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Precise Feature Selection in Predictive Genetic Models using Grey Wolf Optimization Algorithm

机译:使用灰狼优化算法预测遗传模型精确特征选择

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Genetic models are overarching ideas on how genes work in individuals to affect phenotypes. The process of feature selection is a vital process to be merged in the genetic model. Genetic models specifically relate genotype to phenotype. In lots of instances, the found facts are steady with those sorts of fashions and a few analyses of genetic records are in large part descriptive. The feature selection process in genetic models faces some difficulties arising from the correlation structures present in DNA structure data. An optimization algorithm is neededto solve these difficulties The main objective of this paper is to introduce an accurate feature selection process in genetic models. This aim is verified using an accurate and green optimization algorithm entitled grey Wolf Optimization algorithm GWO. The results depict that GWO solve the problem of the correlation structures in DNA sequence data more precise and efficiently with average efficiency equals 1.19E+02.
机译:遗传模型是关于基因如何在个人中如何影响表型的总体思考。特征选择的过程是在遗传模型中合并的重要过程。遗传模型特异性地将基因型与表型相关。在许多情况下,发现的事实稳定,这些时尚和遗传记录的一些分析都是大部分描述性的。基因模型中的特征选择过程面临来自DNA结构数据中存在的相关结构引起的一些困难。优化算法需要解决这些困难本文的主要目的是在遗传模型中引入准确的特征选择过程。使用题为灰羽优化算法GWO的精确和绿色优化算法来验证此目的。结果描绘了GWO在DNA序列数据中更精确且有效地解决了DNA序列数据中的相关结构的问题,其平均效率等于1.19E + 02。

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