Abstract--Interaction analysis is increasingly used to study learning dynamics within online communities. This paper aims to investigate whether Interaction Analysis can help understand the practice and development of Self-Regulated Learning (SRL) in Virtual Learning Communities (VLCs). To this end, a set of SRL indicators is proposed to spot clues of self-regulated events within students' messages. Such clues have been identified and classified according to Zimmerman's SRL model and some subsequent studies concerning SRL in Technology Enhanced Learning Environments (TELEs). They have been tested on the online component of a blended course for trainee teachers, by analyzing the messages exchanged by a group of learners in two modules of the course. The results of this analysis have been compared with those of a previous study carried out, with more traditional methods, on the same course. The similarity of the results obtained by the two approaches suggests that Interaction Analysis is an effective, though rather labor-intensive, methodology to study SRL in online learning communities.

Detecting Self-regulated Learning in Online Communities by Means of Interaction Analysis

Giuliana Dettori;Donatella Persico
2008

Abstract

Abstract--Interaction analysis is increasingly used to study learning dynamics within online communities. This paper aims to investigate whether Interaction Analysis can help understand the practice and development of Self-Regulated Learning (SRL) in Virtual Learning Communities (VLCs). To this end, a set of SRL indicators is proposed to spot clues of self-regulated events within students' messages. Such clues have been identified and classified according to Zimmerman's SRL model and some subsequent studies concerning SRL in Technology Enhanced Learning Environments (TELEs). They have been tested on the online component of a blended course for trainee teachers, by analyzing the messages exchanged by a group of learners in two modules of the course. The results of this analysis have been compared with those of a previous study carried out, with more traditional methods, on the same course. The similarity of the results obtained by the two approaches suggests that Interaction Analysis is an effective, though rather labor-intensive, methodology to study SRL in online learning communities.
2008
Istituto per le Tecnologie Didattiche - ITD - Sede Genova
Inglese
1
1
11
19
http://www.computer.org/csdl/trans/lt/2008/01/tlt2008010011.html
Sì, ma tipo non specificato
Collaborative learning
computers and education
distance education
education
Questo articolo propone una metodologia originale, basata sull'analisi delle interazioni, per investigare l'autoregolazione messa in atto dai partecipanti a un corso online. Il valore applicativo di questa metodologia consiste nella possibilità di mettere in relazione l'autoregolazione mostrata dagli studenti con la tipologia delle attività svolte e del supporto ricevuto (dai tutor e dalla configurazione della piattaforma utilizzata), ricavando così utili principi per la progettazione di corsi online che favoriscano l'autoregolazione dei partecipanti. La rivista su cui è pubblicato l'articolo fa parte di una serie di riviste molto diffuse e di grande prestigio ("IEEE Transactions") destinate a pubblicare i risultati delle migliori ricerche in una varietà di campi applicativi degli strumenti informatici. E' riconosciuta da Web of Science, Scopus, Google Scholar e altre basi di dati bibliografiche internazionali.
2
info:eu-repo/semantics/article
262
Dettori, Giuliana; Persico, Donatella
01 Contributo su Rivista::01.01 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/72869
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