动态定价
计算机科学
利润(经济学)
排队论
激励
可变定价
平均成本定价
微观经济学
定价策略
投资理论
排队
经济
数学优化
运筹学
计算机网络
服务(商务)
分布式计算
计量经济学
资本资产定价模型
工程类
数学
作者
Siddhartha Banerjee,Ramesh Johari,Carlos Riquelme
出处
期刊:Economics and Computation
日期:2015-06-15
被引量:114
标识
DOI:10.1145/2764468.2764527
摘要
We study optimal pricing strategies for ride-sharing platforms, using a queueing-theoretic economic model. Analysis of pricing in such settings is complex: On one hand these platforms are two-sided - this requires economic models that capture the incentives of both drivers and passengers. On the other hand, these platforms support very high temporal-resolution for data collection and pricing - this requires stochastic models that capture the dynamics of drivers and passengers in the system. We focus our attention on the value of dynamic pricing: where prices can react to instantaneous imbalances between available supply and incoming demand. We find two main results: We first show that profit under any dynamic pricing strategy cannot exceed profit under the optimal static pricing policy (i.e., one which is agnostic of stochastic fluctuations in the system load). This result belies the prevalence of dynamic pricing in practice. Our second result explains the apparent paradox: we show that dynamic pricing is much more robust to fluctuations in system parameters compared to static pricing. Moreover, these results hold even if the monopolist maximizes welfare or throughput. Thus dynamic pricing does not necessarily yield higher performance than static pricing - however, it lets platforms realize the benefits of optimal static pricing, even with imperfect knowledge of system parameters.
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