堆栈式风险偏好设计

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
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引用次数: 0

摘要

摘要 风险度量通常用于捕捉决策者(DMs)的风险偏好。当决策者的风险偏好受到不确定性信息可得性等因素的影响时,他们的决策就会受到干扰或操纵。本研究提出了一个斯塔克尔伯格风险偏好设计(STRIPE)问题,以捕捉设计者影响 DM 风险偏好的动机。STRIPE 包括两个层次。在下层,群体中的个体 DM(称为追随者)根据其风险偏好类型对不确定性做出反应。在上层,领导者影响类型的分布以诱导有针对性的决策,并引导追随者的偏好。我们的分析围绕着 "近似斯塔克尔伯格均衡 "这一解决方案概念展开,该均衡会产生参与者的次优行为。我们证明了近似斯塔克尔伯格均衡的存在。原始风险认知差距被定义为原始类型分布与目标类型分布之间的瓦瑟斯坦距离,它对于估算最优设计成本非常重要。我们将领导者对成本的最优妥协与她对追随者近似解决方案的模糊容忍度联系起来,并利用低层解决方案映射的利普希茨特性。为了获得斯塔克尔伯格均衡,我们利用法律不变的相干风险度量的谱表示,将 STRIPE 重新表述为单级优化问题。我们创建了一种数据驱动的计算方法,并研究了其性能保证。我们将 STRIPE 应用于近似激励相容条件下的合同设计问题。此外,我们还将 STRIPE 与元学习问题联系起来,并推导出元参数的适应性能估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stackelberg risk preference design

Abstract

Risk measures are commonly used to capture the risk preferences of decision-makers (DMs). The decisions of DMs can be nudged or manipulated when their risk preferences are influenced by factors such as the availability of information about the uncertainties. This work proposes a Stackelberg risk preference design (STRIPE) problem to capture a designer’s incentive to influence DMs’ risk preferences. STRIPE consists of two levels. In the lower level, individual DMs in a population, known as the followers, respond to uncertainties according to their risk preference types. In the upper level, the leader influences the distribution of the types to induce targeted decisions and steers the follower’s preferences to it. Our analysis centers around the solution concept of approximate Stackelberg equilibrium that yields suboptimal behaviors of the players. We show the existence of the approximate Stackelberg equilibrium. The primitive risk perception gap, defined as the Wasserstein distance between the original and the target type distributions, is important in estimating the optimal design cost. We connect the leader’s optimality compromise on the cost with her ambiguity tolerance on the follower’s approximate solutions leveraging Lipschitzian properties of the lower level solution mapping. To obtain the Stackelberg equilibrium, we reformulate STRIPE into a single-level optimization problem using the spectral representations of law-invariant coherent risk measures. We create a data-driven approach for computation and study its performance guarantees. We apply STRIPE to contract design problems under approximate incentive compatibility. Moreover, we connect STRIPE with meta-learning problems and derive adaptation performance estimates of the meta-parameters.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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