Modelling student dropout using adaboost and survival analysis / Mikayla Alexis D. Sagun [and three others].

Contributor(s): Material type: TextTextPublication details: Quezon City : U.P. Engineering Research and Development, Inc.,Description: pages 75-98 ; tables, color figuresISSN:
  • 0117-5564
Subject(s): Online resources: In: Philippine Engineering Journal Volume 42, Number 2 (December 2021)Summary: The average graduation rate of UPD COE freshmen admitted between 2009 and 2013 is 66.89%. The UPD COE graduation rate is quite low compared to other schools, indicating that it is important to investigate the dropout rates of students as well. Existing studies made use of several different models in order to predict student dropout. These studies made use of both pre-enrollment data and data on student performance per semester. Out of the different models used, the AdaBoost model and the Coxmodels consistently performed well. For this study, the AdaBoost model and time-varying Cox model were used to predict whether a student drops out, predict when a student will dropout, and analyze the features that lead to student dropout. Hazard ratios from the Cox model allow us to know whether the features increase or decrease risk of dropout. Pre-enrollment data and post-enrollment data was used to analyze student dropout. Higher number of semesters of absence without leave increase the risk while highschool GWA and getting accepted in the student's first or second choice degree program decrease the risk of dropout. These features were found to be significant factors that affect dropout risk for both 4-Year and 5-Year programs. Of the two models, the AdaBoost model performed better at predicting student dropout and drop time. The results of the models can be used to help identify at-risk students as early as possible and guide them with regards to their specific needs..
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Materials specified Status Date due Barcode
Continuing Resources Continuing Resources NU Clark Journals Periodicals Available

Includes appendices (pages 96-98).

Includes bibliographical references (page 95).

The average graduation rate of UPD COE freshmen admitted between 2009 and 2013 is 66.89%. The UPD COE graduation rate is quite low compared to other schools, indicating that it is important to investigate the dropout rates of students as well. Existing studies made use of several different models in order to predict student dropout. These studies made use of both pre-enrollment data and data on student performance per semester. Out of the different models used, the AdaBoost model and the Coxmodels consistently performed well. For this study, the AdaBoost model and time-varying Cox model were used to predict whether a student drops out, predict when a student will dropout, and analyze the features that lead to student dropout. Hazard ratios from the Cox model allow us to know whether the features increase or decrease risk of dropout. Pre-enrollment data and post-enrollment data was used to analyze student dropout. Higher number of semesters of absence without leave increase the risk while highschool GWA and getting accepted in the student's first or second choice degree program decrease the risk of dropout. These features were found to be significant factors that affect dropout risk for both 4-Year and 5-Year programs. Of the two models, the AdaBoost model performed better at predicting student dropout and drop time. The results of the models can be used to help identify at-risk students as early as possible and guide them with regards to their specific needs..

There are no comments on this title.

to post a comment.

© 2024 NU LRC CLARK. All rights reserved. Privacy Policy I Powered by: KOHA