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离散选择实验:关于构建最优和近似最优选择集的概述。

Discrete choice experiments: An overview on constructing -optimal and near-optimal choice sets.

作者信息

Alamri Abdulrahman S, Georgiou Stelios, Stylianou Stella

机构信息

School of Science, Royal Melbourne Institute of Technology University, Melbourne, VIC, 3000, Australia.

Department of Statistics, Faculty of Science, University of Jeddah, Jeddah, Saudi Arabia.

出版信息

Heliyon. 2023 Jul 18;9(7):e18256. doi: 10.1016/j.heliyon.2023.e18256. eCollection 2023 Jul.

Abstract

Discrete choice experiments (DCEs) are frequently used to estimate and forecast the behavior of an individual's choice. DCEs are based on stated preference; therefore, underlying experimental designs are required for this type of study. According to psychologists, DCE designs consist of a small number of choice sets with a limited size in the number of alternatives within a choice set to increase the response efficiency in the questionnaire. Even though algorithmic constructions (known as efficient designs) become quite common for practitioners, optimal designs (sometimes so-called orthogonal designs) continue to be used in choice experiment studies, particularly in the case that prior information about the extent of the population preference is not available. Various approaches have been developed to construct DCE designs with fewer choice sets. However, the question in many practitioners' minds is which techniques perform better (i.e. given small designs with high efficiency) in a given circumstance. In this paper and to address these concerns, we conducted an overview of the constructions of discrete choice experiments in the literature for models with only main effects. The various ways of constructing optimal and near-optimal designs were compared in terms of their ability to minimize the number of choice sets in the survey. Our findings shed light on the optimal sample sizes needed for efficient experimentation which then can help the researchers to design more effective experiments in this area.

摘要

离散选择实验(DCEs)常用于估计和预测个体的选择行为。DCEs基于陈述性偏好;因此,这类研究需要有相应的基础实验设计。心理学家认为,DCE设计由少量选择集组成,每个选择集中的备选方案数量有限,以提高问卷的回答效率。尽管算法构建(即高效设计)对从业者来说已相当普遍,但最优设计(有时称为正交设计)在选择实验研究中仍被使用,特别是在无法获取有关总体偏好程度的先验信息的情况下。人们已开发出各种方法来构建选择集数量更少的DCE设计。然而,许多从业者心中的疑问是,在给定情况下,哪种技术(即给定高效的小设计)表现更佳。在本文中,为解决这些问题,我们对文献中仅含主效应模型的离散选择实验构建进行了综述。从减少调查中选择集数量的能力方面,对构建最优设计和近似最优设计的各种方法进行了比较。我们的研究结果揭示了高效实验所需的最优样本量,这有助于研究人员在该领域设计更有效的实验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e1ba/10393626/7b31c2e20843/gr001.jpg

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