论文标题
神经组合优化:该领域的新玩家
Neural Combinatorial Optimization: a New Player in the Field
论文作者
论文摘要
神经组合优化试图学习良好的启发式方法,以使用神经网络模型和增强学习来解决一系列问题。最近,其良好的表现鼓励许多从业者开发出各种组合问题的神经体系结构。但是,将这种算法纳入常规优化框架中,提出了许多与其性能以及实验比较有关的问题,以及其他方法,例如精确算法,启发式方法和元启发式学。本文介绍了基于神经网络纳入经典组合优化框架的算法的关键分析。随后,进行了一项全面的研究,以分析此类算法的基本方面,包括性能,可转移性,计算成本和对大型实例的概括。为此,我们选择线性排序问题作为研究的情况,NP硬性问题,并开发神经组合优化模型以优化它。最后,我们讨论了分析方面如何应用于一般学习框架,并为神经组合优化算法领域的未来工作提出了新的方向。
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems using Neural Network models and Reinforcement Learning. Recently, its good performance has encouraged many practitioners to develop neural architectures for a wide variety of combinatorial problems. However, the incorporation of such algorithms in the conventional optimization framework has raised many questions related to their performance and the experimental comparison with other methods such as exact algorithms, heuristics and metaheuristics. This paper presents a critical analysis on the incorporation of algorithms based on neural networks into the classical combinatorial optimization framework. Subsequently, a comprehensive study is carried out to analyse the fundamental aspects of such algorithms, including performance, transferability, computational cost and generalization to larger-sized instances. To that end, we select the Linear Ordering Problem as a case of study, an NP-hard problem, and develop a Neural Combinatorial Optimization model to optimize it. Finally, we discuss how the analysed aspects apply to a general learning framework, and suggest new directions for future work in the area of Neural Combinatorial Optimization algorithms.