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Cultural algorithms: modeling of how cultures learn to solve problems

机译:文化算法:文化学习如何解决问题的建模

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Previous work on real-valued function optimization problems had shown that cultural learning emerged as the result of meta-level interaction or swarming of knowledge sources, "knowledge swarms" in the belief space. These meta-level swarms induced the swarming of individuals in the population space, "cultural swarms". The interaction of these knowledge source produced emergent phases of problem solving that reflected a branch and bound algorithmic process. We apply the approach to a real-world problem in engineering design. We observe the emergence of these same features in a completely different problem environment. We conclude by suggesting the emergent features are what give cultural systems their power to learn and adapt.
机译:以前关于实值函数优化问题的研究表明,文化学习是由于元级交互作用或知识源(即信仰空间中的“知识群”)的泛滥而产生的。这些元级别的群体引发了人口空间中的个人群体,即“文化群体”。这些知识源的交互产生了问题解决的新兴阶段,这些阶段反映了分支定界算法过程。我们将该方法应用于工程设计中的实际问题。我们观察到在完全不同的问题环境中这些相同功能的出现。最后,我们建议新兴特征是赋予文化系统学习和适应能力的因素。

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