In this work, we present the Bregman Alternating Projected Gradient (BAPG) method, a single-loop algorithm that offers an approximate solution to the Gromov-Wasserstein (GW) distance. We introduce a novel relaxation technique that balances accuracy and computational efficiency, albeit with some compromises in the feasibility of the coupling map. Our analysis is based on the observation that the GW problem satisfies the Luo-Tseng error bound condition, which relates to estimating the distance of a point to the critical point set of the GW problem based on the optimality residual. This observation allows us to provide an approximation bound for the distance between the fixed-point set of BAPG and the critical point set of GW. Moreover, under a mild technical assumption, we can show that BAPG converges to its fixed point set. The effectiveness of BAPG has been validated through comprehensive numerical experiments in graph alignment and partition tasks, where it outperforms existing methods in terms of both solution quality and wall-clock time.
翻译:在这项工作中,我们提出了布雷格曼变换预测渐变法(BAPG)方法,这是一种单环算法,为格罗莫夫-瓦瑟斯坦(GW)距离提供了近似的解决办法。我们采用了一种新的放松技术,平衡准确性和计算效率,尽管在组合图的可行性方面有些妥协。我们的分析基于这样一种观察,即GW问题满足了Luo-Tseng错误约束条件,该条件涉及根据最佳性残留量估计一个点与GW问题临界点的距离。这一观察使我们能够为BAPG固定点与GW临界点之间的距离提供一个近似值。此外,在一种温和的技术假设下,我们可以表明BAPG与其固定点的一致。BAPG的有效性通过图形对齐和分隔任务的全面数字试验得到了验证,在其中它超越了现有方法的解决方案质量和墙时钟时间。</s>