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F. Diko 1 , Z.Alzoabi 1 , M. Alnoukari 2 1 Arab International University, Damascus, Syria.

Enhancing Education Quality Assurance Using Data Mining: Case Study: Arab International University Systems. F. Diko 1 , Z.Alzoabi 1 , M. Alnoukari 2 1 Arab International University, Damascus, Syria. 2 Arab Academy for Banking and Financial Sciences, Damascus, Syria. Plan .

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F. Diko 1 , Z.Alzoabi 1 , M. Alnoukari 2 1 Arab International University, Damascus, Syria.

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  1. Enhancing Education Quality Assurance Using Data Mining: Case Study: Arab International University Systems F. Diko 1 , Z.Alzoabi1, M. Alnoukari2 1 Arab International University, Damascus, Syria. 2 Arab Academy for Banking and Financial Sciences, Damascus, Syria

  2. Plan • Introduction • What is Quality Assurance in Higher Education? • How to achieve Quality? • Quality Assurance Automated System (QAAS) • Performance Indicators • QAAS Results • Applying Data Mining to Enhance Education Quality • Case Study: Arab International University • Conclusion and Future Works

  3. Introduction • Quality assurance has the focus of all higher education institutes since one decade. This has been forced by different forces such as: • Growing awareness of the need of quality assurance systems in different disciplines. • Pressure from government entities towards standardization. • Customer demand for better performance. • The need for more organizational efficiency and excellence

  4. Introduction (Cont.) • There was always some problems in automating quality concepts-specially in HE because: • First, the concept of quality assurance in educational systems is rather new and has not matured enough. • Second, the concept of quality assurance in educational systems seemed to be difficult to computerize. For example how can we computerize aspects related to assuring quality of the content of a program using information systems? How can we assure quality in the way teachers are teaching their classes with the help of information systems

  5. WhatQuality Assurance in Higher Education? all planned and systematic actions required to provide adequate confidence that students are receiving the content that enhances employability, receiving lectures in student-centered manner that enhances students’ skills, knowledge, and competences, and assessed fairly.

  6. How to Achieve Quality? • Identify goals of the study programs • Collect relevant data that helps in assessing the three pillars of higher education system. • Construct performance indicators that help in assessing every pillar. • Computerize data entry in order to achieve consistency, efficiency, and standardization.

  7. QAAS System • The system allows teachers to do the following: • Enter the study plan of a specific course with every chapter to be covered in every week or class. • Enter the text book used throughout the course. • Enter all references- including electronic- used for every chapter or topic to be covered in every chapter. • Enter the methodologies that will be used for every chapter. • Specify the outcomes of the course.

  8. QAAS System (Cont.) • In every class, the system allows the instructor to enter the following: • Attendance • Chapter to be covered in every class. • Methodology used: lecture, seminar, team work, field study etc.

  9. QAAS System (Cont.) • The system then provides the management with many reports such as: • Plan completion (how many chapters covered divided by the chapters planned). • Punctuality of teachers (the time the attendance is taken is recorded). • Performance of the students in the subject as compared to their general performance in the previous semesters (to be explained in the following sections). • Absence ratios. • Performance indicator of the teacher in terms of student feedback

  10. Performance Indicators

  11. Performance Indicators PI= (SF*(1-DR)) /(4- G.P.Adiff ) PI: Performance Indicator. SF: Student Feedback. DR: Drop Ratio.

  12. Results

  13. Results

  14. Results

  15. Results

  16. Applying Data Mining to Enhance Education Quality • Most of higher education procedures such as assessment, evaluation, and counseling require knowledge. • Knowledge can be extracted from huge educational data sets using data mining applications. • Data mining applications can help both instructors and students to improve the quality of education. • The main objective of using data mining in educational system is to improve learning (Romero and Ventura 2007).

  17. Applying Data Mining to Enhance Education Quality • These are some of the questions that can be answered and analyzed using data mining methods: • How can data mining techniques be used to predict next semester GPA for each student? • How can data mining techniques be used to identify the students likely to drop out? • How can data mining techniques be used to help in providing counseling for students in timely manner? • How can data mining techniques be used to identify students at risk of failures, in order to provide extra help? • How can data mining techniques be used to classify students’ results? • What type of courses will attract more students?

  18. Case Study: Arab International University • AIU is a new private university in Syria. • There was an urgent need to integrate data from all these sources into one data warehouse. • Data Sources are: • Academic data (registration, examination, enrollment, etc.). • Financial data (student fees, staff salaries, orders, sales, etc.). • Human Resources data (staff personal information). • QAAS data (student feedback, GPA differences, drop ratio, plan completion, industry feedback, etc). • The solution developed (by AIU developers) followed ASD-DM modelling based on ASD agile methodology (Alnoukari et al. 2008).

  19. Case Study: Arab International University AIU Data Mining System’s Reports

  20. Case Study: Arab International University AIU Data Mining System’s Reports

  21. Conclusion & Future Work • Building new performance indicators. • Building extra reports that can be generated by the system, such as alumni reports, and their reflection on the design of different courses, and student academic movement reports. • Putting the system into action at the faculty level with the appropriate security level to help the faculties taking the necessary correction actions. • Preparing the necessary QA procedures to control the work and documents.

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