scholarly journals A large-scale implementation of predictive learning analytics in higher education: the teachers’ role and perspective

2019 ◽  
Vol 67 (5) ◽  
pp. 1273-1306 ◽  
Author(s):  
Christothea Herodotou ◽  
Bart Rienties ◽  
Avinash Boroowa ◽  
Zdenek Zdrahal ◽  
Martin Hlosta
2019 ◽  
Vol 6 (1) ◽  
Author(s):  
Christothea Herodotou ◽  
Bart Rienties ◽  
Barry Verdin ◽  
Avinash Boroowa

Predictive Learning Analytics (PLA) aim to improve learning by identifying students at risk of failing their studies. Yet, little is known about how best to integrate and scaffold PLA initiatives into higher education institutions. Towards this end, it becomes essential to capture and analyze the perceptions of relevant educational stakeholders (i.e., managers, teachers, students) about PLA. This paper presents an “at scale” implementation of PLA at a distance learning higher education institution and details, in particular, the perspectives of 20 educational managers involved in the implementation. It concludes with a set of recommendations about how best to adopt and apply large-scale PLA initiatives in higher education.


2021 ◽  
Vol 38 (2) ◽  
pp. 243-257
Author(s):  
Paul Joseph-Richard ◽  
James Uhomoibhi ◽  
Andrew Jaffrey

PurposeThe aims of this study are to examine affective responses of university students when viewing their own predictive learning analytics (PLA) dashboards, and to analyse how those responses are perceived to affect their self-regulated learning behaviour.Design/methodology/approachA total of 42 Northern Irish students were shown their own predicted status of academic achievement on a dashboard. A list of emotions along with definitions was provided and the respondents were instructed to verbalise them during the experience. Post-hoc walk-through conversations with participants further clarified their responses. Content analysis methods were used to categorise response patterns.FindingsThere is a significant variation in ways students respond to the predictions: they were curious and motivated, comforted and sceptical, confused and fearful and not interested and doubting the accuracy of predictions. The authors show that not all PLA-triggered affective states motivate students to act in desirable and productive ways.Research limitations/implicationsThis small-scale exploratory study was conducted in one higher education institution with a relatively small sample of students in one discipline. In addition to the many different categories of students included in the study, specific efforts were made to include “at-risk” students. However, none responded. A larger sample from a multi-disciplinary background that includes those who are categorised as “at-risk” could further enhance the understanding.Practical implicationsThe authors provide mixed evidence for students' openness to learn from predictive learning analytics scores. The implications of our study are not straightforward, except to proceed with caution, valuing benefits while ensuring that students' emotional well-being is protected through a mindful implementation of PLA systems.Social implicationsUnderstanding students' affect responses contributes to the quality of student support in higher education institutions. In the current era on online learning and increasing adaptation to living and learning online, the findings allow for the development of appropriate strategies for implementing affect-aware predictive learning analytics (PLA) systems.Originality/valueThe current study is unique in its research context, and in its examination of immediate affective states experienced by students who viewed their predicted scores, based on their own dynamic learning data, in their home institution. It brings out the complexities involved in implementing student-facing PLA dashboards in higher education institutions.


Author(s):  
Samira ElAtia ◽  
Donald Ipperciel

In this chapter, the authors propose an overview on the use of learning analytics (LA) and educational data mining (EDM) in addressing issues related to its uses and applications in higher education. They aim to provide meaningful and substantial answers to how both LA and EDM can advance higher education from a large scale, big data educational research perspective. They present various tasks and applications that already exist in the field of EDM and LA in higher education. They categorize them based on their purposes, their uses, and their impact on various stakeholders. They conclude the chapter by critically analyzing various forecasts regarding the impact that EDM will have on future educational setting, especially in light of the current situation that shifted education worldwide into some form of eLearning models. They also discuss and raise issues regarding fundamentals consideration on ethics and privacy in using EDM and LA in higher education.


