Predicting Undergraduate Students Success using Logistic Regression technique - PowerPoint PPT Presentation

1 / 15
About This Presentation
Title:

Predicting Undergraduate Students Success using Logistic Regression technique

Description:

Predicting Undergraduate Students Success using Logistic Regression technique Apichai Trangansri, Luddawan Meeanan, Settachai Chaisanit and Anongnart Srivihok – PowerPoint PPT presentation

Number of Views:72
Avg rating:3.0/5.0
Slides: 16
Provided by: art5165
Category:

less

Transcript and Presenter's Notes

Title: Predicting Undergraduate Students Success using Logistic Regression technique


1
Predicting Undergraduate Students Success using
Logistic Regression technique
  • Apichai Trangansri, Luddawan Meeanan, Settachai
    Chaisanit and
  • Anongnart Srivihok
  • Faculty of Information Technology, Sripatum
    University Chonburi Campus,
  • Thailand

2
Outline
3
Introduction
  • The concept of Education
  • Predictive model
  • The factors for Predictive

4
Introduction
  • The aim of this study was to predictive model for
    undergraduate students success. It provides a
    manageable structure for the administration
    of admission of new students and learning
    management in the institution.
    Moreover, the predictive model creating
    knowledge and strategies to improve
    teaching and learning management in
    Thailand.

5
The Objective
6
Population and Dataset
  • Population of this studied was comprised of
  • The populations are undergraduate students at
    Sripatum University Chonburi Campus, Thailand.
  • Dataset
  • 3,719 dataset

7
Literature Review
  • Forecasting Techniques
  • Forecasting techniques are typically broken
    into the categories of time series, regression,
    and subjective techniques.
  • Logistic Regression
  • Logistic Regression analysis is used for
    prediction of the probability of occurrence of an
    event by fitting data to a logit function
    logistic curve.

8
Logistic Regression
9
Methodology
  • The methodology of this study comprise of the A
    logistic regression model was built using data
    from Sripatum University Chonburi Campus,
    Thailand. The applicants from the 2001-2011
    acadamic years.

10
Methodology
  • Datasets were obtained from the Faculty of
    Business Administration, Faculty of
    Accounting and Faculty of Information
    Technology. The sample group of this study was
    3,719 dataset. This research has been
    divided into 3 classes and 9 variables.

11
Methodology
12
Results
13
Results
  • The prediction model divided by faculty showed
    that
  • Faculty of Business Administration GPA
    increased by one unit, the students has
    opportunity to graduated 81.5 percent.
  • Faculty of Accounting GPA increased by one unit,
    the students has opportunity to
    graduated 64.3 percent.
  • Faculty of Information Technology GPA
    increased by one unit, the students has
    opportunity to graduated 80.8 percent.

14
Conclusion
  • This research applied of data mining technique
    for generate Predictive Modeling of undergraduate
    students success. The research results
    supported the idea that the ways in which student
    success can be predicted in conventional
    and education.
  • Therefore, A logistic regression model was built
    using data on the applicants from the
    2001-2011 acadamic years at Sripatum University
    Chonburi Campus, Thailand. The result showed that
    the relationship of variables showed that the
    data field major, GPA, age and gender are
    variables that affect the student succes in
    significant at 0.05.
  • However, the benefits of predictive model for
    undergraduate students success. It provides a
    manageable structure for the administration of
    admission of new students and learning
    management in the institution. Moreover, the
    predictive model creating knowledge and
    sstrategies to improve teaching and learning
    management in Thailand.

15
Thank you
Write a Comment
User Comments (0)
About PowerShow.com