We consider a general queueing system with price-sensitive customers in which the service provider seeks to balance two objectives, maximizing the average revenue rate and minimizing the average queue length. Customers arrive according to a Poisson process, observe an offered price, and decide to join the queue if their valuation exceeds the price. The queue is operated first-in first-out, can have multiple servers, and the service times are exponential. Our model represents applications in areas like make-to-order manufacturing, cloud computing, and food delivery. The optimal solution for our model is dynamic; the price changes as the state of the system changes. However, such dynamic pricing policies may be undesirable for a variety of reasons. In this work, we provide non-asymptotic performance guarantees for a simple and natural class of static pricing policies which charge a fixed price up to a certain occupancy threshold and then allow no more customers into the system. Despite the mixed-sign objective, we are able to show our policy can guarantee a constant fraction of the optimal dynamic pricing policy in the worst-case. We also show that our policy yields a family of bi-criteria approximations that simultaneously guarantee a constant fraction of the optimal revenue with at most a constant factor increase in expected queue length. For instance, our policy for the M/M/1 setting can be set so that its worst-case guarantees is at least 50, 66, 75, or 80% of the optimal revenue and at most a 0, 16, 54, or 100% increase in the optimal queue length, respectively. We also provide guarantees for settings with multiple servers as well as the expected sojourn time objective. In a large simulation, we show that our class of policies is at most 4% sub-optimal on average.
翻译:我们考虑一个具有价格敏感顾客的通用排队系统,其中服务提供商旨在平衡两个目标:最大化平均收益率和最小化平均队列长度。顾客按照泊松过程到达,观察到提供的价格,并在其估值超过价格时决定加入队列。队列采用先进先出方式运作,可配备多个服务器,且服务时间服从指数分布。我们的模型代表了按订单生产制造、云计算和食品配送等领域的应用场景。该模型的最优解是动态的;价格随系统状态变化而调整。然而,由于多种原因,此类动态定价策略可能并不理想。在本研究中,我们为一类简单且自然的静态定价策略提供了非渐近性能保证,该策略在达到特定占用阈值前收取固定价格,之后不再允许顾客进入系统。尽管目标函数具有混合符号特性,我们仍能证明该策略在最坏情况下可保证达到最优动态定价策略的恒定比例。我们还证明,该策略产生了一系列双准则近似解,能同时保证获得最优收益的恒定比例,且预期队列长度最多仅按恒定因子增加。例如,在M/M/1场景中,我们的策略可设置为:其最坏情况保证至少达到最优收益的50%、66%、75%或80%,同时最优队列长度分别最多增加0%、16%、54%或100%。我们还为多服务器场景及预期逗留时间目标提供了保证。通过大规模仿真,我们证明该类策略平均至多仅有4%的次优性。