41008@AAAI

Total: 1

#1 Minimum-Cost Network Flow with Dual Predictions [PDF] [Copy] [Kimi] [REL]

Authors: Zhiyang Chen, Hailong Yao, Xia Yin

Recent work has shown that machine-learned predictions can provably improve the performance of classic algorithms. In this work, we propose the first minimum-cost network flow algorithm augmented with a dual prediction. Our method is based on a classic minimum-cost flow algorithm, namely ε-relaxation. We provide time complexity bounds in terms of the infinity norm prediction error, which is both consistent and robust. We also prove sample complexity bounds for PAC-learning the prediction. We empirically validate our theoretical results on two applications of minimum-cost flow, i.e., traffic networks and chip escape routing, in which we learn a fixed prediction, and a feature-based neural network model to infer the prediction, respectively. Experimental results illustrate 12.74× and 1.64× average speedup on two applications.

Subject: AAAI.2026 - Search and Optimization