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Local Optima Avoidance in GA Biclustering using Map Reduce

机译:使用Map Reduce在GA聚类中避免局部最优

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摘要

One of the prominent issues in Genetic Algorithm (GA) is premature convergence on local optima. This restricts the enhanced optimal solution searching in the entire search space. Population size is one of the influencing factors in Genetic Algorithm. Increasing the population size will improvise the randomized searching and maintains the diversity in the population. It also increases its computational complexity. Especially in GA Biclustering (GABiC), the search should be randomized to find more optimal patterns. In this paper, a novel approach for population setup in MapReduce framework is proposed. The maximal population is split into population sets, and these groups will proceed searching in parallel using MapReduce framework. This approach is attempted for biclustering the gene expression dataset in this paper. The performance of this proposed work seems promising on comparing its results with those obtained from previous hybridized optimization approaches. This approach will also handle data scalability issues and applicable to the big data biclustering problems.
机译:遗传算法(GA)中的突出问题之一是局部最优解的过早收敛。这限制了在整个搜索空间中增强的最佳解决方案搜索。种群大小是遗传算法的影响因素之一。人口规模的增加将简化随机搜索并保持人口多样性。这也增加了其计算复杂度。特别是在GA Biclustering(GABiC)中,应将搜索随机化以找到更多最佳模式。本文提出了一种新的MapReduce框架下人口设置的方法。最大人口被分为人口集合,这些群体将使用MapReduce框架并行进行搜索。本文尝试将这种方法用于构建基因表达数据集。将其结果与从先前的杂交优化方法获得的结果进行比较,这项拟议工作的性能似乎很有希望。这种方法还将处理数据可伸缩性问题,并适用于大数据合并问题。

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