A Fuzzy-Based Assessment Model for Faculty Performance Evaluation Mohammed Onimisi Yahaya College of Computer Sciences and Engineering King Fahd University of Petroleum and Mineral Dhahran 31261, Saudi Arabia February, 2011.
OUTLINE Introduction Introduction Existing assessment model Existing assessment model Background Background The Evaluation Model The Evaluation Model Results Results Conclusions Conclusions
Introduction (1) What is Assessment? What is Assessment? - placement - placement - - classification problem Why is Assessment required? Why is Assessment required? -required for faculty appraisal -school placement -school comparison and ranking - great role in monitoring and improving the performance of educational systems
Introduction (2) Fuzziness in Assessment -questionnaire often contains fuzzy statements such as -strong -competent - unsatisfactory - agree - strongly agree etc Question : How do you measure this ? - These terms are vague. Answer: Defuzzify
Background Zhu and Li (2009) presented a combination of fuzzy logic system and neural network model and applied it to teaching quality assessment, Nolan (1998) reported uses of scoring rubrics will help to standardize the grading. Kai et al (2005), investigated and presented the main properties of Fuzzy based assessment models as monotone output property
How Fuzzy Systems Work (1) Knowlegde base (rulebase) Fuzzification Decision making mechanism (Fuzzy reasoning) Defuzzification Figure 1. Fuzzy logic system
How Fuzzy Systems Work (2) Figure2 - The features of a membership function
How Fuzzy Systems Work (3) What is Fuzzy logic ? - simple way to arrive at a definite conclusion based upon vague, ambiguous, imprecise Fuzzification - transforming crisp values into grades of membership for linguistic terms Fuzzy rule base (knowledge base) - The rulebase contains the rules and forms Fuzzy Rule Evaluation (inferencing) - determine the firing strength of each rule Defuzzification -removing the vagueness
The evaluation model (1) S/NScaleRemark Strong (S) Competent (C) Marginal ( M ) Unsatisfactory (U) S/NScaleRemark poor Fair Good Excellent Table 2 : Teaching method and Presentation Evaluation Scale Table 1 : Performance evaluation scale
The evaluation model(2) No Criteria 1Organization of Lesson plan: organised progression from each activity to the next 2Use of class timing: Puntuality and use of class time 3Classroom management: control of Class room environment 4Subject Matter Expertise: Mastery of and currency in subject 5Teaching Methodologies (Pedagogy/Adragogy) Mastery of teaching skill and skill 6Presentation and Delivery: Awareness of demeanor, vocabulary and articulation 7Student Involvement: evidence of active engagement and participation by students 8Learning Environment: Creates an environment conducive for learning Table 3: Performance Evaluation Criteria
The evaluation model(3) Expected score Strength of attribute The expected score versus the strength of attribute of an ogive function.
The evaluation model(4) Figure 3: range and classes of Teaching Method
The evaluation model(5) Figure 4: range and classes of Presentation and Delivery
Discussion of Result(1) Figure 5: range and classes of Teaching Method
Discussion of Result(2) Teaching Method Scale (0 -10) Presentation and Delivery Scale (0 -10) Performance Scale (0 – 100) Remark (Class) Poor Poor Fair Fair Fair Good Good Excellent Excellent Poor Fair Fair Fair Fair Fair Fair Excellent Excellent
Discussion of Result(3) Figure 6: Three Dimensional Depiction of the inference rules
Discussion of Result(4) Figure 7: Plot to show the effect of Teaching Method and Presentation on performance
Conclusion In summary, -we reviewed and presented the following some existing assessment model -Discussed the concept of fuzzy inference system -Presented an evaluation model for faculty performance measure satisfying the monotone property of assessment model -Finally, we presented some experimental results and discussion
Thank You & QUESTIONS