Mineria de dades educatives i anàlisi de dades de l’aprenentatge: diferències, semblances i evolució en el temps

Laura Calvet Liñán, Ángel Alejandro Juan Pérez

Resum


El progrés tecnològic de les darreres dècades ha fet possible una diversitat de formes d’aprenentatge. Avui dia les universitats ofereixen múltiples models d’ensenyament entre els quals podem triar, per exemple, l’aprenentatge mixt (b-learning) o l’aprenentatge electrònic. Si bé cada cop són més nombroses les oportunitats per a alumnes i professors, l’aprenentatge en línia també planteja dificultats degudes a la manca de contacte humà directe. Els entorns en línia permeten que es generin grans quantitats de dades relacionades amb els processos d’ensenyament i aprenentatge, de les quals es pot extreure una valuosa informació que es pot fer servir per millorar l’actuació de l’alumnat. En aquest treball volem estudiar les semblances i diferències entre la mineria de dades educatives i l’anàlisi de dades sobre l’aprenentatge, dos camps de recerca relativament nous i creixentment populars relacionats amb la recollida, l’anàlisi i la interpretació de dades sobre educació. En tractarem l’origen, els objectius, les diferències i semblances, l’evolució que han tingut en el temps i els reptes a què s’enfronten, així com la seva relació amb les dades massives i els cursos en línia oberts i massius (MOOC).

Paraules clau


aprenentatge en línia, mineria de dades educatives, anàlisi de dades sobre aprenentatge, dades massives

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DOI: http://dx.doi.org/10.7238/rusc.v12i3.2515

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