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RL4CO: an Extensive Reinforcement Learning for Combinatorial Optimization Benchmark

29 June 2023
Federico Berto
Chuanbo Hua
Junyoung Park
Laurin Luttmann
Yining Ma
Fanchen Bu
Jiarui Wang
Haoran Ye
Minsu Kim
Sanghyeok Choi
Nayeli Gast Zepeda
André Hottung
Jianan Zhou
Jieyi Bi
Yu Hu
Fei Liu
Hyeon-Seob Kim
Jiwoo Son
Haeyeon Kim
Davide Angioni
Wouter Kool
Zhiguang Cao
Qingfu Zhang
Joungho Kim
Jie Zhang
Kijung Shin
Cathy Wu
Sungsoo Ahn
Guojie Song
Changhyun Kwon
Kevin Tierney
Lin Xie
Jinkyoo Park
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Abstract

Deep reinforcement learning (RL) has recently shown significant benefits in solving combinatorial optimization (CO) problems, reducing reliance on domain expertise, and improving computational efficiency. However, the field lacks a unified benchmark for easy development and standardized comparison of algorithms across diverse CO problems. To fill this gap, we introduce RL4CO, a unified and extensive benchmark with in-depth library coverage of 23 state-of-the-art methods and more than 20 CO problems. Built on efficient software libraries and best practices in implementation, RL4CO features modularized implementation and flexible configuration of diverse RL algorithms, neural network architectures, inference techniques, and environments. RL4CO allows researchers to seamlessly navigate existing successes and develop their unique designs, facilitating the entire research process by decoupling science from heavy engineering. We also provide extensive benchmark studies to inspire new insights and future work. RL4CO has attracted numerous researchers in the community and is open-sourced at https://github.com/ai4co/rl4co.

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