Federated learning for data analytics in education

Fachola, Christian - Tornaría, Agustín - Bermolen, Paola - Capdehourat, Germán - Etcheverry, Lorena - Fariello, María Inés

Resumen:

Federated learning techniques aim to train and build machine learning models based on distributed datasets across multiple devices while avoiding data leakage. The main idea is to perform training on remote devices or isolated data centers without transferring data to centralized repositories, thus mitigating privacy risks. Data analytics in education, in particular learning analytics, is a promising scenario to apply this approach to address the legal and ethical issues related to processing sensitive data. Indeed, given the nature of the data to be studied (personal data, educational outcomes, and data concerning minors), it is essential to ensure that the conduct of these studies and the publication of the results provide the necessary guarantees to protect the privacy of the individuals involved and the protection of their data. In addition, the application of quantitative techniques based on the exploitation of data on the use of educational platforms, student performance, use of devices, etc., can account for educational problems such as the determination of user profiles, personalized learning trajectories, or early dropout indicators and alerts, among others. This paper presents the application of federated learning techniques to a well-known learning analytics problem: student dropout prediction. The experiments allow us to conclude that the proposed solutions achieve comparable results from the performance point of view with the centralized versions, avoiding the concentration of all the data in a single place for training the models.


Detalles Bibliográficos
2023
Esta investigación fue financiada por la Agencia Nacional de Innovación e Investigación (ANII) Uruguay, Número de Subvención FMV_3_2020_1_162910.
Federated learning
Learning analytics
Inglés
Universidad de la República
COLIBRI
https://www.mdpi.com/2306-5729/8/2/43
https://hdl.handle.net/20.500.12008/39851
Acceso abierto
Licencia Creative Commons Atribución (CC - By 4.0)
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author Fachola, Christian
author2 Tornaría, Agustín
Bermolen, Paola
Capdehourat, Germán
Etcheverry, Lorena
Fariello, María Inés
author2_role author
author
author
author
author
author_facet Fachola, Christian
Tornaría, Agustín
Bermolen, Paola
Capdehourat, Germán
Etcheverry, Lorena
Fariello, María Inés
author_role author
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dc.contributor.filiacion.none.fl_str_mv Fachola Christian, Universidad de la República (Uruguay). Facultad de Ingeniería.
Tornaría Agustín, Universidad de la República (Uruguay). Facultad de Ingeniería.
Bermolen Paola, Universidad de la República (Uruguay). Facultad de Ingeniería.
Capdehourat Germán, Universidad de la República (Uruguay). Facultad de Ingeniería.
Etcheverry Lorena, Universidad de la República (Uruguay). Facultad de Ingeniería.
Fariello María Inés, Universidad de la República (Uruguay). Facultad de Ingeniería.
dc.creator.none.fl_str_mv Fachola, Christian
Tornaría, Agustín
Bermolen, Paola
Capdehourat, Germán
Etcheverry, Lorena
Fariello, María Inés
dc.date.accessioned.none.fl_str_mv 2023-09-08T18:03:02Z
dc.date.available.none.fl_str_mv 2023-09-08T18:03:02Z
dc.date.issued.none.fl_str_mv 2023
dc.description.abstract.none.fl_txt_mv Federated learning techniques aim to train and build machine learning models based on distributed datasets across multiple devices while avoiding data leakage. The main idea is to perform training on remote devices or isolated data centers without transferring data to centralized repositories, thus mitigating privacy risks. Data analytics in education, in particular learning analytics, is a promising scenario to apply this approach to address the legal and ethical issues related to processing sensitive data. Indeed, given the nature of the data to be studied (personal data, educational outcomes, and data concerning minors), it is essential to ensure that the conduct of these studies and the publication of the results provide the necessary guarantees to protect the privacy of the individuals involved and the protection of their data. In addition, the application of quantitative techniques based on the exploitation of data on the use of educational platforms, student performance, use of devices, etc., can account for educational problems such as the determination of user profiles, personalized learning trajectories, or early dropout indicators and alerts, among others. This paper presents the application of federated learning techniques to a well-known learning analytics problem: student dropout prediction. The experiments allow us to conclude that the proposed solutions achieve comparable results from the performance point of view with the centralized versions, avoiding the concentration of all the data in a single place for training the models.
dc.description.sponsorship.none.fl_txt_mv Esta investigación fue financiada por la Agencia Nacional de Innovación e Investigación (ANII) Uruguay, Número de Subvención FMV_3_2020_1_162910.
