A framework to support educational decision making in mobile learning

Computers in Human Behavior - Tập 47 - Trang 50-59 - 2015
Giovanni Fulantelli1, Davide Taibi1, Marco Arrigo1
1National Research Council of Italy, Inst. for Educational Technology, Palermo, Italy

Tài liệu tham khảo

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