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Expected utility theory and inner and outer measures of loss aversion

机译:期望效用理论和损失规避的内外部测度

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We introduce a weak rank dependent utility (RDU) model, with one extra parameter compared to the canonical expected utility (EUT) model, which makes many of the same predictions as cumulative prospect theory (CPT). The model extends a set of nonconvex preferences to its maximal inner convex subset, satisfies stochastic dominance principles, resolves the Allais paradox, predicts CPT fourfold pattern of risk attitudes, and characterizes reference dependent preferences. Unlike extant RDU models that transform probability weighting functions (pwfs), our model transforms ranked choice sets while leaving objective probabilities intact. So pwfs are hidden in our model. CPT's loss aversion index is a special case of the interior solution for the extra parameter for unconstrained utility maximization, and it is driven by tail probabilities in our model. We provide several examples to show how popular formulae for the loss aversion index can be classified into inner and outer measures of loss aversion via an approximate Radon-Nikodym formulation of the model. This resolves sources of disparity in estimating the loss aversion index with experimental data. We show that under extant approaches, the loss aversion index is best estimated by a mixture of inner and outer measures of itself. Furthermore, we identify a CPT paradox: The utility loss aversion index is unmeasurable under CPT nonexpected utility framework for mixed lotteries; but measurable for same under the expected utility paradigm adapted to our model. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们引入了一个弱秩相关效用(RDU)模型,与规范预期效用(EUT)模型相比,它具有一个额外的参数,该模型做出了许多与累积预期理论(CPT)相同的预测。该模型将一组非凸偏好设置扩展到其最大的内凸子集,满足随机支配性原则,解决了Allais悖论,预测了CPT风险态度的四重模式,并描述了依赖参考的偏好。与现有的RDU模型可以转换概率加权函数(pwfs)不同,我们的模型可以转换排序的选择集,同时保持客观概率不变。因此,pwfs隐藏在我们的模型中。 CPT的损失厌恶指数是内部解决方案中用于无限制效用最大化的额外参数的一种特例,它受模型中尾部概率的驱动。我们提供了几个示例来说明如何通过模型的近似Radon-Nikodym公式将流行的损失厌恶指数公式分类为损失厌恶的内部和外部度量。这解决了用实验数据估算损失厌恶指数时的差异来源。我们表明,在现有方法下,损失规避指数最好通过自身内部和外部度量的混合来估计。此外,我们确定了CPT悖论:在CPT非预期的混合彩票效用框架下,效用损失规避指数是无法测量的;但在适用于我们模型的预期效用范式下,可以测量出相同的结果。 (C)2015 Elsevier B.V.保留所有权利。

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