We study the two-stage vertex-weighted online bipartite matching problem of Feng, Niazadeh, and Saberi (SODA 2021) in a setting where the algorithm has access to a suggested matching that is recommended in the first stage. We evaluate an algorithm by its robustness $R$, which is its performance relative to that of the optimal offline matching, and its consistency $C$, which is its performance when the advice or the prediction given is correct. We characterize for this problem the Pareto-efficient frontier between robustness and consistency, which is rare in the literature on advice-augmented algorithms, yet necessary for quantifying such an algorithm to be optimal. Specifically, we propose an algorithm that is $R$-robust and $C$-consistent for any $(R,C)$ with $0 \leq R \leq \frac{3}{4}$ and $\sqrt{1-R} + \sqrt{1-C} = 1$, and prove that no other algorithm can achieve a better tradeoff.
翻译:我们研究Feng、Niazadeh和Saberi(SODA 2021)两个阶段脊椎加权在线双边匹配问题,在算法能够获取第一阶段建议的建议匹配的环境下,我们根据它的稳健性来评估一个算法,即它的表现与最佳离线匹配的相对性,以及它的一致性(C$),即当给出的建议或预测正确时它的表现。我们对这个问题的特征是,强性和一致性之间的高效边界,在关于咨询强化算法的文献中这是罕见的,但这种算法的量化是最佳的。具体地说,我们建议的一种算法是美元-ROBust和美元-一致的,任何美元(R,C)为0 leq R\leq\leq\frac{3 ⁇ 4}和 $\ qrt{1-R}+\qrt{1-C} + 1美元,并证明其他算法都无法实现更好的交易。