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dc.identifier.citation.es.fl_str_mv Fachola, C., Tornaría, A., Bermolen, P. y otros. "Federated learning for data analytics in education". Data. [en línea]. 2023, vol. 8, no 2, pp. 1-16. DOI: 10.3390/data8020043
dc.identifier.doi.none.fl_str_mv 10.3390/data8020043
dc.identifier.issn.none.fl_str_mv 2306-5729
dc.identifier.uri.none.fl_str_mv https://www.mdpi.com/2306-5729/8/2/43
https://hdl.handle.net/20.500.12008/39851
dc.language.iso.none.fl_str_mv en
eng
dc.publisher.es.fl_str_mv MDPI
dc.relation.ispartof.es.fl_str_mv Data, vol. 8, no 2, feb. 2023, pp. 1-16.
dc.rights.license.none.fl_str_mv Licencia Creative Commons Atribución (CC - By 4.0)
dc.rights.none.fl_str_mv info:eu-repo/semantics/openAccess
dc.source.none.fl_str_mv reponame:COLIBRI
instname:Universidad de la República
instacron:Universidad de la República
dc.subject.es.fl_str_mv Federated learning
Learning analytics
dc.title.none.fl_str_mv Federated learning for data analytics in education
dc.type.es.fl_str_mv Artículo
dc.type.none.fl_str_mv info:eu-repo/semantics/article
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description Federated learning techniques aim to train and build machine learning models based on distributed datasets across multiple devices while avoiding data leakage. The main idea is to perform training on remote devices or isolated data centers without transferring data to centralized repositories, thus mitigating privacy risks. Data analytics in education, in particular learning analytics, is a promising scenario to apply this approach to address the legal and ethical issues related to processing sensitive data. Indeed, given the nature of the data to be studied (personal data, educational outcomes, and data concerning minors), it is essential to ensure that the conduct of these studies and the publication of the results provide the necessary guarantees to protect the privacy of the individuals involved and the protection of their data. In addition, the application of quantitative techniques based on the exploitation of data on the use of educational platforms, student performance, use of devices, etc., can account for educational problems such as the determination of user profiles, personalized learning trajectories, or early dropout indicators and alerts, among others. This paper presents the application of federated learning techniques to a well-known learning analytics problem: student dropout prediction. The experiments allow us to conclude that the proposed solutions achieve comparable results from the performance point of view with the centralized versions, avoiding the concentration of all the data in a single place for training the models.
