Education content provider based on particular weaknesses of students: a unsupervised machine learning appro
Date
2023-09Publisher
Brac UniversityAuthor
Rahman, Shabab IntisharFariha, Tasnim Akter
Haque, Muhammad Nayeem Mubasshirul
Mohammad, Ammar
Ahmed, Shadman
Metadata
Show full item recordAbstract
To uncover underlying patterns in large datasets, a procedure called data mining is
often utilized. By analyzing data gathered through Online Learning (OL) systems,
data mining can be used to unearth hidden relationships between topics and trends
in student performance. Here in this paper, we show how data mining techniques
such as clustering and association rule algorithms can be used on historical data
to develop a unique recommendation system module. In our implementation, we
utilize historical data to generate association rules specifically for student test marks
below a threshold of 60%. By focusing on marks below this threshold, we aim to
identify and establish associations based on the patterns of weakness observed in the
past data. Additionally, we leverage K-means clustering to provide instructors with
visual representations of the generated associations. This strategy aids teachers in
better comprehending the information and associations produced by the algorithms.
K-means clustering helps visualize and organize the data in a way that makes it
easier for instructors to analyze and gain insights, enabling them to support the
verification of the relationship between topics. This can be a useful tool to deliver
better feedback to students as well as provide better insights to instructors when
developing their pedagogy. This paper further shows a prototype implementation
of the above-mentioned concepts to gain opinions and insights about the usability
and viability of the proposed system.