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Main Authors: Liu, Huaiyuan, Liu, Xianzhang, Yang, Donghua, Wang, Hongzhi, Long, Yingchi, Ji, Mengtong, Miao, Dongjing, Liang, Zhiyu
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.08484
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author Liu, Huaiyuan
Liu, Xianzhang
Yang, Donghua
Wang, Hongzhi
Long, Yingchi
Ji, Mengtong
Miao, Dongjing
Liang, Zhiyu
author_facet Liu, Huaiyuan
Liu, Xianzhang
Yang, Donghua
Wang, Hongzhi
Long, Yingchi
Ji, Mengtong
Miao, Dongjing
Liang, Zhiyu
contents The Maximum Minimal Cut Problem (MMCP), a NP-hard combinatorial optimization (CO) problem, has not received much attention due to the demanding and challenging bi-connectivity constraint. Moreover, as a CO problem, it is also a daunting task for machine learning, especially without labeled instances. To deal with these problems, this work proposes an unsupervised learning framework combined with heuristics for MMCP that can provide valid and high-quality solutions. As far as we know, this is the first work that explores machine learning and heuristics to solve MMCP. The unsupervised solver is inspired by a relaxation-plus-rounding approach, the relaxed solution is parameterized by graph neural networks, and the cost and penalty of MMCP are explicitly written out, which can train the model end-to-end. A crucial observation is that each solution corresponds to at least one spanning tree. Based on this finding, a heuristic solver that implements tree transformations by adding vertices is utilized to repair and improve the solution quality of the unsupervised solver. Alternatively, the graph is simplified while guaranteeing solution consistency, which reduces the running time. We conduct extensive experiments to evaluate our framework and give a specific application. The results demonstrate the superiority of our method against two techniques designed.
format Preprint
id arxiv_https___arxiv_org_abs_2408_08484
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An Unsupervised Learning Framework Combined with Heuristics for the Maximum Minimal Cut Problem
Liu, Huaiyuan
Liu, Xianzhang
Yang, Donghua
Wang, Hongzhi
Long, Yingchi
Ji, Mengtong
Miao, Dongjing
Liang, Zhiyu
Artificial Intelligence
Machine Learning
The Maximum Minimal Cut Problem (MMCP), a NP-hard combinatorial optimization (CO) problem, has not received much attention due to the demanding and challenging bi-connectivity constraint. Moreover, as a CO problem, it is also a daunting task for machine learning, especially without labeled instances. To deal with these problems, this work proposes an unsupervised learning framework combined with heuristics for MMCP that can provide valid and high-quality solutions. As far as we know, this is the first work that explores machine learning and heuristics to solve MMCP. The unsupervised solver is inspired by a relaxation-plus-rounding approach, the relaxed solution is parameterized by graph neural networks, and the cost and penalty of MMCP are explicitly written out, which can train the model end-to-end. A crucial observation is that each solution corresponds to at least one spanning tree. Based on this finding, a heuristic solver that implements tree transformations by adding vertices is utilized to repair and improve the solution quality of the unsupervised solver. Alternatively, the graph is simplified while guaranteeing solution consistency, which reduces the running time. We conduct extensive experiments to evaluate our framework and give a specific application. The results demonstrate the superiority of our method against two techniques designed.
title An Unsupervised Learning Framework Combined with Heuristics for the Maximum Minimal Cut Problem
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2408.08484