Documenting and analyzing pre-reflective self-consciousness underlying ongoing performance optimization in elite athletes: the theoretical and methodological approach of the course-of-experience framework

Details

Serval ID
serval:BIB_2D1EB71FF46A
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Documenting and analyzing pre-reflective self-consciousness underlying ongoing performance optimization in elite athletes: the theoretical and methodological approach of the course-of-experience framework
Journal
Frontiers in Psychology
Author(s)
Terrien Eric, Huet Benoît, Iachkine Paul, Saury Jacques
ISSN
1664-1078
ISSN-L
1664-1078
Publication state
Published
Issued date
25/06/2024
Peer-reviewed
Oui
Volume
15
Language
english
Abstract
Traditional theories of motor learning emphasize the automaticity of skillful actions. However, recent research has emphasized the role of pre-reflective self-consciousness accompanying skillful action execution. In the present paper, we present the course-of-experience framework as a means of studying elite athletes' pre-reflective self-consciousness in the unfolding activity of performance optimization. We carried out a synthetic presentation of the ontological and epistemological foundation of this framework. Then we illustrated the methodology by an in-depth analysis of two elite windsurfers' courses of experience. The analysis of global and local characteristics of the riders' courses of experience reveal (a) the meaningful activities accompanying the experience of ongoing performance optimization; (b) the multidimensionality of attentional foci and the normativity of performance self-assessment; and (c) a micro-scale phenomenological description of continuous improvement. These results highlight the fruitfulness of the course-of-experience framework to describe the experience of being absorbed in an activity of performance optimization.
Pubmed
Web of science
Open Access
Yes
Create date
19/07/2024 7:45
Last modification date
09/08/2024 14:52
Usage data