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Concave/convex weighting and utility functions for risk: A new light on classical theorems

机译:风险的凹/凸加权和实用功能:古典定理上的新灯

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This paper analyzes concave and convex utility and probability distortion functions for decision under risk (law-invariant functionals). We characterize concave utility for virtually all existing models, and concave/convex probability distortion functions for rank-dependent utility and prospect theory in complete generality, through an appealing and well-known condition (convexity of preference, i.e., quasiconcavity of the functional). Unlike preceding results, we do not need to presuppose any continuity, let be differentiability.An example of a new light shed on classical results: whereas, in general, convexity/concavity with respect to probability mixing is mathematically distinct from convexity/concavity with respect to outcome mixing, in Yaari's dual theory (i.e., Wang's premium principle) these conditions are not only dual, as was well-known, but also logically equivalent, which had not been known before. (C) 2021 The Author(s). Published by Elsevier B.V.
机译:本文分析了凹凸实用程序和概率失真函数,以便在风险下决定(法律不变函数)。 我们以几乎所有现有模型的凹形实用性表征了凹形效用,以及通过吸引力和众所周知的条件(偏好的鉴定性,即功能的凸起,即偏心的凸性),凹入/凸起概率失真函数。 与前面的结果不同,我们不需要预先假定任何连续性,让我们有所不同。在古典结果上的新光线的示例:而且,通常,关于概率混合的凸起/凹陷是在数学上与凸起/凹陷不同 为了结果混合,在Yaari的双重理论(即,王的优质原则),这些条件不仅是双重的,而且众所周知,也是逻辑上等同于之前未知的。 (c)2021提交人。 elsevier b.v出版。

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