scholarly journals Perspectives on the Challenges of Generalizability, Transparency and Ethics in Predictive Learning Analytics

2021 ◽  
pp. 100060
Author(s):  
Anuradha Mathrani ◽  
Teo Susnjak ◽  
Gomathy Ramaswami ◽  
Andre Barczak
2020 ◽  
Vol 45 ◽  
pp. 100725 ◽  
Author(s):  
Christothea Herodotou ◽  
Bart Rienties ◽  
Martin Hlosta ◽  
Avinash Boroowa ◽  
Chrysoula Mangafa ◽  
...  

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.


Predictive learning analytics (PLA) are the current trend to support learning processes. One of the main issues in education particularly in higher education (HE) is high numbers of dropout. There are little evidences being identified the variables contributing toward dropout during study period. The dropout are the major challenges of educational institutions as it concerns in the education cost and policy-making communities. The paper presents a data preparation process for student dropout in Duta Bangsa University. The number of students dropout in Duta Bangsa University are in high alarm for both management and also educator in Duta Bangsa. Preventing educational dropout are the major challenges to Duta Bangsa University. Data preparation is an important step in PLA processes, the main objective is to reduce noise and increase the accuracy and consistency of data before PLA executed. The data preparation on this paper consist of four steps: (1) Data Cleaning, (2) Data Integration, (3) Data Reduction, and (4) Data Transformation. The results of this study are accurate and consistent historical dropout data Duta Bangsa University. Furthermore, this paper highlights open challenges for future research in the area of PLA student dropout


2021 ◽  
pp. 104285
Author(s):  
Christothea Herodotou ◽  
Claire Maguire ◽  
Nicola D. Mcdowell ◽  
Martin Hlosta ◽  
Avinash Boroowa

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

Author(s):  
Madhumitha Shridharan ◽  
Ashley Willingham ◽  
Jonathan Spencer ◽  
Tsung-Yen Yang ◽  
Christopher Brinton

Sign in / Sign up

Export Citation Format

Share Document