打破常规?健康离散选择模型偏好异质性的参数表示。

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Medical Decision Making Pub Date : 2025-11-01 Epub Date: 2025-09-05 DOI:10.1177/0272989X251357879
John Buckell, Alice Wreford, Matthew Quaife, Thomas O Hancock
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引用次数: 0

摘要

任何个体样本都有其独特的选择偏好分布。离散选择模型试图捕捉这些分布。混合逻辑是目前卫生领域最常用的选择模型。这些模型的许多参数规格是可用的。我们测试了一系列替代假设和模型平均,以测试模型输出是否或如何受到影响。设计范围审查当前的建模实践。在4个数据集上比较了7个可选分布和所有分布假设的模型平均:2个是陈述偏好,1个是显示偏好,1个是模拟偏好。分析检验了模型拟合、偏好分布、支付意愿和预测。结果几乎普遍地,使用正态分布是卫生领域的标准做法。可选的分配假设优于标准实践。不同规格的偏好分布和平均支付意愿差异很大,很少与正态分布的结果相比较。模型平均提供的分布允许更大的灵活性和进一步的拟合收益,在模拟中再现潜在的分布,并减轻了由分布选择引起的分析师偏见。没有证据表明分布假设会影响模型的预测。局限性我们的重点是混合logit模型,因为这些模型在健康领域最常见,尽管也使用潜在类模型。结论:使用所有正态分布的标准做法似乎是捕获随机偏好异质性的次等方法。的影响。研究人员应该在他们的模型中检验正态分布的替代假设。highlighthealth建模器使用正态混合分布来实现偏好异质性。替代发行版提供了更多的灵活性和改进的模型拟合。模型平均提供了更多的灵活性和改进的模型拟合。在不同的选择中,分配和支付意愿存在很大差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Break from the Norm? Parametric Representations of Preference Heterogeneity for Discrete Choice Models in Health.

BackgroundAny sample of individuals has its own unique distribution of preferences for choices that they make. Discrete choice models try to capture these distributions. Mixed logits are by far the most commonly used choice model in health. Many parametric specifications for these models are available. We test a range of alternative assumptions and model averaging to test if or how model outputs are affected.DesignScoping review of current modeling practices. Seven alternative distributions and model averaging over all distributional assumptions were compared on 4 datasets: 2 were stated preference, 1 was revealed preference, and 1 was simulated. Analyses examined model fit, preference distributions, willingness to pay, and forecasting.ResultsAlmost universally, using normal distributions is the standard practice in health. Alternative distributional assumptions outperformed standard practice. Preference distributions and the mean willingness to pay varied significantly across specifications and were seldom comparable to those derived from normal distributions. Model averaging offered distributions allowing for greater flexibility and further gains in fit, reproduced underlying distributions in simulations, and mitigated against analyst bias arising from distribution selection. There was no evidence that distributional assumptions affected predictions from models.LimitationsOur focus was on mixed logit models since these models are the most common in health, although latent class models are also used.ConclusionsThe standard practice of using all normal distributions appears to be an inferior approach for capturing random preference heterogeneity. Implications. Researchers should test alternative assumptions to normal distributions in their models.HighlightsHealth modelers use normal mixing distributions for preference heterogeneity.Alternative distributions offer more flexibility and improved model fit.Model averaging offers yet more flexibility and improved model fit.Distributions and willingness to pay differ substantially across alternatives.

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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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