动态背包问题中的收益最大化

Revenue maximization in the dynamic knapsack problem

Theoretical Economics · 2011
被引 41
人大 AABS 4

中文导读

研究了在动态随机背包问题中,如何将有限容量在截止日期前分配给顺序到达的代理人,以实现收益最大化,并探讨了私有信息下的最优政策。

Abstract

We analyze maximization of revenue in the dynamic and stochastic knapsack problem where a given capacity needs to be allocated by a given deadline to sequentially arriving agents. Each agent is described by a two-dimensional type that reflects his capacity requirement and his willingness to pay per unit of capacity. Types are private information. We first characterize implementable policies. Then we solve the revenue maximization problem for the special case where there is private information about per-unit values, but capacity needs are observable. After that we derive two sets of additional conditions on the joint distribution of values and weights under which the revenue maximizing policy for the case with observable weights is implementable, and thus optimal also for the case with two-dimensional private information. In particular, we investigate the role of concave continuation revenues for implementation. We also construct a simple policy for which per-unit prices vary with requested weight but not with time, and prove that it is asymptotically revenue maximizing when available capacity/ time to the deadline both go to infinity. This highlights the importance of nonlinear as opposed to dynamic pricing.

动态背包问题收益最大化机制设计非线性定价