论文标题
未知I.I.D.先知:更好的界限,流算法和新的不可能
Unknown I.I.D. Prophets: Better Bounds, Streaming Algorithms, and a New Impossibility
论文作者
论文摘要
先知不平等的状态,对于[0,1] $中的一些$α\,一个赌徒可以实现的预期价值,该赌徒依次观察随机变量$ x_1,\ dots,x_n $,并且选择其中一个至少是序列中最大值的$α$分数。对于Correa等人首先研究的设置,我们获得了三个不同的改进。 (EC,2019年),与算法定价中的现代应用特别相关。在这种情况下,随机变量为I.I.D。从未知的分布中,赌徒可以访问一些$β\ geq 0 $的额外$βn$样品。对于$β$的广泛值,我们首先在$α$上提供了改进的下限;具体而言,当$β\ leq 1/(e-1)$紧密的$α\ geq(1+β)/e $,当$β= 1 $时,$α\ geq 0.648 $,由于Correa等人的限制约为$ 0.635 $。 (Soda,2020)。再加上其实际吸引力,特别是在算法定价的背景下,我们表明即使在计算的流模型中,也可以在相关数据的使用情况下,可用的数据量复杂,即使在计算的流模型中也可以获得新的界限。我们最终确定,没有样品的情况下的$ 1/e $的上限对于有关分布的其他信息是可靠的,并且也适用于i.i.d的序列。根据已知分布的一组有限的已知候选分布,其分布本身本身的随机变量本身。这意味着对随机变量的可交换序列的严格不平等,回答了Hill和Kertz的问题(当代数学,1992年),但是当候选分布数量很少时,可以更好地保证更好地保证,我们认为我们认为对应用程序充满了兴趣。
A prophet inequality states, for some $α\in[0,1]$, that the expected value achievable by a gambler who sequentially observes random variables $X_1,\dots,X_n$ and selects one of them is at least an $α$ fraction of the maximum value in the sequence. We obtain three distinct improvements for a setting that was first studied by Correa et al. (EC, 2019) and is particularly relevant to modern applications in algorithmic pricing. In this setting, the random variables are i.i.d. from an unknown distribution and the gambler has access to an additional $βn$ samples for some $β\geq 0$. We first give improved lower bounds on $α$ for a wide range of values of $β$; specifically, $α\geq(1+β)/e$ when $β\leq 1/(e-1)$, which is tight, and $α\geq 0.648$ when $β=1$, which improves on a bound of around $0.635$ due to Correa et al. (SODA, 2020). Adding to their practical appeal, specifically in the context of algorithmic pricing, we then show that the new bounds can be obtained even in a streaming model of computation and thus in situations where the use of relevant data is complicated by the sheer amount of data available. We finally establish that the upper bound of $1/e$ for the case without samples is robust to additional information about the distribution, and applies also to sequences of i.i.d. random variables whose distribution is itself drawn, according to a known distribution, from a finite set of known candidate distributions. This implies a tight prophet inequality for exchangeable sequences of random variables, answering a question of Hill and Kertz (Contemporary Mathematics, 1992), but leaves open the possibility of better guarantees when the number of candidate distributions is small, a setting we believe is of strong interest to applications.