HGCN2SP: Hierarchical Graph Convolutional Network for Two-Stage Stochastic Programming
November 20, 2025 ยท Declared Dead ยท ๐ International Conference on Machine Learning
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Authors
Yang Wu, Yifan Zhang, Zhenxing Liang, Jian Cheng
arXiv ID
2511.16027
Category
cs.LG: Machine Learning
Cross-listed
cs.AI
Citations
4
Venue
International Conference on Machine Learning
Last Checked
4 months ago
Abstract
Two-stage Stochastic Programming (2SP) is a standard framework for modeling decision-making problems under uncertainty. While numerous methods exist, solving such problems with many scenarios remains challenging. Selecting representative scenarios is a practical method for accelerating solutions. However, current approaches typically rely on clustering or Monte Carlo sampling, failing to integrate scenario information deeply and overlooking the significant impact of the scenario order on solving time. To address these issues, we develop HGCN2SP, a novel model with a hierarchical graph designed for 2SP problems, encoding each scenario and modeling their relationships hierarchically. The model is trained in a reinforcement learning paradigm to utilize the feedback of the solver. The policy network is equipped with a hierarchical graph convolutional network for feature encoding and an attention-based decoder for scenario selection in proper order. Evaluation of two classic 2SP problems demonstrates that HGCN2SP provides high-quality decisions in a short computational time. Furthermore, HGCN2SP exhibits remarkable generalization capabilities in handling large-scale instances, even with a substantial number of variables or scenarios that were unseen during the training phase.
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