Abstract:
At this point attention on educational data mining methods have impact highly on predicting
academic performance as the increased higher education dropout rates especially in information
technology education has received huge attention in recent years due to the quality of higher
education has been a topic of debate for many years. There is a huge necessity of mining
educational data system and exact hidden knowledge to understand the factors affecting student
dropouts and to understand the patterns that can lead to predict student performance at the entrance
and improve and monitor performance of students enrolling in Information technology higher
education by building early warning indicators based on factors affecting to dropouts and manage
students drop out from the higher education. Data mining strategies have been utilized to
effectively extract new, conceivably imperative Knowledge and diverse data mining techniques,
for example, association, classification, clustering, prediction, sequential patterns, and decision
trees are being utilized by numerous sorts of research. Identification of relevant attributes which
affect to dropouts in ICT higher education is a leading concern in the field of education data mining
as there are no significant studies that can be applied to understand the complex-inter correlated
and distinct factors affecting to dropouts in ICT higher education Hence, the research has been
conducted to identify the complex-inter correlated and distinct factors affecting to dropouts in ICT
higher education. It is hypothesized that an experimental methodology can be adapted to generate
a database that includes relevant information for extracting knowledge. The raw data will be
preprocessed in terms of filling up missing values, transforming values in one form into another
and relevant attribute/ variable selection. Thereby select student records, which can be used for
classification prediction model construction. In constructing a classifier model different
classifying algorithms can be applied and in this study evaluation of different classification
algorithms is done to identify the most accurate algorithm. Finally, a predictive analyzing model
will be building for student profile analyzing using the identified algorithm. Then this
classification model will be used in developing an application to predict the students' dropouts.
The overall research will be designed using the WEKA data mining tool and using java WEKA
library for developing the application.
Citation:
Kumari, U.G.N. (2019). Predictive analysis of dropouts in information technology higher education [Master’s theses, University of Moratuwa]. Institutional Repository University of Moratuwa. http://dl.lib.mrt.ac.lk/handle/123/15957