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The Dimensionality of Customer Satisfaction Survey Responses and Implications for Driver Analysis

机译:客户满意度调查响应的维度及其对驾驶员分析的意义

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The canonical design of customer satisfaction surveys asks for global satisfaction with a product or service and for evaluations of its distinct attributes. Users of these surveys are often interested in the relationship between global satisfaction and attributes; regression analysis is commonly used to measure the conditional associations. Regression analysis is only appropriate when the global satisfaction measure results from the attribute evaluations and is not appropriate when the covariance of the items lie in a low-dimensional subspace, such as in a factor model. Potential reasons for low-dimensional responses are that responses may be haloed from overall satisfaction and there may be an unintended lack of item specificity. In this paper we develop a Bayesian mixture model that facilitates the empirical distinction between regression models and relatively much lower-dimensional factor models. The model uses the dimensionality of the covariance among items in a survey as the primary classification criterion while accounting for the heterogeneous usage of rating scales. We apply the model to four different customer satisfaction surveys that evaluate hospitals, an academic program, smartphones, and theme parks, respectively. We show that correctly assessing the heterogeneous dimensionality of responses is critical for meaningful inferences by comparing our results to those from regression models.
机译:客户满意度调查的规范设计要求对产品或服务具有全球满意度,并要求对其独特的属性进行评估。这些调查的用户通常对整体满意度和属性之间的关系感兴趣;回归分析通常用于测量条件关联。回归分析仅在整体满意度测度是从属性评估得出的结果时才适用,而在项目的协方差位于低维子空间(如因子模型)中时则不适用。低维度响应的潜在原因是响应可能因整体满意度而无法体现,并且可能会意外出现项目特异性不足的情况。在本文中,我们开发了一种贝叶斯混合模型,该模型有助于回归模型与相对较低维度的因子模型之间的经验区别。该模型使用调查中项目之间协方差的维数作为主要分类标准,同时考虑了评级量表的异类用法。我们将该模型应用于四个不同的客户满意度调查,分别对医院,学术计划,智能手机和主题公园进行了评估。我们显示,通过将我们的结果与回归模型的结果进行比较,正确评估响应的异质性对于有意义的推断至关重要。

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