eu_rights_str_mv openAccess
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identifier_str_mv Fachola, C., Tornaría, A., Bermolen, P. y otros. "Federated learning for data analytics in education". Data. [en línea]. 2023, vol. 8, no 2, pp. 1-16. DOI: 10.3390/data8020043
2306-5729
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repository.mail.fl_str_mv mabel.seroubian@seciu.edu.uy
repository.name.fl_str_mv COLIBRI - Universidad de la República
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rights_invalid_str_mv Licencia Creative Commons Atribución (CC - By 4.0)
spelling Fachola Christian, Universidad de la República (Uruguay). Facultad de Ingeniería.Tornaría Agustín, Universidad de la República (Uruguay). Facultad de Ingeniería.Bermolen Paola, Universidad de la República (Uruguay). Facultad de Ingeniería.Capdehourat Germán, Universidad de la República (Uruguay). Facultad de Ingeniería.Etcheverry Lorena, Universidad de la República (Uruguay). Facultad de Ingeniería.Fariello María Inés, Universidad de la República (Uruguay). Facultad de Ingeniería.2023-09-08T18:03:02Z2023-09-08T18:03:02Z2023Fachola, C., Tornaría, A., Bermolen, P. y otros. "Federated learning for data analytics in education". Data. [en línea]. 2023, vol. 8, no 2, pp. 1-16. DOI: 10.3390/data80200432306-5729https://www.mdpi.com/2306-5729/8/2/43https://hdl.handle.net/20.500.12008/3985110.3390/data8020043Federated learning techniques aim to train and build machine learning models based on distributed datasets across multiple devices while avoiding data leakage. The main idea is to perform training on remote devices or isolated data centers without transferring data to centralized repositories, thus mitigating privacy risks. Data analytics in education, in particular learning analytics, is a promising scenario to apply this approach to address the legal and ethical issues related to processing sensitive data. Indeed, given the nature of the data to be studied (personal data, educational outcomes, and data concerning minors), it is essential to ensure that the conduct of these studies and the publication of the results provide the necessary guarantees to protect the privacy of the individuals involved and the protection of their data. In addition, the application of quantitative techniques based on the exploitation of data on the use of educational platforms, student performance, use of devices, etc., can account for educational problems such as the determination of user profiles, personalized learning trajectories, or early dropout indicators and alerts, among others. This paper presents the application of federated learning techniques to a well-known learning analytics problem: student dropout prediction. The experiments allow us to conclude that the proposed solutions achieve comparable results from the performance point of view with the centralized versions, avoiding the concentration of all the data in a single place for training the models.Submitted by Ribeiro Jorge (jribeiro@fing.edu.uy) on 2023-09-07T22:41:14Z No. of bitstreams: 2 license_rdf: 19875 bytes, checksum: 9fdbed07f52437945402c4e70fa4773e (MD5) FTBCEF23.pdf: 1610856 bytes, checksum: 2c9792c7eb45ac056fc355b9d46e0f9e (MD5)Approved for entry into archive by Machado Jimena (jmachado@fing.edu.uy) on 2023-09-08T17:42:15Z (GMT) No. of bitstreams: 2 license_rdf: 19875 bytes, checksum: 9fdbed07f52437945402c4e70fa4773e (MD5) FTBCEF23.pdf: 1610856 bytes, checksum: 2c9792c7eb45ac056fc355b9d46e0f9e (MD5)Made available in DSpace by Luna Fabiana (fabiana.luna@seciu.edu.uy) on 2023-09-08T18:03:02Z (GMT). No. of bitstreams: 2 license_rdf: 19875 bytes, checksum: 9fdbed07f52437945402c4e70fa4773e (MD5) FTBCEF23.pdf: 1610856 bytes, checksum: 2c9792c7eb45ac056fc355b9d46e0f9e (MD5) Previous issue date: 2023Esta investigación fue financiada por la Agencia Nacional de Innovación e Investigación (ANII) Uruguay, Número de Subvención FMV_3_2020_1_162910.16 p.application/pdfenengMDPIData, vol. 8, no 2, feb. 2023, pp. 1-16.Las obras depositadas en el Repositorio se rigen por la Ordenanza de los Derechos de la Propiedad Intelectual de la Universidad de la República.(Res. Nº 91 de C.D.C. de 8/III/1994 – D.O. 7/IV/1994) y por la Ordenanza del Repositorio Abierto de la Universidad de la República (Res. 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- Universidad de la Repúblicafalse
spellingShingle Federated learning for data analytics in education
Fachola, Christian
Federated learning
Learning analytics
status_str publishedVersion
title Federated learning for data analytics in education
title_full Federated learning for data analytics in education
title_fullStr Federated learning for data analytics in education
title_full_unstemmed Federated learning for data analytics in education
title_short Federated learning for data analytics in education
title_sort Federated learning for data analytics in education
topic Federated learning
Learning analytics
url https://www.mdpi.com/2306-5729/8/2/43
https://hdl.handle.net/20.500.12008/39851