Tool per la classificazione dei sentimenti degli studenti Implicati in moduli didattici universitari in modalità e-learning

Conference paper


Nalli, G., Amendola, D., Schettini, C. and Galassi, R. 2019. Tool per la classificazione dei sentimenti degli studenti Implicati in moduli didattici universitari in modalità e-learning. MoodleMoot Italia 2019. Verona, Italy 05 - 07 Dec 2019 MediaTouch 2000. pp. 29-32
TypeConference paper
TitleTool per la classificazione dei sentimenti degli studenti Implicati in moduli didattici universitari in modalità e-learning
AuthorsNalli, G., Amendola, D., Schettini, C. and Galassi, R.
Abstract

Negli ultimi anni, le piattaforme e-learning risultano essere molto utilizzate, all’interno dei corsi universitari, come supporto alla didattica d’aula per garantire una formazione innovativa che veda lo studente attivo durante il processo di apprendimento al fine di migliorare le proprie conoscenze e competenze. Per raggiungere tali obiettivi è importante che oltre ad una buona progettazione didattica si tenga conto anche dell’aspetto emotivo degli studenti, poiché i sentimenti possono influenzare le loro motivazioni e quindi anche le performance finali. Il nostro lavoro consiste nella realizzazione di un software intelligente in grado di estrarre i sentimenti degli studenti dall’analisi del testo di un questionario a risposta aperta. L’esecuzione si conclude con l’invio automatico al docente di un feedback con le informazioni sui sentimenti estratti, che possono essere utili per verificare quanto il materiale fornito via e-learning sia funzionale per gli studenti. Conoscendo cosi le esigenze e le difficoltà degli studenti, il docente può modificare, ove e se necessario, la struttura del corso al fine di rendere positivi i sentimenti degli studenti e quindi aumentare la loro motivazione.

Sustainable Development Goals4 Quality education
Middlesex University ThemeCreativity, Culture & Enterprise
ConferenceMoodleMoot Italia 2019
Page range29-32
Proceedings TitleAtti del MoodleMoot Italia 2019
ISBN9788890749353
PublisherMediaTouch 2000
Publication dates
Print07 Dec 2019
Publication process dates
Accepted2019
Deposited14 Jun 2024
Output statusPublished
LanguageItalian
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