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Making use of respondent reported processing information to understand attribute importance: a latent variable scaling approach

机译:利用响应者报告的处理信息来了解属性的重要性:一种潜在的变量缩放方法

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In recent years we have seen an explosion of research seeking to understand the role that rules and heuristics might play in improving the predictive capability of discrete choice models, as well as delivering willingness to pay estimates for specific attributes that may (and often do) differ significantly from estimates based on a model specification that assumes all attributes are relevant. This paper adds to that literature in one important way-it explicitly recognises the endogeneity issues raised by typical attribute non-attendance treatments and conditions attribute parameters on underlying unobserved attribute importance ratings. We develop a hybrid model system involving attribute processing and outcome choice models in which latent variables are introduced as explanatory variables in both parts of the model, explaining the answers to attribute processing questions and explaining heterogeneity in marginal sensitivities in the choice model. The resulting empirical model explains how lower latent attribute importance leads to a higher probability of indicating that an attribute was ignored or that it was ranked as less important, as well as increasing the probability of a reduced value for the associated marginal utility coefficient in the choice model. The model does so by treating the answers to information processing questions as dependent rather than explanatory variables, hence avoiding potential risk of endogeneity bias and measurement error.
机译:近年来,我们看到了大量的研究,试图了解规则和启发式方法在提高离散选择模型的预测能力以及提供愿意为可能(并且经常确实)有所不同的特定属性支付估计值方面的作用。假设所有属性均相关,则根据基于模型规范的估算得出。本文以一种重要的方式增加了文献资料-它明确地认识到典型的属性非出勤处理和条件属性参数在潜在的未观察到的属性重要性等级上引起的内生性问题。我们开发了一个包含属性处理和结果选择模型的混合模型系统,其中在模型的两个部分中都引入了潜在变量作为解释变量,解释了属性处理问题的答案,并解释了选择模型中边际敏感性的异质性。所得的经验模型解释了较低的潜在属性重要性如何导致较高的可能性,表明该属性被忽略或被认为不那么重要,以及如何增加选择中相关边际效用系数的值减小的可能性模型。该模型通过将信息处理问题的答案视为因变量而不是解释变量来做到这一点,从而避免了内生性偏差和测量误差的潜在风险。

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