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Structural transfer using EDAs: An application to multi-marker tagging SNP selection

机译:使用EDA的结构转移:多标记标记SNP选择的应用

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In this paper we investigate the question of transfer learning in evolutionary optimization using estimation of distribution algorithms. We propose a framework for transfer learning between related optimization problems by means of structural transfer. Different methods for incrementing or replacing the (possibly unavailable) structural information of the target optimization problem are presented. As a test case we solve the multi-marker tagging single-nucleotide polymorphism (SNP) selection problem, a real world problem from genetics. The introduced variants of structural transfer are validated in the computation of tagging SNPs on a database of 1167 individuals from 58 human populations worldwide. Our experimental results show significant improvements over EDAs that do not incorporate information from related problems.
机译:在本文中,我们研究了使用分布算法估计的进化优化中的转移学习问题。我们提出了一种通过结构转移在相关优化问题之间转移学习的框架。提出了增加或替换目标优化问题的结构信息(可能不可用)的不同方法。作为测试案例,我们解决了多标记标记单核苷酸多态性(SNP)选择问题,这是遗传学中的一个现实世界问题。引入的结构转移变体在计算来自全球58个人口的1167个个体的数据库中的标记SNP的计算中得到了验证。我们的实验结果表明,与不包含相关问题信息的EDA相比,EDA有了显着改进。

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