Peer-assessment entails, for students, a very beneficial learning activity, from a pedagogical point of view. The peer-evaluation can be performed over a variety of peer-produced resources, the principle being that the more articulated such resource is, the better. Here we focus, in particular, on the automated support to grading open answers, via a peer-evaluation-based approach, which is mediated by the (partial) grading work of the teacher, and produces a (partial, as well) automated grading. We propose to support such automated grading by means of a method based on the K-NN technique. This method is an alternative to a previously studied and implemented one, based on Bayesian Networks. Here we describe the new approach and provide the reader with a preliminary evaluation.

Modeling a peer assessment framework by means of a lazy learning approach / De Marsico, Maria; Sterbini, Andrea; Sciarrone, Filippo; Temperini, Marco. - STAMPA. - 10676:(2017), pp. 336-345. (Intervento presentato al convegno 2nd International Symposium on Emerging Technologies for Education, SETE 2017, held in Conjunction with the 16th International Conference on Web-based learning, ICWL 2017 tenutosi a Cape Town; South Africa nel 2017) [10.1007/978-3-319-71084-6_38].

Modeling a peer assessment framework by means of a lazy learning approach

De Marsico, Maria;Sterbini, Andrea;Sciarrone, Filippo;Temperini, Marco
2017

Abstract

Peer-assessment entails, for students, a very beneficial learning activity, from a pedagogical point of view. The peer-evaluation can be performed over a variety of peer-produced resources, the principle being that the more articulated such resource is, the better. Here we focus, in particular, on the automated support to grading open answers, via a peer-evaluation-based approach, which is mediated by the (partial) grading work of the teacher, and produces a (partial, as well) automated grading. We propose to support such automated grading by means of a method based on the K-NN technique. This method is an alternative to a previously studied and implemented one, based on Bayesian Networks. Here we describe the new approach and provide the reader with a preliminary evaluation.
2017
2nd International Symposium on Emerging Technologies for Education, SETE 2017, held in Conjunction with the 16th International Conference on Web-based learning, ICWL 2017
Machine learning; Open-ended answers; Peer assessment; Theoretical Computer Science; Computer Science (all)
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Modeling a peer assessment framework by means of a lazy learning approach / De Marsico, Maria; Sterbini, Andrea; Sciarrone, Filippo; Temperini, Marco. - STAMPA. - 10676:(2017), pp. 336-345. (Intervento presentato al convegno 2nd International Symposium on Emerging Technologies for Education, SETE 2017, held in Conjunction with the 16th International Conference on Web-based learning, ICWL 2017 tenutosi a Cape Town; South Africa nel 2017) [10.1007/978-3-319-71084-6_38].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1074063
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