Formative versus reflective attitude measures: Extending the hybrid choice model

IF 2.8 3区 经济学 Q1 ECONOMICS Journal of Choice Modelling Pub Date : 2023-09-01 DOI:10.1016/j.jocm.2023.100412
J.M. Rose , A. Borriello , A. Pellegrini
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Abstract

The inclusion of attitudinal indicator variables within discrete choice models is now largely common practice. Typically, this involves the estimation of multiple indicator multiple cause (MIMIC) type models which are used to construct latent attitudinal variables that are then employed as independent variables within standard discrete choice models. Such models, collectively termed hybrid choice models (HCM) assume a particular causal relationship between the indicator variables, latent construct, and choice. In effect, the underlying assumption of such a model system is that latent variables of interest exist independent of the indicator variables used to measure them, and that the survey items used are reflective in nature insofar as responses to such questions reflect the underlying constructs. In this paper, we describe an alternative form of attitude measure, known as formative measures, where the items themselves are used to create the latent variable rather than the other way around. In addition to making a distinction between formative and reflective attitudinal measures, the paper seeks to describe how the HCM can be adapted to model different types of attitude question formats. Further the paper seeks to act as a catalyst for choice modellers to think more about the quality and validity of attitudinal items capture in survey questionnaires, by placing more emphasis on proper scale development techniques.

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形成性与反思性态度测量:扩展混合选择模型
将态度指标变量纳入离散选择模型现在基本上是普遍做法。通常,这涉及多指标多原因(MIMIC)类型模型的估计,该模型用于构建潜在的态度变量,然后将其用作标准离散选择模型中的自变量。这些模型统称为混合选择模型(HCM),假设指标变量、潜在结构和选择之间存在特定的因果关系。实际上,这种模型系统的基本假设是,感兴趣的潜在变量独立于用于衡量它们的指标变量而存在,并且所使用的调查项目在性质上是反映性的,因为对这些问题的回答反映了基本的构念。在本文中,我们描述了一种态度测量的替代形式,称为形成性测量,其中项目本身被用来创建潜在变量,而不是相反。除了区分形成性和反思性态度测量外,本文还试图描述HCM如何适应不同类型的态度问题格式。此外,本文试图通过更加强调适当的量表开发技术,促使选择建模者更多地思考调查问卷中态度项目的质量和有效性。
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来源期刊
CiteScore
4.10
自引率
12.50%
发文量
31
期刊最新文献
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