Open Access Open Access  Restricted Access Subscription Access

Predicting Teachers’ ICT Competence in a Philippine University Using J48 Algorithm


Affiliations
1 Information Technology and Computer Education Department, Leyte Normal University, 6500 Leyte, Philippines
 

Objectives: The advent of information technology causes a significant impact on pedagogy and using ICT technologies in school-related activities. With this argument, determining the teacher’s ICT competence is expected to yield a better or positive impact on the learners and the performance of the teachers itself, however, no model was developed in predicting teachers ICT competence. In line with this, it is empirical to study and develop a model that will help the university in predicting teacher’s ICT competence. Methods: Data mining approach utilizing J48 algorithm was applied in this paper to create a model suitable for the actual teachers’ characteristics in the University. Moreover, Cross-validation technique was used to validate the dataset to have an optimum and acceptable model and generating the Receiving Operating Characteristics Curve (ROC) Area under ROC Curve technique. Findings: Decision tree model and decision rule for classification were created. Additionally, there were 92.78% correctly classified with an AUC weighted mean of 92.4%. Also, the model has very high acceptability and accuracy in predicting Teacher’s ICT Competence. However, it also revealed that many teachers still need more exposure in utilizing ICT technologies in pedagogy and any school-related activities. Application/Improvements: The result of this study can be a basis for developing software that will automatically categorize or classify the Teacher’s ICT competence. For more improvement of this paper and the model, it is suggested to add additional parameters to have more factors involved in predicting Teacher’s ICT competence.

Keywords

Blended Learning, Decision Tree, ICT Competency, ICT Domain, ICT Pedagogy, J48 Algorithm, Machine Learning
User

Abstract Views: 183

PDF Views: 0




  • Predicting Teachers’ ICT Competence in a Philippine University Using J48 Algorithm

Abstract Views: 183  |  PDF Views: 0

Authors

Las Johansen B. Caluza
Information Technology and Computer Education Department, Leyte Normal University, 6500 Leyte, Philippines

Abstract


Objectives: The advent of information technology causes a significant impact on pedagogy and using ICT technologies in school-related activities. With this argument, determining the teacher’s ICT competence is expected to yield a better or positive impact on the learners and the performance of the teachers itself, however, no model was developed in predicting teachers ICT competence. In line with this, it is empirical to study and develop a model that will help the university in predicting teacher’s ICT competence. Methods: Data mining approach utilizing J48 algorithm was applied in this paper to create a model suitable for the actual teachers’ characteristics in the University. Moreover, Cross-validation technique was used to validate the dataset to have an optimum and acceptable model and generating the Receiving Operating Characteristics Curve (ROC) Area under ROC Curve technique. Findings: Decision tree model and decision rule for classification were created. Additionally, there were 92.78% correctly classified with an AUC weighted mean of 92.4%. Also, the model has very high acceptability and accuracy in predicting Teacher’s ICT Competence. However, it also revealed that many teachers still need more exposure in utilizing ICT technologies in pedagogy and any school-related activities. Application/Improvements: The result of this study can be a basis for developing software that will automatically categorize or classify the Teacher’s ICT competence. For more improvement of this paper and the model, it is suggested to add additional parameters to have more factors involved in predicting Teacher’s ICT competence.

Keywords


Blended Learning, Decision Tree, ICT Competency, ICT Domain, ICT Pedagogy, J48 Algorithm, Machine Learning



DOI: https://doi.org/10.17485/ijst%2F2018%2Fv11i7%2F170440