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A multi-stage satisfaction index estimation model integrating structural equation modeling and mathematical programming

机译:集成结构方程建模与数学规划的多级满意度指标估计模型

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摘要

In this study, a satisfaction index estimation model is proposed integrating structural equation modeling and mathematical programming methods with fuzzy customer data. Firstly, a deep literature survey is conducted in this field of study. Then, a new model is proposed by taking into consideration gaps in the literature. The estimation model is composed of five stages and first stage is building conceptual model in which measurement and latent variables are introduced. At the second stage, a fuzzy evaluation method is developed for decreasing subjectivity in customer data. At the third stage, for measurement variables that are directly observed, a measurement model is developed with Linear Structural Relations. In the solution of the measurement model maximum likelihood algorithm is used. In the solution of structural model that is composed of latent variables that are not directly observed, a mathematical estimation model is developed in this study at the fourth stage. Mathematical model is coded in ILOG Cplex Optimization Studio. In the mathematical model that minimizes estimation errors, structural relations and measurement variable weights (precedence coefficients) are defined as constraints. At the fifth and last stage, index scores are calculated with mathematical model outputs. Application of the model is carried out in public sector at a local government service point. In the application model, service quality, innovation, communication, satisfaction and cost perception dimensions are used. Application results are discussed for both measurement and latent variables in detail. The results of model we developed are also compared with an alternative model outcomes and we show that we achieve optimum estimation capability with minimum estimation errors.
机译:在本研究中,提出了一种与模糊客户数据集成结构方程建模和数学编程方法的满足率估计模型。首先,在这一研究领域进行了深入的文学调查。然后,通过考虑文献中的差距来提出一种新模型。估计模型由五个阶段组成,第一阶段是建立概念模型,其中引入了测量和潜变量。在第二阶段,开发了一种模糊评估方法,用于降低客户数据的主观性。在第三阶段,对于直接观察到的测量变量,具有线性结构关系的测量模型。在测量模型的解决方案中,使用最大似然算法。在由不直接观察到的潜在变量组成的结构模型的解决方案中,在第四阶段在本研究中开发了一种数学估计模型。数学模型在ILOG CPLEX优化工作室编码。在最小化估计误差的数学模型中,结构关系和测量可变权重(优先系数)被定义为约束。在第五阶段和最后阶段,使用数学模型输出计算索引分数。该模型的应用在地方政府服务点的公共部门进行。在应用模型中,使用服务质量,创新,通信,满意度和成本感知尺寸。详细讨论了测量和潜变量的应用结果。我们开发的模型结果也与替代模型结果进行了比较,我们表明我们达到了最低估计误差的最佳估算能力。

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