Recommendation of Data Mining Technique in Higher Education Prof. Priya Thakare Guide
Journal: International Journal of Computational Engineering Research(IJCER) (Vol.5, No. 3)Publication Date: 2015-03-30
Authors : Ajinkya Kunjir Poonam Pardeshi Shrinik Doshi Karan Naik;
Page : 29-34
Keywords : Data mining; Higher education; Clustering; Decision tree; neural network; classification; prediction; association rule analysis;
Abstract
In this paper we will discuss about the problem that are faced by higher education institutions. One of the biggest challenges that higher education faces today is predicting the right path of students. Institutions would like to know, which students will enroll in which course, and which students will need more assistance in particular subject and what efforts should be taken for weak students. Also some time management needs more information about student like their overall result, interest in co-curricular and extra-curricular activities and about the success of new offered courses. One way to effectively address the challenges for improving the quality of students and education is to provide new knowledge related to the educational processes and entities to the system. This knowledge can be extracted from historical data that reside in the educational organization's databases using the techniques of data mining technology. If data mining techniques such as clustering, decision tree, association, classification and prediction can be applied to higher education processes, it can definitely help improve students' overall performance, their life cycle management, selection of course and predict their dropout rate.
Other Latest Articles
- Recommendation of Data Mining Technique in Higher Education Prof. Priya Thakare Guide
- Reuse Options of Reclaimed Waste Water in Chennai City
- On an Optimal control Problem for Parabolic Equations
- PECULIARITIES OF STRUCTURAL DISORDERS OF THE ERYTHROCYTE MEMBRANE IN PATIENTS WITH HYPERTENSION ASSOCIATED WITH TYPE 2 DIABETES
- Efficient Data Distribution in CDBMS based on Location and User Information for Real Time Applications
Last modified: 2015-05-15 18:45:10