计算机科学
旅行商问题
可扩展性
标杆管理
人工智能
试验台
一般化
组合优化
强化学习
启发式
水准点(测量)
优势和劣势
理论(学习稳定性)
数学优化
机器学习
理论计算机科学
算法
数学
操作系统
营销
地理
业务
哲学
数学分析
认识论
数据库
计算机网络
大地测量学
作者
Shengcai Liu,Yu Zhang,Ke Tang,Xin Yao
标识
DOI:10.1109/mci.2023.3277768
摘要
Traditional solvers for tackling combinatorial optimization (CO) problems are usually designed by human experts. Recently, there has been a surge of interest in utilizing deep learning, especially deep reinforcement learning, to automatically learn effective solvers for CO. The resultant new paradigm is termed neural combinatorial optimization (NCO). However, the advantages and disadvantages of NCO relative to other approaches have not been empirically or theoretically well studied. This work presents a comprehensive comparative study of NCO solvers and alternative solvers. Specifically, taking the traveling salesman problem as the testbed problem, the performance of the solvers is assessed in five aspects, i.e., effectiveness, efficiency, stability, scalability, and generalization ability. Our results show that the solvers learned by NCO approaches, in general, still fall short of traditional solvers in nearly all these aspects. A potential benefit of NCO solvers would be their superior time and energy efficiency for small-size problem instances when sufficient training instances are available. Hopefully, this work would help with a better understanding of the strengths and weaknesses of NCO and provide a comprehensive evaluation protocol for further benchmarking NCO approaches in comparison to other approaches.
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