Digital Methods to Promote Inclusive and Effective Learning in Schools: A Mixed Methods Research Study

Author:

Stalmach Aleksandra1,D’Elia Paola2,Di Sano Sergio2,Casale Gino1

Affiliation:

1. Institute for Educational Research, School of Education, University of Wuppertal , 42119 Wuppertal , Germany

2. Department of Neuroscience, Imaging and Clinical Sciences, Gabriele d’Annunzio University of Chieti-Pescara , 66100 Chieti , Italy

Abstract

Abstract This study investigates 14 digitally enhanced learning methods, shedding light on students with special educational needs (SEN) in inclusive digital learning environments. We seek to fill the gap in the literature by specifically investigating methods suitable for students with SEN. A survey among experts has been carried out to assess learning methods that are effectively applicable in inclusive digital learning environments. A mixed method: quantitative and qualitative data analysis with the use of a constant comparative method has been applied to synthesise and compare experts’ answers. Quantitative data analysis showed that cooperative learning, digital problem/project-based learning, and virtual exchange are the most suitable methods for all students, whereas digital problem/project-based learning, cooperative learning, and service-learning were agreed upon as the most appropriate for students with SEN. Answers to open questions, evaluated using a qualitative approach, showed that the effectiveness of digital approaches is heavily reliant on the skills, experience, willingness, confidence, and knowledge of teachers implementing them. Employing cooperative learning and digital problem/project-based learning, particularly by experienced and highly skilled teachers, has the potential to effectively support all students, including those with SEN, in digital learning environments.

Publisher

Walter de Gruyter GmbH

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