The design of online policies for stochastic matching and revenue management settings is usually bound by the Bayesian prior that the demand process is formed by a fixed-length sequence of queries with unknown types, each drawn independently. This assumption of serial independence implies that the demand of each type, i.e., the number of queries of a given type, has low variance and is approximately Poisson-distributed. Thus, matching policies are often based on "fluid" LPs that only use the expectations of these distributions. This paper explores alternative stochastic models for online matching that allow for nonparametric, higher variance demand distributions. We propose two new models, INDEP and CORREL, that relax the serial independence assumption in different ways by combining a nonparametric distribution for the demand with standard assumptions on the arrival patterns -- adversarial or random-order. In our INDEP model, the demand for each type follows an arbitrary distribution, while being mutually independent across different types. In our CORREL model, the total demand follows an arbitrary distribution, and conditional on the sequence length, the type of each query is drawn independently. In both settings, we show that the fluid LP relaxation based on only expected demands can be an arbitrarily bad benchmark for algorithm design. We develop tighter LP relaxations for the INDEP and CORREL models that leverage the exact distribution of the demand, leading to matching algorithms that achieve constant-factor performance guarantees under adversarial and random-order arrivals. More broadly, our paper provides a data-driven framework for expressing demand uncertainty (i.e., variance and correlations) in online stochastic matching models.
翻译:用于随机匹配和收入管理设置的在线政策的设计通常受巴伊西亚人之前的巴伊西亚人的约束,因为需求进程是由固定的、有不同类型、各独立抽取的查询序列组成的固定时间序列组成的。这种序列独立的假设意味着每种类型的需求,即特定类型询问的数量,差异较小,而且大约是Poisson的分布。因此,匹配政策通常以“浮”LP为基础,只使用这些分布的预期。本文探讨了在线匹配的替代随机随机随机模型,允许非参数性、更高差异需求分布。我们提出了两种新的模型,即INDEP和CORREL,通过将对需求的非参数分布与标准运到货模式 -- -- 对抗性或随机排列 -- -- 合并,以不同的方式放松序列独立性假设。因此,对每种类型的需求都是任意分布,同时在不同类型之间相互独立的。在我们 COREL 模型中,总需求是任意的分布,并且以序列长度为条件,我们提出了两种类型的序列,即IMEP- 匹配每类排序,我们只能独立地将Siral Ral dal deal deal dal development deal deal development deal deal deal deal slaut the we.