Using EEG Functional Connectivity during Emotional Processing. Brain Sciences. 2020; 10(5):278. https://doi.org/10.3390/brainsci10050278