Nash welfare maximization is widely studied because it balances efficiency and fairness in resource allocation problems. Banerjee, Gkatzelis, Gorokh, and Jin (2022) recently introduced the model of online Nash welfare maximization with predictions for $T$ divisible items and $N$ agents with additive utilities. They gave online algorithms whose competitive ratios are logarithmic. We initiate the study of online Nash welfare maximization \emph{without predictions}, assuming either that the agents' utilities for receiving all items differ by a bounded ratio, or that their utilities for the Nash welfare maximizing allocation differ by a bounded ratio. We design online algorithms whose competitive ratios only depend on the logarithms of the aforementioned ratios of agents' utilities and the number of agents.
翻译:对纳什福利最大化进行了广泛研究,因为它平衡了资源分配问题的效率和公平性。 Banerjee、Gkatzelis、Goroh和Jin(2022年)最近引入了在线纳什福利最大化模式,预测了可变美元项目和具有添加公用事业的N美元代理商。他们给出了竞争性比率为对数的在线算法。我们开始研究在线纳什福利最大化(不作预测 ), 假设接受所有项目的代理商的公用事业因约束比率而不同, 或他们用于纳什福利的公用事业因约束比率而不同。 我们设计了在线算法,其竞争比率仅取决于上述代理商公用事业比率的对数和代理商数目。