Yicheng Mao , Roselinde Kessels , Tom van der Zanden
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引用次数: 0
摘要
离散选择实验(DCE)研究的是影响个人在各种选项中做出选择的属性。为了提高估计选择模型的质量,研究人员会选择贝叶斯优化设计,利用现有的属性偏好信息。鉴于选择模型的非线性特点,构建合适的设计需要高效的算法。其中,坐标交换(CE)算法通常用于构建基于 MNL 模型的设计。然而,作为一种爬山方法,CE 算法往往会迅速收敛到局部最优,从而可能限制设计结果的质量。我们建议使用模拟退火(SA)算法来构建贝叶斯最优设计。该算法同时接受优劣两种解决方案,避免了过早收敛,并允许对潜在解决方案进行更彻底的探索。因此,与 CE 算法相比,它最终能获得更高质量的选择设计。我们的工作代表了 SA 算法在构建 DCE 的贝叶斯最优设计中的首次应用。通过大量的计算实验,我们证明了 SA 设计在统计效率方面普遍优于 CE 设计,尤其是在先验偏好信息高度不确定的情况下。
Constructing Bayesian optimal designs for discrete choice experiments by simulated annealing
Discrete choice experiments (DCEs) investigate the attributes that influence individuals’ choices when selecting among various options. To enhance the quality of the estimated choice models, researchers opt for Bayesian optimal designs that utilize existing information about the attributes’ preferences. Given the nonlinear nature of choice models, the construction of an appropriate design requires efficient algorithms. Among these, the coordinate-exchange (CE) algorithm is commonly employed for constructing designs based on the MNL model. However, as a hill-climbing method, the CE algorithm tends to quickly converge to local optima, potentially limiting the quality of the resulting designs. We propose the use of a simulated annealing (SA) algorithm to construct Bayesian optimal designs. This algorithm accepts both superior and inferior solutions, avoiding premature convergence and allowing a more thorough exploration of potential solutions. Consequently, it ultimately obtains higher-quality choice designs compared to the CE algorithm. Our work represents the first application of an SA algorithm in constructing Bayesian optimal designs for DCEs. Through extensive computational experiments, we demonstrate that the SA designs generally outperform the CE designs in terms of statistical efficiency, especially when the prior preference information is highly uncertain.