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Discriminating among probability weighting functions using adaptive design optimization

机译:使用自适应设计优化来区分概率加权函数

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Probability weighting functions relate objective probabilities and their subjective weights, and play a central role in modeling choices under risk within cumulative prospect theory. While several different parametric forms have been proposed, their qualitative similarities make it challenging to discriminate among them empirically. In this paper, we use both simulation and choice experiments to investigate the extent to which different parametric forms of the probability weighting function can be discriminated using adaptive design optimization, a computer-based methodology that identifies and exploits model differences for the purpose of model discrimination. The simulation experiments show that the correct (data-generating) form can be conclusively discriminated from its competitors. The results of an empirical experiment reveal heterogeneity between participants in terms of the functional form, with two models (Prelec-2, Linear-in-Log-Odds) emerging as the most common best-fitting models. The findings shed light on assumptions underlying these models.
机译:概率加权函数与客观概率及其主观权重相关,并且在累积前景理论中的风险选择建模中起着核心作用。虽然已经提出了几种不同的参数形式,但它们的定性相似性使其难以凭经验区分它们。在本文中,我们同时使用模拟和选择实验来研究使用自适应设计优化(一种基于计算机的方法,可以识别和利用模型差异以进行模型识别)来区分概率加权函数的不同参数形式的程度。 。仿真实验表明正确的(数据生成)形式可以最终与竞争对手区分开。一项经验实验的结果揭示了参与者在功能形式方面的异质性,其中两种模型(Prelec-2,对数线性模型)成为最常见的最佳拟合模型。研究结果阐明了这些模型的基础假设。

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