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An adaptive, multiple restarts neural network algorithm for graph coloring

机译:自适应的多次重启神经网络算法,用于图形着色

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摘要

The graph coloring problem is amongst the most difficult ones in combinatorial optimization, with a diverse set of significant applications in science and industry. Previous neural network attempts at coloring graphs have not worked well. In particular, they do not scale up to large graphs. Furthermore, experimental evaluations on real-world graphs have been lacking, and so have comparisons with state of the art conventional algorithms. In this paper we address all of these issues. We develop an improved neural network algorithm for graph coloring that scales well with graph size. The algorithm employs multiple restarts, and adaptively reduces the network's size from restart as it learns bettwe ways to color a given graph. Hence it gets faster and leaner as it evolves. We evaluate this algorithm on a structurally diverse set of graphs that arise in different applications. We compare its performance with that of a state of the art conventional algorithm on identical graphs. The conventional algorithm works better overall, though ours is not far behind. Ours works better on some graphs. The inherent parallel and distributed nature of our algorithm, especially within a neural network architecture, is a potential advantage for implementation and speed up.
机译:图形着色问题是组合优化中最困难的问题之一,在科学和工业中具有多种重要应用。先前的神经网络对图形进行着色的尝试效果不佳。特别是,它们不能按比例放大成大图。此外,缺乏对真实世界图的实验评估,因此也无法与现有技术进行比较。在本文中,我们解决了所有这些问题。我们为图形着色开发了一种改进的神经网络算法,该算法可随图形大小很好地缩放。该算法采用多次重新启动,并在学习到给定图形着色的方法后,自适应地减小了重新启动时网络的大小。因此,随着它的发展,它变得更快,更精简。我们在不同应用中出现的结构多样的图集上评估该算法。我们在相同的图形上将其性能与最先进的常规算法进行比较。常规算法总体上效果更好,尽管我们的算法并不落后。我们的图表在某些图表上效果更好。我们的算法固有的并行和分布式特性,尤其是在神经网络架构中,是实现和加速的潜在优势。

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