2021
DOI: 10.15388/infedu.2021.09
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Active Methodology, Educational Data Mining and Learning Analytics: A Systematic Mapping Study

Abstract: Distance Learning has enabled educational practices based on digital platforms, generating massive amounts of data. Several initiatives use this data to identify dropout contexts, mainly providing teacher support about student behavior. Approaches such as Active Methodologies are known as having good potential to involve and motivate students. This article presents a systematic mapping aiming to identify current Educational Data Mining and Learning Analytics methods. Besides, we identify Active Methodologies' … Show more

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Cited by 21 publications
(19 citation statements)
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“…Future work will explore the use of Context Histories to organize the data produced during the workshops, allowing the use of these data to include intelligence in patient care environments. In this sense, the project will explore advanced data analysis strategies, such as pattern analysis [62], context prediction [63], learning analytics [64,65], and similarity analysis [66,67]. These strategies for handling context histories will be applied in the analysis of project data, mainly enabling prediction, personalization and content recommendation to improve the user experience.…”
Section: Final Remarksmentioning
confidence: 99%
“…Future work will explore the use of Context Histories to organize the data produced during the workshops, allowing the use of these data to include intelligence in patient care environments. In this sense, the project will explore advanced data analysis strategies, such as pattern analysis [62], context prediction [63], learning analytics [64,65], and similarity analysis [66,67]. These strategies for handling context histories will be applied in the analysis of project data, mainly enabling prediction, personalization and content recommendation to improve the user experience.…”
Section: Final Remarksmentioning
confidence: 99%
“…This kind of data organization allows the exploration of advanced strategies for data analysis, such as profile management [44][45][46][47][48], pattern analysis [49], context prediction [50], and similarity analysis [51,52]. All these strategies allow the use of Learning Analytics [53,54]. In this scenario, ubiquitous computing and consequently ubiquitous learning encourage the collaborative development of content and knowledge [55,56], allowing a strategic platform for the use of open source software both for its development and for the development of other technological platforms based on open-source strategies.…”
Section: Context-aware Ubiquitous Learningmentioning
confidence: 99%
“…This kind of data organization allows the exploration of advance strategies to data analysis, such as, profile management [43], [44], [45], [46], [47], pattern analysis [48], context prediction [49] and similarity analysis [50], [51]. All these strategies allowed the use of Learning Analytics [52], [53]. In this scenario, Ubiquitous computing and consequently ubiquitous learning encourage the collaborative development of contents and knowledge [54], [55], allowing a strategic platform for the use of open source software both for its development and for the development of other technological platforms based on open-source strategies.…”
Section: Context-aware Ubiquitous Learningmentioning
confidence: 99%