AI Lab

AI Lab

Share

08/10/2022

We announce the acceptance of our manuscript entitled "Early prediction of learners at risk in self-paced education: A neural
network approach " in the prestigious Elsevier journal of "Expert Systems with Applications" IF: 8.665.

This work is done in collaboration with colleagues from Monash University Australia, KAU, and the MMU United Kingdom, led by Dr. Hajra Waheed from ITU and supervised by Dr. Saeed Ul Hassan.

This research addresses the demands of modern education and increase flexibility, many higher education institutions are
considering self-paced education programs. However, student retention is yet a widely recognized challenge faced in self-paced education. While many studies have examined the potential of the use of data about student interaction with learning technologies to predict student success, studies that focus on self-paced education are scarce. To address this gap in the literature, this paper reports on the findings of a study that has investigated the performance of a well-known deep learning technique i.e., Long Short-term Memory (LSTM), in the prediction of students at risk of failing a course offered in a self-paced mode of online education. The study has utilized a freely accessible Open University Learning Analytics Dataset comprising 22,437 students with 69% pass, and 31% failed instances. The deep LSTM shows the highest predictive power to classify between pass and fail students, compared to all other alternatives by achieving an accuracy of 84.57 %, precision of 82.24 % and recall of 79.43%. Interestingly, with only first five weeks of course activity log data used for training, the receiver operating characteristic based diagnostic accuracy of the LSTM algorithm is achieved up to 71 %, that outperforms almost all other conventional algorithms - despite trained on the complete dataset collected for the entire duration of the course i.e. up to 38 weeks. Furthermore, this study has also employed a shapely additive explanation model to identify the most important predictors of student retention, e.g., assessment submission and attempted quizzes.
This approach is essential in order to increase the interpretability of deep learning techniques and, thus, increase their potential to generate actionable insights.

08/09/2022

Director of AI Lab, Dr. Saeed Ul Hassan's proposal for innovation in science communications using AI wins the 2022 award.

http://ow.ly/yCq850KCwkK

21/08/2022

ITU's 3rd convocation, graduating team of AI Lab supervised by Dr. Saeed Ul Hassan.

3 PhD students and more than 10 MS students received their degrees at the convocation.

25/02/2021

Join us LIVE for a lively discussion with Dr. Saeed ul Hassan on 'Stepping into AI enabled Research Assessment using Social Media'.

The live session is the first session of a newly initiated series by ITU Lincoln Corner: ‘Changing Tomorrow: Pakistani Academics Shaping the World’.

The primary goal of the series is to showcase Pakistani academics doing cutting-edge research and shaping a new world in the process.

Dr. Saeed ul Hassan is Chairperson, Department of Computer Science and Director, Artificial Intelligence (AI) Lab at Information Technology University.
4:00 PM; Friday, February 26, 2021

Bilal H.Qureshi Saeed Ul Hassan Wishal Farid

Want your university to be the top-listed University in Lahore?
Click here to claim your Sponsored Listing.

Telephone

Address


Information Technology University/Punjab 6th Floor, Arfa Software Technology Park, 346-B, Ferozepur Road
Lahore
54770