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Learning the Quality of Dispatch Heuristics Generated by Automated Programming

机译:学习由自动编程生成的调度试探法的质量

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One of the challenges within the area of optimisation, and AI in general, is to be able to support the automated creation of the heuristics that are often needed within effective algorithms. Such an example of automated programming may be performed by search within a space of heuristics that will be applied to a target domain. In this, brief proof-of-concept, paper, we consider the case of online bin-packing as the target domain, and consider the potential for machine learning methods to aid the associated automated programming problem. Simple numerical 'policy matrices' are used to represent heuristics, or 'dispatch policies', controlling the placement of item into bins as they arrive. We report on an initial investigation of the potential for neural nets to analyse and classify the resulting 'policy matrices', and find strong evidence that simple nets can be trained to learn to predict which heuristics, expressed as policy matrices, exhibit better or worse fitness. This gives the potential for them to be used as a surrogate fitness function to enhance the usage of search algorithms for finding heuristics. It also supports the prospect of using machine learning to extract the patterns that lead to successful heuristics, and so generate explanations and understanding of machine-generated heuristics.
机译:在优化领域(通常是AI)中,挑战之一是能够支持有效算法中经常需要的启发式算法的自动创建。可以通过在将应用于目标域的试探法空间内搜索来执行自动编程的这种示例。在这篇简短的概念验证论文中,我们将在线装箱的情况视为目标领域,并考虑使用机器学习方法来解决相关的自动编程问题的潜力。简单的数字“策略矩阵”用于表示试探法或“调度策略”,控制物品在到达箱中时的位置。我们报告了对神经网络分析和分类结果“策略矩阵”的潜力的初步调查,并找到了有力的证据表明可以训练简单的网络来学习预测哪些启发式算法(表示为策略矩阵)表现出更好或更坏的适应性。这使它们有可能用作替代适应度函数,以增强搜索算法查找启发式算法的使用。它还支持使用机器学习来提取导致成功的启发式学习的模式,从而产生对机器生成的启发式学习的解释和理解的前景。

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