Academic Journal

Investigating the use of fuzzy logical data for evaluating the teaching quality of college teachers.

Bibliographic Details
Title: Investigating the use of fuzzy logical data for evaluating the teaching quality of college teachers.
Authors: Liu, Lin1 (AUTHOR), Yang, Lijun2 (AUTHOR) yanglijun@zsc.edu.cn
Source: Journal of Intelligent & Fuzzy Systems. 2023, Vol. 44 Issue 6, p10459-10475. 17p.
Abstract: The level of education in colleges is career and development-focused compared to that from high schools. Quality education relies on the teachers' qualifications, knowledge, and experience over the years. However, the demand for technical and knowledge-based education is increasing with the world's demands. Therefore, assessing the knowledge of teaching professionals to meet external demand becomes mandatory. This article introduces an Acceded Data Evaluation Method (ADEM) using Fuzzy Logic (FL) for teaching quality assessment. The proposed method inputs the teachers' skills and students' productivity for evaluation. The teachers' knowledge and updated skills through training and self-learning are the key features for evaluating the independents' performance. The impact of the above features on the student qualifying ratio and understandability (through examination) are analyzed periodically. Depending on the qualifications and performance, the teachers' knowledge update is recommended with the new training programs. In this evaluation process, fuzzy logic is implied for balancing and identifying the maximum validation criteria that satisfy the quality requirements. The recommendations using partial and fulfilled quality constraints are identified using the logical truth over the varying assessments. The proposed method is analyzed using the metrics evaluation rate, quality detection, recommendations, evaluation time, and data balancing. [ABSTRACT FROM AUTHOR]
Subject Terms: *Quality function deployment, College teachers, Effective teaching, Teacher qualifications, Fuzzy logic, College teaching
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ISSN: 10641246
DOI: 10.3233/JIFS-224290
Database: Business Source Complete
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