通过对抗性风险分析做出个性化定价决策

Daniel García Rasines, Roi Naveiro, David Ríos Insua, Simón Rodríguez Santana
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引用次数: 0

摘要

定价决策是公司面临的最关键任务之一,尤其是在当今的数字经济时代。与其他商业决策问题一样,定价也是在高度竞争和不确定的环境中展开的。这方面的传统分析在很大程度上依赖于博弈论及其变体。然而,这些方法的一个重要缺点是依赖于常识假设,而这些常识假设在竞争激烈的商业领域很难站得住脚。本文介绍了一种创新的个性化定价框架,旨在帮助决策者在竞争中做出定价决策,同时考虑买方和竞争对手的偏好。我们的方法(i) 建立了一个连贯的竞争建模框架,减少了常识假设;(ii) 提出了一种有原则的方法来预测竞争对手的定价和客户的购买决策,承认了主要的商业不确定性;(iii) 鼓励对竞争对手的问题进行结构化思考,从而丰富了解决方案的过程。为了说明这些特性,除了一般的定价模板外,我们还概述了两个规范--一个来自零售领域,另一个来自养老基金领域。
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Personalized Pricing Decisions Through Adversarial Risk Analysis
Pricing decisions stand out as one of the most critical tasks a company faces, particularly in today's digital economy. As with other business decision-making problems, pricing unfolds in a highly competitive and uncertain environment. Traditional analyses in this area have heavily relied on game theory and its variants. However, an important drawback of these approaches is their reliance on common knowledge assumptions, which are hardly tenable in competitive business domains. This paper introduces an innovative personalized pricing framework designed to assist decision-makers in undertaking pricing decisions amidst competition, considering both buyer's and competitors' preferences. Our approach (i) establishes a coherent framework for modeling competition mitigating common knowledge assumptions; (ii) proposes a principled method to forecast competitors' pricing and customers' purchasing decisions, acknowledging major business uncertainties; and, (iii) encourages structured thinking about the competitors' problems, thus enriching the solution process. To illustrate these properties, in addition to a general pricing template, we outline two specifications - one from the retail domain and a more intricate one from the pension fund domain.
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