Comparing the Conditional Logit Estimates and True Parameters under Preference Heterogeneity: A Simulated Discrete Choice Experiment

IF 1.1 Q3 ECONOMICS
Maksat Jumamyradov, Benjamin Matthew Craig, Murat K. Munkin, W. Greene
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引用次数: 1

Abstract

Health preference research (HPR) is the subfield of health economics dedicated to understanding the value of health and health-related objects using observational or experimental methods. In a discrete choice experiment (DCE), the utility of objects in a choice set may differ systematically between persons due to interpersonal heterogeneity (e.g., brand-name medication, generic medication, no medication). To allow for interpersonal heterogeneity, choice probabilities may be described using logit functions with fixed individual-specific parameters. However, in practice, a study team may ignore heterogeneity in health preferences and estimate a conditional logit (CL) model. In this simulation study, we examine the effects of omitted variance and correlations (i.e., omitted heterogeneity) in logit parameters on the estimation of the coefficients, willingness to pay (WTP), and choice predictions. The simulated DCE results show that CL estimates may have been biased depending on the structure of the heterogeneity that we used in the data generation process. We also found that these biases in the coefficients led to a substantial difference in the true and estimated WTP (i.e., up to 20%). We further found that CL and true choice probabilities were similar to each other (i.e., difference was less than 0.08) regardless of the underlying structure. The results imply that, under preference heterogeneity, CL estimates may differ from their true means, and these differences can have substantive effects on the WTP estimates. More specifically, CL WTP estimates may be underestimated due to interpersonal heterogeneity, and a failure to recognize this bias in HPR indirectly underestimates the value of treatment, substantially reducing quality of care. These findings have important implications in health economics because CL remains widely used in practice.
偏好异质性下条件Logit估计与真参数的比较:一个模拟的离散选择实验
健康偏好研究(HPR)是健康经济学的一个分支领域,致力于使用观察或实验方法来理解健康和健康相关对象的价值。在离散选择实验(DCE)中,由于人际异质性(例如,品牌药物、非专利药物、非药物),选择集中对象的效用可能在人与人之间存在系统性差异。为了考虑到人际异质性,可以使用具有固定个体特定参数的logit函数来描述选择概率。然而,在实践中,研究团队可能会忽略健康偏好的异质性,并估计条件logit(CL)模型。在这项模拟研究中,我们检验了logit参数中省略的方差和相关性(即省略的异质性)对系数估计、支付意愿(WTP)和选择预测的影响。模拟的DCE结果表明,CL估计可能有偏差,这取决于我们在数据生成过程中使用的异质性结构。我们还发现,系数中的这些偏差导致真实和估计的WTP存在显著差异(即高达20%)。我们进一步发现,无论潜在结构如何,CL和真实选择概率都是相似的(即差异小于0.08)。结果表明,在偏好异质性下,CL估计可能与其真实均值不同,这些差异可能对WTP估计产生实质性影响。更具体地说,由于人际异质性,CL WTP估计可能被低估,而未能认识到HPR中的这种偏见间接低估了治疗的价值,从而大大降低了护理质量。这些发现对健康经济学具有重要意义,因为CL在实践中仍被广泛使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Econometrics
Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.40
自引率
20.00%
发文量
30
审稿时长
11 weeks
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