A study into mechanisms of attitudinal scale conversion: A randomized stochastic ordering approach

Zvi Gilula, Robert E. McCulloch, Yaacov Ritov, Oleg Urminsky
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引用次数: 4

Abstract

This paper considers the methodological challenge of how to convert categorical attitudinal scores (like satisfaction) measured on one scale to a categorical attitudinal score measured on another scale with a different range. This is becoming a growing issue in marketing consulting and the common available solutions seem too few and too superficial. A new methodology for scale conversion is proposed, and tested in a comprehensive study. This methodology is shown to be both relevant and optimal in fundamental aspects. The new methodology is based on a novel algorithm named minimum conditional entropy, that uses the marginal distributions of the responses on each of the two scales to produce a unique joint bivariate distribution. In this joint distribution, the conditional distributions follow a stochastic order that is monotone in the categories and has the relevant optimal property of maximizing the correlation between the two underlying marginal scales. We show how such a joint distribution can be used to build a mechanism for scale conversion. We use both a frequentist and a Bayesian approach to derive mixture models for conversion mechanisms, and discuss some inferential aspects associated with the underlying models. These models can incorporate background variables of the respondents. A unique observational experiment is conducted that empirically validates the proposed modeling approach. Strong evidence of validation is obtained.
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态度量表转换机制研究:随机排序方法
本文考虑了如何将在一个尺度上测量的分类态度分数(如满意度)转换为在另一个不同范围的尺度上测量的分类态度分数的方法挑战。这正在成为营销咨询中一个日益严重的问题,而常见的解决方案似乎太少、太肤浅。提出了一种新的尺度转换方法,并在综合研究中进行了验证。这种方法在基本方面显示出相关性和最佳性。新方法基于一种名为最小条件熵的新算法,该算法使用两个尺度上每个响应的边际分布来产生唯一的联合二元分布。在这种联合分布中,条件分布遵循随机顺序,该顺序在类别中是单调的,并且具有最大化两个潜在边缘尺度之间相关性的相关最优性质。我们将展示如何使用这种联合分布来构建规模转换机制。我们使用频率论和贝叶斯方法来推导转换机制的混合模型,并讨论与底层模型相关的一些推理方面。这些模型可以纳入被调查者的背景变量。一个独特的观察实验进行了经验验证所提出的建模方法。获得了强有力的验证证据。
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