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Experimental designs for environmental valuation with choice-experiments: A Monte Carlo investigation

机译:通过选择实验进行环境评估的实验设计:蒙特卡洛调查

摘要

We review the practice of experimental design in the environmental economics literature concerned with choice experiments. We then contrast this with advances in the field of experimental design and present a comparison of statistical efficiency across four different experimental designs evaluated by Monte Carlo experiments. Two different situations are envisaged. First, a correct a priori knowledge of the multinomial logit specification used to derive the design and then an incorrect one. The data generating process is based on estimates from data of a real choice experiment with which preference for rural landscape attributes were studied. Results indicate the D-optimal designs are promising, especially those based on Bayesian algorithms with informative prior. However, if good a priori information is lacking, and if there is strong uncertainty about the real data generating process - conditions which are quite common in environmental valuation - then practitioners might be better off with conventional fractional designs from linear models. Under misspecification, a design of this type produces less biased estimates than its competitors.
机译:我们在与选择实验有关的环境经济学文献中回顾了实验设计的实践。然后,我们将其与实验设计领域的进展进行对比,并比较了通过蒙特卡洛实验评估的四种不同实验设计的统计效率。设想了两种不同的情况。首先,正确掌握了用于得出设计的多项式Lo​​git规范的先验知识,然后是不正确的先验知识。数据生成过程基于对真实选择实验数据的估计,对乡村景观属性的偏好进行了研究。结果表明,D最优设计是有前途的,特别是那些基于具有先验知识的贝叶斯算法的设计。但是,如果缺少良好的先验信息,并且如果实际数据生成过程存在很大的不确定性(环境评估中很常见的条件),那么从线性模型中进行传统的分数设计可能会使从业者更好。在不合规格的情况下,这种设计所产生的估计要比其竞争对手少。

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