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Biclustering of Microarray Data Employing Multiobjective GA

机译:采用多目标遗传算法的微阵列数据分类

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In genetic research, microarray technology is rapidly growing and gaining importance because of its capacity of measuring multiple genes simultaneously. Biclustering of microarray data is an efficient data mining technique to gain knowledge regarding the functional behaviour of multiple genes under a set of experimental states. In this work, sequential GA using weighted sum approach is first implemented to derive good quality biclusters. The multiple objective functions are mapped to single objective function using weighted sum approach; however, the primary challenge lies in deriving the accurate weight values. To overcome this drawback of sequential GA, NSGA-II is adopted for solving multiobjective optimization problem. To further improve the performance of NSGA-II, an adaptive feature is incorporated in NSGA-II. All the three approaches were experimented on yeast Saccharomyces Cerevisiae data set and efficiency of individual approaches are discussed.
机译:在基因研究中,微阵列技术由于能够同时测量多个基因的能力而迅速发展并变得越来越重要。微阵列数据的聚类是一种有效的数据挖掘技术,可用于获取有关一组实验状态下多个基因的功能行为的知识。在这项工作中,首先实现了使用加权和方法的顺序GA,以得出高质量的双簇。使用加权和方法将多个目标函数映射为单个目标函数;但是,主要挑战在于得出准确的体重值。为了克服顺序遗传算法的缺点,采用NSGA-II算法解决了多目标优化问题。为了进一步提高NSGA-II的性能,在NSGA-II中加入了自适应功能。这三种方法都在酵母酿酒酵母数据集上进行了实验,并讨论了每种方法的效率。

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