From Big Data to Learning Analytics for a personalized learning experience
This article describes Learning Analytics (LA) as a predictive and formative approach that enables the planning of educational scenarios in line with students’ needs and languages in order to set a priori and in progress systems of control and inspection of the following: consistency, relevance and...
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doaj-1ebce39508b64879a4b88ba2ea03b06c2021-09-05T14:00:12ZengSciendoResearch on Education and Media2037-08302018-12-011023910.1515/rem-2018-0009From Big Data to Learning Analytics for a personalized learning experienceDipace Anna0Loperfido F. Feldia1Scarinci Alessia2Università di Modena Reggio Emilia, ItalyUniversità di Foggia, ItalyUniversità degli Studi di Bari, ItalyThis article describes Learning Analytics (LA) as a predictive and formative approach that enables the planning of educational scenarios in line with students’ needs and languages in order to set a priori and in progress systems of control and inspection of the following: consistency, relevance and effectiveness of training objectives, curriculum paths, students’ needs and learning outcomes. Thanks to LA, it is possible to understand how students learn. Training courses are designed to include the definition of those learning outcomes that respond effectively to students’ needs in terms of contents, methodologies, tools and teaching resources. The present article aims to describe and discuss, after reviewing the relevant literature, in what way LA represents a valid support not only in designing student-centred training courses, which assess outcomes, but also in carrying out a formative assessment considering the learning experience as a whole. The analysis of some case studies was a good opportunity to reflect and define the bridge existing between the use of LA for assessment purposes and personalized learning paths.https://doi.org/10.1515/rem-2018-0009learning analyticslearning outcomespersonalizationpredictive analyticsformative assessment |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Dipace Anna Loperfido F. Feldia Scarinci Alessia |
spellingShingle |
Dipace Anna Loperfido F. Feldia Scarinci Alessia From Big Data to Learning Analytics for a personalized learning experience Research on Education and Media learning analytics learning outcomes personalization predictive analytics formative assessment |
author_facet |
Dipace Anna Loperfido F. Feldia Scarinci Alessia |
author_sort |
Dipace Anna |
title |
From Big Data to Learning Analytics for a personalized learning experience |
title_short |
From Big Data to Learning Analytics for a personalized learning experience |
title_full |
From Big Data to Learning Analytics for a personalized learning experience |
title_fullStr |
From Big Data to Learning Analytics for a personalized learning experience |
title_full_unstemmed |
From Big Data to Learning Analytics for a personalized learning experience |
title_sort |
from big data to learning analytics for a personalized learning experience |
publisher |
Sciendo |
series |
Research on Education and Media |
issn |
2037-0830 |
publishDate |
2018-12-01 |
description |
This article describes Learning Analytics (LA) as a predictive and formative approach that enables the planning of educational scenarios in line with students’ needs and languages in order to set a priori and in progress systems of control and inspection of the following: consistency, relevance and effectiveness of training objectives, curriculum paths, students’ needs and learning outcomes. Thanks to LA, it is possible to understand how students learn. Training courses are designed to include the definition of those learning outcomes that respond effectively to students’ needs in terms of contents, methodologies, tools and teaching resources. The present article aims to describe and discuss, after reviewing the relevant literature, in what way LA represents a valid support not only in designing student-centred training courses, which assess outcomes, but also in carrying out a formative assessment considering the learning experience as a whole. The analysis of some case studies was a good opportunity to reflect and define the bridge existing between the use of LA for assessment purposes and personalized learning paths. |
topic |
learning analytics learning outcomes personalization predictive analytics formative assessment |
url |
https://doi.org/10.1515/rem-2018-0009 |
work_keys_str_mv |
AT dipaceanna frombigdatatolearninganalyticsforapersonalizedlearningexperience AT loperfidoffeldia frombigdatatolearninganalyticsforapersonalizedlearningexperience AT scarincialessia frombigdatatolearninganalyticsforapersonalizedlearningexperience |
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