Personalized Pricing Through Strategic User Profiling in Social Networks
Qinqi Lin, Lingjie Duan, and Jianwei Huang

TL;DR
This paper analyzes how sellers can strategically price products and how users should manage their social activities to balance privacy and profiling benefits, revealing that improved profiling tech raises prices and can harm user payoffs.
Contribution
It provides the first analytical model of strategic user behavior and seller pricing in social networks under privacy concerns, using a dynamic Bayesian game framework.
Findings
Improved profiling technology leads to higher equilibrium prices.
Users' social activities increase with better profiling accuracy.
Enhanced privacy awareness policies may reduce user payoffs.
Abstract
Traditional user profiling techniques rely on browsing history or purchase records to identify users' willingness to pay. This enables sellers to offer personalized prices to profiled users while charging only a uniform price to non-profiled users. However, the emergence of privacy-enhancing technologies has caused users to actively avoid on-site data tracking. Today, major online sellers have turned to public platforms such as online social networks to better track users' profiles from their product-related discussions. This paper presents the first analytical study on how users should best manage their social activities against potential personalized pricing, and how a seller should strategically adjust her pricing scheme to facilitate user profiling in social networks. We formulate a dynamic Bayesian game played between the seller and users under asymmetric information. The key…
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