Nearly Optimal Pricing Algorithms for Production Constrained and Laminar Bayesian Selection

Nima Anari, Rad Niazadeh, A. Saberi, A. Shameli
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引用次数: 20

Abstract

In the Bayesian online selection problem, the goal is to find a pricing algorithm for serving a sequence of arriving buyers that maximizes the expected social-welfare (or revenue) subject to different types of structural constraints. The focus of this paper is on the case where the allowable subsets of served customers are characterized by a laminar matroid with constant depth. This problem is a special case of the well-known matroid Bayesian online selection problem studied in [Kleinberg & Weinberg, 2012], when the underlying matroid is laminar. We give the first Polynomial-Time Approximation Scheme (PTAS) for the above problem. Our approach is based on rounding the solution of a hierarchy of linear programming relaxations that can approximate the optimum online solution with any degree of accuracy as well as a concentration argument that shows our rounding does not have a considerable loss in the expected social welfare. We also introduce the production constrained problem, for which the allowable subsets of served customers are characterized by joint production/shipping constraints that can be modeled by a special case of laminar matroids. We show that by leveraging the special structure of this problem, and using a similar approach as before, we can design a PTAS for this problem too even in the case where the depth of the laminar matroid is not constant. To achieve our result we exploit the negative dependence property of the selection rule in the lower-levels of the laminar family.
生产约束与层流贝叶斯选择的近最优定价算法
在贝叶斯在线选择问题中,目标是找到一种定价算法,为一系列到达的买家提供服务,使预期的社会福利(或收入)在不同类型的结构约束下最大化。本文的重点是在允许的情况下,服务的客户子集是由一个层流矩阵具有恒定的深度。该问题是[Kleinberg & Weinberg, 2012]研究的著名的拟阵贝叶斯在线选择问题的一个特例,当底层拟阵为层流时。我们给出了上述问题的第一个多项式时间逼近格式(PTAS)。我们的方法是基于对线性规划松弛的层次结构的解进行舍入,该解可以以任何精度近似最优在线解,以及集中度论证,表明我们的舍入不会对预期的社会福利造成相当大的损失。我们还引入了生产约束问题,其中服务客户的允许子集具有联合生产/运输约束的特征,可以用层流阵的特殊情况来建模。我们表明,通过利用这个问题的特殊结构,并使用与之前类似的方法,即使在层流矩阵的深度不是恒定的情况下,我们也可以为这个问题设计一个PTAS。为了达到我们的结果,我们利用了选择规则在层流族较低层次上的负相关性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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