Learning feature embedding refiner for solving vehicle routing problems
While the encoder-decoder structure is widely used in the recent neural construction methods for learning to solve vehicle routing problems (VRPs), they are less effective in searching solutions due to deterministic feature embeddings and deterministic probability distributions. In this article, we...
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sg-ntu-dr.10356-1718042023-11-08T04:26:23Z Learning feature embedding refiner for solving vehicle routing problems Li, Jingwen Ma, Yining Cao, Zhiguang Wu, Yaoxin Song, Wen Zhang, Jie Chee, Yeow Meng School of Computer Science and Engineering Engineering::Computer science and engineering Encoder–decoder Structure Neural Combinatorial Optimization While the encoder-decoder structure is widely used in the recent neural construction methods for learning to solve vehicle routing problems (VRPs), they are less effective in searching solutions due to deterministic feature embeddings and deterministic probability distributions. In this article, we propose the feature embedding refiner (FER) with a novel and generic encoder-refiner-decoder structure to boost the existing encoder-decoder structured deep models. It is model-agnostic that the encoder and the decoder can be from any pretrained neural construction method. Regarding the introduced refiner network, we design its architecture by combining the standard gated recurrent units (GRU) cell with two new layers, i.e., an accumulated graph attention (AGA) layer and a gated nonlinear (GNL) layer. The former extracts dynamic graph topological information of historical solutions stored in a diversified solution pool to generate aggregated pool embeddings that are further improved by the GRU, and the latter adaptively refines the feature embeddings from the encoder with the guidance of the improved pool embeddings. To this end, our FER allows current neural construction methods to not only iteratively refine the feature embeddings for boarder search range but also dynamically update the probability distributions for more diverse search. We apply FER to two prevailing neural construction methods including attention model (AM) and policy optimization with multiple optima (POMO) to solve the traveling salesman problem (TSP) and the capacitated VRP (CVRP). Experimental results show that our method achieves lower gaps and better generalization than the original ones and also exhibits competitive performance to the state-of-the-art neural improvement methods. Agency for Science, Technology and Research (A*STAR) This work was supported in part by the National Natural Science Foundation of China under Grant 62102228, in part by the Natural Science Foundation of Shandong Province under Grant ZR2021QF063, and in part by the Agency for Science Technology and Research Career Development Fund under Grant C222812027. 2023-11-08T04:26:23Z 2023-11-08T04:26:23Z 2023 Journal Article Li, J., Ma, Y., Cao, Z., Wu, Y., Song, W., Zhang, J. & Chee, Y. M. (2023). Learning feature embedding refiner for solving vehicle routing problems. IEEE Transactions On Neural Networks and Learning Systems. https://dx.doi.org/10.1109/TNNLS.2023.3285077 2162-237X https://hdl.handle.net/10356/171804 10.1109/TNNLS.2023.3285077 37352084 2-s2.0-85163495333 en C222812027 IEEE Transactions on Neural Networks and Learning Systems © 2023 IEEE. All rights reserved. |
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Engineering::Computer science and engineering Encoder–decoder Structure Neural Combinatorial Optimization Li, Jingwen Ma, Yining Cao, Zhiguang Wu, Yaoxin Song, Wen Zhang, Jie Chee, Yeow Meng Learning feature embedding refiner for solving vehicle routing problems |
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While the encoder-decoder structure is widely used in the recent neural construction methods for learning to solve vehicle routing problems (VRPs), they are less effective in searching solutions due to deterministic feature embeddings and deterministic probability distributions. In this article, we propose the feature embedding refiner (FER) with a novel and generic encoder-refiner-decoder structure to boost the existing encoder-decoder structured deep models. It is model-agnostic that the encoder and the decoder can be from any pretrained neural construction method. Regarding the introduced refiner network, we design its architecture by combining the standard gated recurrent units (GRU) cell with two new layers, i.e., an accumulated graph attention (AGA) layer and a gated nonlinear (GNL) layer. The former extracts dynamic graph topological information of historical solutions stored in a diversified solution pool to generate aggregated pool embeddings that are further improved by the GRU, and the latter adaptively refines the feature embeddings from the encoder with the guidance of the improved pool embeddings. To this end, our FER allows current neural construction methods to not only iteratively refine the feature embeddings for boarder search range but also dynamically update the probability distributions for more diverse search. We apply FER to two prevailing neural construction methods including attention model (AM) and policy optimization with multiple optima (POMO) to solve the traveling salesman problem (TSP) and the capacitated VRP (CVRP). Experimental results show that our method achieves lower gaps and better generalization than the original ones and also exhibits competitive performance to the state-of-the-art neural improvement methods. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Li, Jingwen Ma, Yining Cao, Zhiguang Wu, Yaoxin Song, Wen Zhang, Jie Chee, Yeow Meng |
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Article |
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Li, Jingwen Ma, Yining Cao, Zhiguang Wu, Yaoxin Song, Wen Zhang, Jie Chee, Yeow Meng |
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Li, Jingwen |
title |
Learning feature embedding refiner for solving vehicle routing problems |
title_short |
Learning feature embedding refiner for solving vehicle routing problems |
title_full |
Learning feature embedding refiner for solving vehicle routing problems |
title_fullStr |
Learning feature embedding refiner for solving vehicle routing problems |
title_full_unstemmed |
Learning feature embedding refiner for solving vehicle routing problems |
title_sort |
learning feature embedding refiner for solving vehicle routing problems |
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2023 |
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https://hdl.handle.net/10356/171804 |
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1783955613447880704 |