Concept maps are graphic tools to organize, represent and share knowledge. In particular, a concept map can explicitly express the knowledge of a person or group, about a given domain of interest. Concept maps are used effectively to support learning of any topic, at any level: from Primary School to University, and to professional/vocational training, it can stimulate and unveil the occurrence of meaningful learning. In an educational context, having the possibility to compare Concept Maps coming from different students, also by means of an automated computation of map similarity, can reveal to be a great asset for a teacher. And this is so much more true when the number of students is very high, like in Massive Open Online Course. Here we propose a similarity measure based on two deep learning techniques that produce embeddings of the single structures that make up a concept map. We also report about a preliminary experiment, having encouraging results.

A Deep Learning Approach to Concept Maps Similarity / Montanaro, Antonella Gabriella; Sciarrone, Filippo; Temperini, Marco. - 2022-July:(2022), pp. 239-244. (Intervento presentato al convegno International Conference Information Visualisation (IV) tenutosi a Vienna; Austria) [10.1109/iv56949.2022.00048].

A Deep Learning Approach to Concept Maps Similarity

Sciarrone, Filippo
;
Temperini, Marco
2022

Abstract

Concept maps are graphic tools to organize, represent and share knowledge. In particular, a concept map can explicitly express the knowledge of a person or group, about a given domain of interest. Concept maps are used effectively to support learning of any topic, at any level: from Primary School to University, and to professional/vocational training, it can stimulate and unveil the occurrence of meaningful learning. In an educational context, having the possibility to compare Concept Maps coming from different students, also by means of an automated computation of map similarity, can reveal to be a great asset for a teacher. And this is so much more true when the number of students is very high, like in Massive Open Online Course. Here we propose a similarity measure based on two deep learning techniques that produce embeddings of the single structures that make up a concept map. We also report about a preliminary experiment, having encouraging results.
2022
International Conference Information Visualisation (IV)
Concept Map; Deep Learning; Embeddings; Similarity Measure
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
A Deep Learning Approach to Concept Maps Similarity / Montanaro, Antonella Gabriella; Sciarrone, Filippo; Temperini, Marco. - 2022-July:(2022), pp. 239-244. (Intervento presentato al convegno International Conference Information Visualisation (IV) tenutosi a Vienna; Austria) [10.1109/iv56949.2022.00048].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1729493
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