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代理辅助的需求学习及其在各种定价问题中的应用

Proxy-Aided Demand Learning with an Application to Various Pricing Problems

Operations Research · 2025
被引 1
人大 AFT50UTD24ABS 4*

中文导读

利用代理变量和桥函数,在存在混杂因素的情况下可靠估计价格对需求的影响,并应用于静态和动态定价,对电商等场景有实用价值。

Abstract

Demand in the Shadows: Proxy-Based Solutions for Smarter Pricing Understanding how price affects customer demand is a cornerstone of data-driven pricing, but traditional approaches often struggle under endogeneity because of the presence of confounding factors. In the paper “Proxy-Aided Demand Learning with an Application to Various Pricing Problems,” Shen and Cui tackle this challenge by leveraging ideas from proximal causal inference. They introduce a framework that incorporates proxy variables—categorized into treatment and outcome types—to enable reliable identification and estimation of customer demand. Central to their method is the use of a bridge function that allows accurate recovery of potential sales at different price points. Besides theoretical and managerial insights, the paper demonstrates practical applications in both static and contextual pricing, with the proposed algorithms applied to a real-world e-commerce data set. Tellingly, the proposed framework offers a promising new direction for practitioners aiming to optimize pricing with confounded data.

定价策略需求估计因果推断电子商务