In modern sample-driven Prophet Inequality, an adversary chooses a sequence of $n$ items with values $v_1, v_2, \ldots, v_n$ to be presented to a decision maker (DM). The process follows in two phases. In the first phase (sampling phase), some items, possibly selected at random, are revealed to the DM, but she can never accept them. In the second phase, the DM is presented with the other items in a random order and online fashion. For each item, she must make an irrevocable decision to either accept the item and stop the process or reject the item forever and proceed to the next item. The goal of the DM is to maximize the expected value as compared to a Prophet (or offline algorithm) that has access to all information. In this setting, the sampling phase has no cost and is not part of the optimization process. However, in many scenarios, the samples are obtained as part of the decision-making process. We model this aspect as a two-phase Prophet Inequality where an adversary chooses a sequence of $2n$ items with values $v_1, v_2, \ldots, v_{2n}$ and the items are randomly ordered. Finally, there are two phases of the Prophet Inequality problem with the first $n$-items and the rest of the items, respectively. We show that some basic algorithms achieve a ratio of at most $0.450$. We present an algorithm that achieves a ratio of at least $0.495$. Finally, we show that for every algorithm the ratio it can achieve is at most $0.502$. Hence our algorithm is near-optimal.
翻译:在现代抽样驱动的先知不平等中,对手选择一系列美元比率,其值为 $_1, v_2,\ ldots, v_n$, v_n_n$, 以提交决策者( DM) 。 这一过程分两个阶段进行。 在第一阶段( 抽样阶段), 某些项目, 可能是随机挑选的, 却向管理部透露, 但是她无法接受它们。 在第二阶段, 将管理部与其他项目一起以随机顺序和在线方式提交。 对于每个项目, 她必须做出不可撤销的决定, 要么接受项目, 停止进程, 要么永久拒绝项目, 然后再继续到下一个项目。 管理部的目标是最大限度地提高预期值, 与能够获取所有信息的先知( 或离线算算算) 相比。 在第一阶段, 取样阶段没有成本, 但不是优化过程的一部分。 然而, 在很多情况下, 样本是作为决策过程的一部分获得的。 我们将此方面作为两阶段先知的预言。 在两个阶段中, 直线选择一个为 $ 2n 美元 的序列, $ 1, v_ 2, v_ 2, le 2, 。\\\\\\\\\\ 最接近 最终 显示 我们的顺序的顺序, 我们的顺序是每个项目, 。