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Measuring job satifaction based on fuzzy multi-criteria satisfaction analysis (FMUSA) method and continuous genetic algorithms

机译:基于模糊多标准满意分析(FMEA)方法和连续遗传算法的测量工作满意度

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This paper proposes an extension of the well-known MUSA method to fuzzy environment. The Fuzzy MUSA method gives much flexibility to decision makers because the majority of real-life decision problems were characterized by the uncertainty that hinders them from assigning exact evaluations to options The objective of the Fuzzy MUSA method is to make the method capable of accepting and processing fuzzy scores as input and producing a satisfaction function with fuzzy coefficients, i.e. a fuzzy partial satisfaction function and fuzzy global satisfaction. All the parameters used in the classic MUSA method have their counterpart in the proposed method. Then we combine Fuzzy MUSA method with the continuous genetic algorithm in order to obtain a robust solution of good performance. Finally we apply our approach at University of Sfax in order to measure teachers' job satisfaction because the university teachers' job satisfaction has a constructive role in raising the level of teaching and research, enhancing academic competitiveness, attracting and retaining talented people.
机译:本文提出了众所周知的Musa方法来模糊环境的延伸。模糊的Musa方法对决策者提供了很大的灵活性,因为大多数现实生活决策问题的特点是阻碍了他们从分配精确评估来选择模糊MUSA方法的目标是使能够接受和处理的方法模糊分数作为输入和产生令人满意的功能,具有模糊系数,即模糊部分满意度函数和模糊全球满意度。经典MUSA方法中使用的所有参数都在提出的方法中具有它们的对应。然后我们将模糊Musa方法与连续遗传算法相结合,以获得良好性能的强大解决方案。最后,我们在SFAX大学采用我们的方法,以衡量教师的工作满意度,因为大学教师的工作满意度在提高教学和研究水平,提高学术竞争力,吸引和留住人才的建设性作用。

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