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A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations

Communicating in social and public environments are considered professional skills that can strongly influence career development. Therefore, it is important to proper train and evaluate students in this kind of abilities so that they can better interact in their professional relationships, during t...

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Autores principales: Vieira, Felipe, Cechinel, Cristian, Ramos, Vinicius, Riquelme, Fabián, Noel, Rene, Villarroel, Rodolfo, Cornide-Reyes, Hector, Munoz, Roberto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7926817/
https://www.ncbi.nlm.nih.gov/pubmed/33671797
http://dx.doi.org/10.3390/s21041525
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author Vieira, Felipe
Cechinel, Cristian
Ramos, Vinicius
Riquelme, Fabián
Noel, Rene
Villarroel, Rodolfo
Cornide-Reyes, Hector
Munoz, Roberto
author_facet Vieira, Felipe
Cechinel, Cristian
Ramos, Vinicius
Riquelme, Fabián
Noel, Rene
Villarroel, Rodolfo
Cornide-Reyes, Hector
Munoz, Roberto
author_sort Vieira, Felipe
collection PubMed
description Communicating in social and public environments are considered professional skills that can strongly influence career development. Therefore, it is important to proper train and evaluate students in this kind of abilities so that they can better interact in their professional relationships, during the resolution of problems, negotiations and conflict management. This is a complex problem as it involves corporal analysis and the assessment of aspects that until recently were almost impossible to quantitatively measure. Nowadays, a number of new technologies and sensors have being developed for the capture of different kinds of contextual and personal information, but these technologies were not yet fully integrated inside learning settings. In this context, this paper presents a framework to facilitate the analysis and detection of patterns of students in oral presentations. Four steps are proposed for the given framework: Data collection, Statistical Analysis, Clustering, and Sequential Pattern Mining. Data Collection step is responsible for the collection of students interactions during presentations and the arrangement of data for further analysis. Statistical Analysis provides a general understanding of the data collected by showing the differences and similarities of the presentations along the semester. The Clustering stage segments students into groups according to well-defined attributes helping to observe different corporal patterns of the students. Finally, Sequential Pattern Mining step complements the previous stages allowing the identification of sequential patterns of postures in the different groups. The framework was tested in a case study with data collected from 222 freshman students of Computer Engineering (CE) course at three different times during two different years. The analysis made it possible to segment the presenters into three distinct groups according to their corporal postures. The statistical analysis helped to assess how the postures of the students evolved throughout each year. The sequential pattern mining provided a complementary perspective for data evaluation and helped to observe the most frequent postural sequences of the students. Results show the framework could be used as a guidance to provide students automated feedback throughout their presentations and can serve as background information for future comparisons of students presentations from different undergraduate courses.
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spelling pubmed-79268172021-03-04 A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations Vieira, Felipe Cechinel, Cristian Ramos, Vinicius Riquelme, Fabián Noel, Rene Villarroel, Rodolfo Cornide-Reyes, Hector Munoz, Roberto Sensors (Basel) Article Communicating in social and public environments are considered professional skills that can strongly influence career development. Therefore, it is important to proper train and evaluate students in this kind of abilities so that they can better interact in their professional relationships, during the resolution of problems, negotiations and conflict management. This is a complex problem as it involves corporal analysis and the assessment of aspects that until recently were almost impossible to quantitatively measure. Nowadays, a number of new technologies and sensors have being developed for the capture of different kinds of contextual and personal information, but these technologies were not yet fully integrated inside learning settings. In this context, this paper presents a framework to facilitate the analysis and detection of patterns of students in oral presentations. Four steps are proposed for the given framework: Data collection, Statistical Analysis, Clustering, and Sequential Pattern Mining. Data Collection step is responsible for the collection of students interactions during presentations and the arrangement of data for further analysis. Statistical Analysis provides a general understanding of the data collected by showing the differences and similarities of the presentations along the semester. The Clustering stage segments students into groups according to well-defined attributes helping to observe different corporal patterns of the students. Finally, Sequential Pattern Mining step complements the previous stages allowing the identification of sequential patterns of postures in the different groups. The framework was tested in a case study with data collected from 222 freshman students of Computer Engineering (CE) course at three different times during two different years. The analysis made it possible to segment the presenters into three distinct groups according to their corporal postures. The statistical analysis helped to assess how the postures of the students evolved throughout each year. The sequential pattern mining provided a complementary perspective for data evaluation and helped to observe the most frequent postural sequences of the students. Results show the framework could be used as a guidance to provide students automated feedback throughout their presentations and can serve as background information for future comparisons of students presentations from different undergraduate courses. MDPI 2021-02-22 /pmc/articles/PMC7926817/ /pubmed/33671797 http://dx.doi.org/10.3390/s21041525 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Vieira, Felipe
Cechinel, Cristian
Ramos, Vinicius
Riquelme, Fabián
Noel, Rene
Villarroel, Rodolfo
Cornide-Reyes, Hector
Munoz, Roberto
A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title_full A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title_fullStr A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title_full_unstemmed A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title_short A Learning Analytics Framework to Analyze Corporal Postures in Students Presentations
title_sort learning analytics framework to analyze corporal postures in students presentations
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7926817/
https://www.ncbi.nlm.nih.gov/pubmed/33671797
http://dx.doi.org/10.3390/s21041525
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