Optimal sequential strategy to improve the precision of the estimators in a discrete choice experiment: A simulation study

IF 2.8 3区 经济学 Q1 ECONOMICS
Daniel Pérez-Troncoso
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Abstract

Introduction

In order to solve the problems related to prior parameter misspecification in DCEs, Bliemer and Rose (2010) proposed a sequential approach where the design is updated after each respondent. This paper tries to find a more efficient alternative sequential method since the original proposal could be very time-consuming and expensive under some circumstances.

Methods

11 different strategies were simulated using 8 to 16 choice sets following a Monte Carlo approach. The accuracy and bias of the estimates of each strategy were studied using the relative error and mean value of their estimates.

Results

The DCE performs similarly to the original strategy by updating the design after five respondents. Among the other strategies, we discovered that, under certain circumstances, updating the design after 20 or 10 respondents led to accurate and not significantly biased estimates.

Conclusions

For a strategy to be efficient it might not be necessary to update the DCE after each respondent, but we found that updating the prior information relatively often and regularly can be almost as efficient as the original sequential proposal (for example, updating after five respondents might be a good choice). In addition, our findings suggest that each DCE has different efficient strategies depending on the number of attributes, levels, sets, and alternatives, so it can be concluded that a universal “optimal sequential strategy” does not exist.

提高离散选择实验中估计器精度的最优顺序策略:仿真研究
为了解决dce中与先前参数错误规范相关的问题,Bliemer和Rose(2010)提出了一种顺序方法,即在每个受访者之后更新设计。本文试图找到一种更有效的替代顺序方法,因为原始建议在某些情况下可能非常耗时和昂贵。方法采用蒙特卡罗方法,采用8 ~ 16个选择集对11种不同策略进行模拟。利用各策略估计的相对误差和均值,研究了各策略估计的准确性和偏差。结果DCE与原始策略相似,在五名被调查者后更新设计。在其他策略中,我们发现,在某些情况下,在20或10个应答者之后更新设计会导致准确且没有明显偏差的估计。对于一个有效的策略,可能没有必要在每个被调查者之后更新DCE,但我们发现,相对频繁和有规律地更新先验信息几乎与原始顺序提议一样有效(例如,在五个被调查者之后更新可能是一个不错的选择)。此外,我们的研究结果表明,每个DCE都有不同的有效策略,这取决于属性、级别、集合和备选项的数量,因此可以得出结论,不存在普遍的“最优顺序策略”。
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
CiteScore
4.10
自引率
12.50%
发文量
31
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