2019 ◽  
Vol 120 (3/4) ◽  
pp. 208-227 ◽  
Author(s):  
Ying Cui ◽  
Fu Chen ◽  
Ali Shiri ◽  
Yaqin Fan

Purpose Many higher education institutions are investigating the possibility of developing predictive student success models that use different sources of data available to identify students that might be at risk of failing a course or program. The purpose of this paper is to review the methodological components related to the predictive models that have been developed or currently implemented in learning analytics applications in higher education. Design/methodology/approach Literature review was completed in three stages. First, the authors conducted searches and collected related full-text documents using various search terms and keywords. Second, they developed inclusion and exclusion criteria to identify the most relevant citations for the purpose of the current review. Third, they reviewed each document from the final compiled bibliography and focused on identifying information that was needed to answer the research questions Findings In this review, the authors identify methodological strengths and weaknesses of current predictive learning analytics applications and provide the most up-to-date recommendations on predictive model development, use and evaluation. The review results can inform important future areas of research that could strengthen the development of predictive learning analytics for the purpose of generating valuable feedback to students to help them succeed in higher education. Originality/value This review provides an overview of the methodological considerations for researchers and practitioners who are planning to develop or currently in the process of developing predictive student success models in the context of higher education.


2018 ◽  
Vol 5 (3) ◽  
Author(s):  
Yi-Shan Tsai ◽  
Pedro Manuel Moreno-Marcos ◽  
Ioana Jivet ◽  
Maren Scheffel ◽  
Kairit Tammets ◽  
...  

This paper introduces a learning analytics policy and strategy framework developed by a cross-European research project team — SHEILA (Supporting Higher Education to Integrate Learning Analytics), based on interviews with 78 senior managers from 51 European higher education institutions across 16 countries. The framework was developed adapting the RAPID Outcome Mapping Approach (ROMA), which is designed to develop effective strategies and evidence-based policy in complex environments. This paper presents four case studies to illustrate the development process of the SHEILA framework and how it can be used iteratively to inform strategic planning and policy processes in real world environments, particularly for large-scale implementation in higher education contexts. To this end, the selected cases were analyzed at two stages, each a year apart, to investigate the progression of adoption approaches that were followed to solve existing challenges, and identify new challenges that could be addressed by following the SHEILA framework.


Author(s):  
Christothea Herodotou ◽  
Bart Rienties ◽  
Avinash Boroowa ◽  
Zdenek Zdrahal ◽  
Martin Hlosta ◽  
...  

2020 ◽  
Vol 60 (4) ◽  
pp. 612-622
Author(s):  
Rosina Lozano

The twenty-first century has seen a surge in scholarship on Latino educational history and a new nonbinary umbrella term, Latinx, that a younger generation prefers. Many of historian Victoria-María MacDonald's astute observations in 2001 presaged the growth of the field. Focus has increased on Spanish-surnamed teachers and discussions have grown about the Latino experience in higher education, especially around student activism on campus. Great strides are being made in studying the history of Spanish-speaking regions with long ties to the United States, either as colonies or as sites of large-scale immigration, including Puerto Rico, Cuba, and the Philippines. Historical inquiry into the place of Latinos in the US educational system has also developed in ways that MacDonald did not anticipate. The growth of the comparative race and ethnicity field in and of itself has encouraged cross-ethnic and cross-racial studies, which often also tie together larger themes of colonialism, language instruction, legal cases, and civil rights or activism.


2021 ◽  
pp. 234763112110498
Author(s):  
Parimala Veluvali ◽  
Jayesh Surisetti

Online education helped resume learning that had come to a momentary and uncertain pause with the onset of COVID-19 pandemic across the globe. Since then, learning in many educational institutions continued through synchronous and asynchronous modes, with teaching being undertaken remotely on digital platforms. In this large-scale migration towards online mode of curriculum delivery induced by the pandemic, the institutional learning management system (LMS) had a critical role to play in ensuring uninterrupted learning and student engagement. By drawing heavily from extant works, learnings from MOOC platforms, observations from the LMS applications in corporate training, the present article synthesis the extant literature on how the effective use of LMS can make the learning process interactive, student centric, catering to the needs of diverse learners in higher education.


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