Learning to solve routing problems via distributionally robust optimization
Recent deep models for solving routing problems always assume a single distribution of nodes for training, which severely impairs their cross-distribution generalization ability. In this paper, we exploit group distributionally robust optimization (group DRO) to tackle this issue, where we jointly o...
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sg-smu-ink.sis_research-91652023-09-26T10:37:06Z Learning to solve routing problems via distributionally robust optimization YUAN, Jiang WU, Yaoxin CAO, Zhiguang Recent deep models for solving routing problems always assume a single distribution of nodes for training, which severely impairs their cross-distribution generalization ability. In this paper, we exploit group distributionally robust optimization (group DRO) to tackle this issue, where we jointly optimize the weights for different groups of distributions and the parameters for the deep model in an interleaved manner during training. We also design a module based on convolutional neural network, which allows the deep model to learn more informative latent pattern among the nodes. We evaluate the proposed approach on two types of wellknown deep models including GCN and POMO. The experimental results on the randomly synthesized instances and the ones from two benchmark dataset (i.e., TSPLib and CVRPLib) demonstrate that our approach could significantly improve the cross-distribution generalization performance over the original models. 2022-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8162 https://ink.library.smu.edu.sg/context/sis_research/article/9165/viewcontent/Learning_to_Solve_Routing_Problems_via_Distributionally_Robust_Optimization.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Benchmark datasets Convolutional neural network Generalization ability Generalization performance Learn+ Module-based Original model Robust optimization Routing problems Synthesised Software Engineering Theory and Algorithms |
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Benchmark datasets Convolutional neural network Generalization ability Generalization performance Learn+ Module-based Original model Robust optimization Routing problems Synthesised Software Engineering Theory and Algorithms YUAN, Jiang WU, Yaoxin CAO, Zhiguang Learning to solve routing problems via distributionally robust optimization |
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Recent deep models for solving routing problems always assume a single distribution of nodes for training, which severely impairs their cross-distribution generalization ability. In this paper, we exploit group distributionally robust optimization (group DRO) to tackle this issue, where we jointly optimize the weights for different groups of distributions and the parameters for the deep model in an interleaved manner during training. We also design a module based on convolutional neural network, which allows the deep model to learn more informative latent pattern among the nodes. We evaluate the proposed approach on two types of wellknown deep models including GCN and POMO. The experimental results on the randomly synthesized instances and the ones from two benchmark dataset (i.e., TSPLib and CVRPLib) demonstrate that our approach could significantly improve the cross-distribution generalization performance over the original models. |
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YUAN, Jiang WU, Yaoxin CAO, Zhiguang |
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YUAN, Jiang WU, Yaoxin CAO, Zhiguang |
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YUAN, Jiang |
title |
Learning to solve routing problems via distributionally robust optimization |
title_short |
Learning to solve routing problems via distributionally robust optimization |
title_full |
Learning to solve routing problems via distributionally robust optimization |
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Learning to solve routing problems via distributionally robust optimization |
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Learning to solve routing problems via distributionally robust optimization |
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learning to solve routing problems via distributionally robust optimization |
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Institutional Knowledge at Singapore Management University |
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2022 |
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https://ink.library.smu.edu.sg/sis_research/8162 https://ink.library.smu.edu.sg/context/sis_research/article/9165/viewcontent/Learning_to_Solve_Routing_Problems_via_Distributionally_Robust_Optimization.pdf |
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