Loss of Self-Consciousness and autotelic ...
Type de document :
Autre communication scientifique (congrès sans actes - poster - séminaire...): Communication dans un congrès avec actes
Titre :
Loss of Self-Consciousness and autotelic personalities: a Machine Learning contribution
Auteur(s) :
Ramirez Luelmo, Sergio Ivan [Auteur]
Trigone-CIREL
Chartres, Izabella [Auteur]
Centrale Lille
Trigone-CIREL
Déro, Moïse [Auteur]
Trigone-CIREL
Bachelet, Rémi [Auteur]
Centrale Lille
El Mawas, Nour [Auteur]
Centre de Recherche sur les Médiations [Crem]
Heutte, Jean [Auteur]
Trigone-CIREL
Trigone-CIREL
Chartres, Izabella [Auteur]
Centrale Lille
Trigone-CIREL
Déro, Moïse [Auteur]
Trigone-CIREL
Bachelet, Rémi [Auteur]
Centrale Lille
El Mawas, Nour [Auteur]
Centre de Recherche sur les Médiations [Crem]
Heutte, Jean [Auteur]
Trigone-CIREL
Titre de la manifestation scientifique :
11th European Conference on Positive Psychology (ECPP 2024)
Ville :
Innsbruck
Pays :
Autriche
Date de début de la manifestation scientifique :
2024-07-10
Mot(s)-clé(s) en anglais :
flow
machine learning
Clustering
autotelic personality
machine learning
Clustering
autotelic personality
Discipline(s) HAL :
Sciences de l'Homme et Société/Education
Informatique [cs]/Environnements Informatiques pour l'Apprentissage Humain
Sciences cognitives/Psychologie
Informatique [cs]/Environnements Informatiques pour l'Apprentissage Humain
Sciences cognitives/Psychologie
Résumé en anglais : [en]
AbstractBackground:The EduFlow-2 measurement instrument (Heutte et al., 2021) approaches the flow psychological state (Csíkszentmihályi, 1975) in online, distance, education and training contexts via four constituting ...
Lire la suite >AbstractBackground:The EduFlow-2 measurement instrument (Heutte et al., 2021) approaches the flow psychological state (Csíkszentmihályi, 1975) in online, distance, education and training contexts via four constituting dimensions, linked to cognitive processes: Cognitive Absorption, Time Transformation, Loss of Self-Consciousness, and Autotelic Experience.Goals:Highlight the role of the EduFlow-2 D3 dimension Loss of Self-Consciousness (LoSC) as an indicator of autotelic personality in a MOOC.Methods:We employ a Variational Bayesian Gaussian Mixture Model (VBGMM) (Roberts, Husmeier, Rezek, & Penny, 1998) unsupervised Machine Learning (ML) algorithm to automatically discern typologies of MOOC participants (n = 1553) following their individual EduFlow-2 dimensional scoring. The ML model attempts clustering them into up to 22 distinct combinations while scoring a reduced number of typologies higher.Results:Among the seemingly infinite possibilities for any individual to score among these four flow dimensions, VBGMM has shown MOOC participants to group around only seven distinct typologies. Furthermore, these results unequivocally point to EduFlow-2 D3 dimension Loss of Self-Consciousness (LoSC) as a major indicator of personality that determines behavior in the persistence to will to learn in a lifelong manner. Results from applying an additional unsupervised k-means clustering further cemented the importance of the LoSC dimension.Discussion:A very much needed quantitative approach would include the educational and training environment's role on these typologies. Fueled by a biographical dimension of the individual and its impact on the LoSC flow dimension, such approach would prove itself as a determinant of the construction of autotelic personalities. Moreover, results contribute to establishing a flow threshold in MOOC contexts.Lire moins >
Lire la suite >AbstractBackground:The EduFlow-2 measurement instrument (Heutte et al., 2021) approaches the flow psychological state (Csíkszentmihályi, 1975) in online, distance, education and training contexts via four constituting dimensions, linked to cognitive processes: Cognitive Absorption, Time Transformation, Loss of Self-Consciousness, and Autotelic Experience.Goals:Highlight the role of the EduFlow-2 D3 dimension Loss of Self-Consciousness (LoSC) as an indicator of autotelic personality in a MOOC.Methods:We employ a Variational Bayesian Gaussian Mixture Model (VBGMM) (Roberts, Husmeier, Rezek, & Penny, 1998) unsupervised Machine Learning (ML) algorithm to automatically discern typologies of MOOC participants (n = 1553) following their individual EduFlow-2 dimensional scoring. The ML model attempts clustering them into up to 22 distinct combinations while scoring a reduced number of typologies higher.Results:Among the seemingly infinite possibilities for any individual to score among these four flow dimensions, VBGMM has shown MOOC participants to group around only seven distinct typologies. Furthermore, these results unequivocally point to EduFlow-2 D3 dimension Loss of Self-Consciousness (LoSC) as a major indicator of personality that determines behavior in the persistence to will to learn in a lifelong manner. Results from applying an additional unsupervised k-means clustering further cemented the importance of the LoSC dimension.Discussion:A very much needed quantitative approach would include the educational and training environment's role on these typologies. Fueled by a biographical dimension of the individual and its impact on the LoSC flow dimension, such approach would prove itself as a determinant of the construction of autotelic personalities. Moreover, results contribute to establishing a flow threshold in MOOC contexts.Lire moins >
Langue :
Anglais
Comité de lecture :
Oui
Audience :
Internationale
Vulgarisation :
Non
Projet ANR :
Source :