Predicting lecturer’s performance using data mining techniques based on lecturer’s characteristics and historical student evaluation of lecturer : Islamic University-Gaza case study

Other Title(s)

توقع أداء المحاضر باستخدام تقنيات تنقيب البيانات استنادا إلى خصائص المحاضر و تقييمات الطلبة السابقة للمحاضر : الجامعة الإسلامية بغزة كحالة دراسية

Dissertant

al-Tahrawi, Muhammad Jamil Hasan

Thesis advisor

al-Attar, Ashraf Muhammad

Comitee Members

Radi, Muhammad Abd al-Latif
Awad Allah, Riwayah Fawzi

University

Islamic University

Faculty

Faculty of Information Technology

Department

Information Technology

University Country

Palestine (Gaza Strip)

Degree

Master

Degree Date

2016

English Abstract

One of the most expensive resources in the higher educational process is lecturers, so most of the educational institutes spend a lot of effort and consume the HR resources to allocate the best lecturer to their students.

Which will maximize the learning potential of the students according to the lecturer’s qualifications, skills and abilities.

Therefore, the challenge is how to predict lecturer’s performance based on lecturer characterstics ak2nd historical student assessments of previous lecturers.

Our approach uses data mining techniques to analyze existing data composed of lecturer academic and non-academic characteristics and predict prospective lecturer’s performance in order to support the decision-making in lecturer selection.

We use four datamining techniques: Decision tree, K-Nearest Neighbor, Multinomial Logistic Regression and Naïve Bayesian.

The models are trained and evaluated on a subset of the data.

The model with the highest prediction outcome is selected.

We used data belonging to the academic staff of Islamic University – Gaza (IUG) that taught in 11 semesters (from second semester 2011/2012 to summer semester 2014/2015).

The dataset contains an attribute for the overall evaluation result from the end-of-semester questionnaires routinely filled by students, and 28 attributes of lecturer characteristics.

The overall student questionnaire result is aggregated over all sections of a course that is taught by the lecturer in one semester.

Based on training and evaluation of the four techniques mentioned above, and if we suppose that the closest prediction of the true evaluation is true, we can say that the models is predicting the evaluation truly or far from true in one step as next: Multinomial Logistic Regression gave the highest accuracy of 5.68%.

Decision tree, K-Nearest Neighbor, and Naïve Bayesian gave accuracies of 5868%, 5.68%, and 5868%, respectively.

Main Subjects

Information Technology and Computer Science

No. of Pages

97

Table of Contents

Table of contents.

Abstract.

Abstract in Arabic.

Chapter One : Introduction.

Chapter Two : Background and state of the art.

Chapter Three : Related works.

Chapter Four : Proposed method and implementation.

Chapter Five : Results and discussion.

Chapter Six : Conclusion and future work.

References.

American Psychological Association (APA)

al-Tahrawi, Muhammad Jamil Hasan. (2016). Predicting lecturer’s performance using data mining techniques based on lecturer’s characteristics and historical student evaluation of lecturer : Islamic University-Gaza case study. (Master's theses Theses and Dissertations Master). Islamic University, Palestine (Gaza Strip)
https://search.emarefa.net/detail/BIM-735510

Modern Language Association (MLA)

al-Tahrawi, Muhammad Jamil Hasan. Predicting lecturer’s performance using data mining techniques based on lecturer’s characteristics and historical student evaluation of lecturer : Islamic University-Gaza case study. (Master's theses Theses and Dissertations Master). Islamic University. (2016).
https://search.emarefa.net/detail/BIM-735510

American Medical Association (AMA)

al-Tahrawi, Muhammad Jamil Hasan. (2016). Predicting lecturer’s performance using data mining techniques based on lecturer’s characteristics and historical student evaluation of lecturer : Islamic University-Gaza case study. (Master's theses Theses and Dissertations Master). Islamic University, Palestine (Gaza Strip)
https://search.emarefa.net/detail/BIM-735510

Language

English

Data Type

Arab Theses

Record ID

BIM-735510