An Exploratory Analysis of Transactive Interaction Patterns in Cooperative Learning Using Sequential Analysis

Author:

Nemeth Lea1ORCID,Blumenfeld Tim2,Denn Ann-Katrin3,Hirstein Anastasia4,Lipowsky Frank1ORCID

Affiliation:

1. Institute of Educational Science, Department of Research on Teaching and Learning, University of Kassel, 34127 Kassel, Germany

2. Infrastructure Management Consultants, 68163 Mannheim, Germany

3. Hessian University for Public Management and Security, 34134 Kassel, Germany

4. Department of Student and Academic Affairs, University of Kassel, 34109 Kassel, Germany

Abstract

For cooperative learning to be effective, the quality of student–student interaction is crucial. Interactions, which are transactive in nature, are positively related to students’ learning success during cooperative learning. However, little is known about typical interaction patterns during transactive interaction in face-to-face cooperative learning. Therefore, the current study aims to analyze typical interaction patterns of transactive interaction in cooperative learning. Sixty-eight students from seventh to tenth grade were randomly assigned to a total of 23 groups in their classes. The groups were videotaped while solving the same open-ended mathematical modelling task. The interaction behavior was coded, and interaction patterns were analyzed using sequential analysis with first- and second-order Markov chains. The results indicate that the likelihood that students confirm and pick up correct proposals is relatively high, indicating transactive interaction. However, it is almost equally likely that incorrect proposals are confirmed erroneously, as students barely correct them. Still, students do frequently engage in transactive interaction by discussing incorrect proposals, even though these discussions rarely lead to correct solution approaches. Limitations of these results, as well as the practical implications for cooperative learning in classroom settings, are discussed.

Funder

Federal Ministry of Education and Research

Publisher

MDPI AG

Subject

Public Administration,Developmental and Educational Psychology,Education,Computer Science Applications,Computer Science (miscellaneous),Physical Therapy, Sports Therapy and Rehabilitation

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