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首页> 外文期刊>Evolutionary Computation, IEEE Transactions on >Transforming Evolutionary Search into Higher-Level Evolutionary Search by Capturing Problem Structure
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Transforming Evolutionary Search into Higher-Level Evolutionary Search by Capturing Problem Structure

机译:通过捕获问题结构将进化搜索转化为高级进化搜索

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摘要

The intuitive idea that good solutions to small problems can be reassembled into good solutions to larger problems is widely familiar in many fields including evolutionary computation. This idea has motivated the building-block hypothesis and model-building optimization methods that aim to identify and exploit problem structure automatically. Recently, a small number of works make use of such ideas by learning problem structure and using this information in a particular manner: these works use the results of a simple search process in primitive units to identify structural correlations (such as modularity) in the problem that are then used to redefine the variational operators of the search process. This process is applied recursively such that search operates at successively higher scales of organization, hence multi-scale search. Here, we show for the first time that there is a simple class of (modular) problems that a multi-scale search algorithm can solve in polynomial time that requires super-polynomial time for other methods. We discuss strengths and limitations of the multi-scale search approach and note how it can be developed further.
机译:可以将小问题的好的解决方案重新组合为大问题的好的解决方案的直观想法在包括进化计算在内的许多领域中已广为所知。这个想法激发了旨在自动识别和利用问题结构的构件假设和模型构建优化方法。最近,少数作品通过学习问题结构并以特定方式使用此信息来利用这些思想:这些作品使用原始单位中简单搜索过程的结果来识别问题中的结构相关性(例如模块性)然后用于重新定义搜索过程的变分运算符。递归应用此过程,以使搜索在组织的更高级别上连续进行,因此,多级别搜索。在这里,我们首次展示了一个简单的(模块化)问题类别,多尺度搜索算法可以在多项式时间内解决该问题,而其他方法则需要超多项式时间。我们讨论了多尺度搜索方法的优点和局限性,并指出了如何进一步发展。

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