We consider the problem of allocating a set of divisible goods to $N$ agents in an online manner, aiming to maximize the Nash social welfare, a widely studied objective which provides a balance between fairness and efficiency. The goods arrive in a sequence of $T$ periods and the value of each agent for a good is adversarially chosen when the good arrives. We first observe that no online algorithm can achieve a competitive ratio better than the trivial $O(N)$, unless it is given additional information about the agents' values. Then, in line with the emerging area of "algorithms with predictions", we consider a setting where for each agent, the online algorithm is only given a prediction of her monopolist utility, i.e., her utility if all goods were given to her alone (corresponding to the sum of her values over the $T$ periods). Our main result is an online algorithm whose competitive ratio is parameterized by the multiplicative errors in these predictions. The algorithm achieves a competitive ratio of $O(\log N)$ and $O(\log T)$ if the predictions are perfectly accurate. Moreover, the competitive ratio degrades smoothly with the errors in the predictions, and is surprisingly robust: the logarithmic competitive ratio holds even if the predictions are very inaccurate. We complement this positive result by showing that our bounds are essentially tight: no online algorithm, even if provided with perfectly accurate predictions, can achieve a competitive ratio of $O(\log^{1-\epsilon} N)$ or $O(\log^{1-\epsilon} T)$ for any constant $\epsilon>0$.
翻译:我们考虑在网上将一组可变货物分配给美元代理商的问题,目的是最大限度地实现纳什社会福利,这是一个广泛研究的目标,它提供了公平与效率之间的平衡。货物到达的顺序是美元,而每个代理商对货物的价值在货物到来时是敌对选择的。我们首先发现,任何在线算法都不可能实现比小额美元(N)更好的竞争比率,除非能提供有关代理人价值的额外信息。然后,根据新兴的“有预测的等级”领域,我们考虑设定每个代理商的在线算法只能预测其单一的效用,即,如果所有货物都交给她(相当于她对美元交易期的价值总额)。我们的主要结果是一个在线算法,其竞争比率由这些预测中的多重错误来比较。 算法可以达到美元(N)和美元(T)的竞争性比率,如果我们准确的预测是准确的,那么,如果我们准确的预测是准确的,那么,则网络算法将达到美元($)。