Data-driven educational algorithms pedagogical framing
Data from students and learning practices are essential for feeding the artificial intelligence systems used in education. Recurrent data trains the algorithms so that they can be adapted to new situations, either to optimize coursework or to manage repetitive tasks. As the algorithms spread in diff...
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Asociación Iberoamericana de Educación Superior y a Distancia (AIESAD)
2020-07-01
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Online Access: | http://revistas.uned.es/index.php/ried/article/view/26470 |
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doaj-36a935fb2217495fabd78e08ad337a0e2021-08-02T19:25:01ZengAsociación Iberoamericana de Educación Superior y a Distancia (AIESAD)RIED: Revista Iberoamericana de Educación a Distancia1138-27831390-33062020-07-01232658410.5944/ried.23.2.2647019440Data-driven educational algorithms pedagogical framingDaniel Domínguez Figaredo0UNEDData from students and learning practices are essential for feeding the artificial intelligence systems used in education. Recurrent data trains the algorithms so that they can be adapted to new situations, either to optimize coursework or to manage repetitive tasks. As the algorithms spread in different learning contexts and the actions which they perform expand, pedagogical interpretative frameworks are required to use them properly. Based on case analyses and a literature review, the paper analyses the limits of learning practices based on the massive use of data from a pedagogical approach. The focus is on data capture, biases associated with datasets, and human intervention both in the training of artificial intelligence algorithms and in the design of machine learning pipelines. In order to facilitate the adequate use of data-driven learning practices, it is proposed to frame appropriate heuristics to determine the pedagogical suitability of artificial intelligence systems and also their evaluation both in terms of accountability and of the quality of the teaching-learning process. Thus, finally, a set of top-down proposed rules that can contribute to fill the identified gaps to improve the educational use of data-driven educational algorithms is discussed.http://revistas.uned.es/index.php/ried/article/view/26470teaching practicelearning conditionssciences of educationexperimental educationeducational researchelectronic data processing |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniel Domínguez Figaredo |
spellingShingle |
Daniel Domínguez Figaredo Data-driven educational algorithms pedagogical framing RIED: Revista Iberoamericana de Educación a Distancia teaching practice learning conditions sciences of education experimental education educational research electronic data processing |
author_facet |
Daniel Domínguez Figaredo |
author_sort |
Daniel Domínguez Figaredo |
title |
Data-driven educational algorithms pedagogical framing |
title_short |
Data-driven educational algorithms pedagogical framing |
title_full |
Data-driven educational algorithms pedagogical framing |
title_fullStr |
Data-driven educational algorithms pedagogical framing |
title_full_unstemmed |
Data-driven educational algorithms pedagogical framing |
title_sort |
data-driven educational algorithms pedagogical framing |
publisher |
Asociación Iberoamericana de Educación Superior y a Distancia (AIESAD) |
series |
RIED: Revista Iberoamericana de Educación a Distancia |
issn |
1138-2783 1390-3306 |
publishDate |
2020-07-01 |
description |
Data from students and learning practices are essential for feeding the artificial intelligence systems used in education. Recurrent data trains the algorithms so that they can be adapted to new situations, either to optimize coursework or to manage repetitive tasks. As the algorithms spread in different learning contexts and the actions which they perform expand, pedagogical interpretative frameworks are required to use them properly. Based on case analyses and a literature review, the paper analyses the limits of learning practices based on the massive use of data from a pedagogical approach. The focus is on data capture, biases associated with datasets, and human intervention both in the training of artificial intelligence algorithms and in the design of machine learning pipelines. In order to facilitate the adequate use of data-driven learning practices, it is proposed to frame appropriate heuristics to determine the pedagogical suitability of artificial intelligence systems and also their evaluation both in terms of accountability and of the quality of the teaching-learning process. Thus, finally, a set of top-down proposed rules that can contribute to fill the identified gaps to improve the educational use of data-driven educational algorithms is discussed. |
topic |
teaching practice learning conditions sciences of education experimental education educational research electronic data processing |
url |
http://revistas.uned.es/index.php/ried/article/view/26470 |
work_keys_str_mv |
AT danieldominguezfigaredo datadriveneducationalalgorithmspedagogicalframing |
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