自激发到达过程下的动态定价

Dynamic Pricing Under Self-Exciting Arrival Processes

Operations Research · 2026
被引 0
人大 AFT50UTD24ABS 4*

中文导读

研究了在顾客购买会通过口碑和社会影响激发未来需求的市场中,企业如何定价。发现最优价格取决于时间和累积的顾客影响,并提出了简单有效的定价启发式方法。

Abstract

Pricing with a Ripple Effect How should firms price when each sale sparks the next? In their paper, “Dynamic Pricing Under Self-Exciting Arrival Processes,” Quan Yuan, Longyuan Du, and Ming Hu study pricing decisions in markets where customer purchases actively stimulate future demand through word-of-mouth and social influence. Using a self-exciting (Hawkes) process to model the demand process, the authors show that optimal prices depend on both time and an “excitement level” summarizing accumulated customer influence. A key insight is that optimal prices may rise or fall with demand momentum, depending on whether the market is in a growth or saturation phase. The paper further demonstrates that simple, easy-to-implement deterministic (nonstationary) pricing heuristics can perform nearly as well as fully dynamic policies at large demand volumes. These results provide actionable guidance for firms operating in social media–driven markets, where this hour’s customers shape the next hour’s demand, and highlight the importance of explicitly accounting for the ripple effect of purchases in pricing design.

动态定价自激发过程口碑效应定价策略