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A search space enhanced modified whale optimization algorithm for feature selection in large-scale microarray datasets

机译:用于大规模微阵列数据集中的特征选择的搜索空间增强的修改鲸优化算法

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Objectives: To enhance the microarray data classification accuracy, to accelerate the convergence speed of classifier, and Modified Whale Optimization Algorithm (MWOA), refine the best balance among local exploitation and global exploration, a Search space enhanced Modified Whale Optimization Algorithm (SMWOA) is the proposed task. Methods: The SMWOA selects the optimal features stands on the Levy flight method and quadratic interpolation method. Levy flight which employs for acceleration convergence speed of SMWOA andalso holds the result from local optima builds up by the population assortment.A quadratic interpolation takes up the exploitation stage for deeper searching within the search area. Finding: In addition to this, a self-adaptive control parameter is introduced to make a clear variation to the solution quality. Itrefines the best equity among the local exploitation method by global exploration method. After selection of features, those are processed in Na?ve Bayes (NB), Support Vector Machine (SVM), K-Nearest Neighbor (KNN), and Artificial Neural Network (ANN) classifiers for cancer detection. Novelty: The classification accuracy is improved by processing the most discriminative features in the classifiers. The overall accuracy, specificity, sensitivity, F1-score and average error of SMWOA-ANN are 6.7%, 5.6%, 7.3% and 5.6% greater than MWOA-ANN respectively for cancer detection.
机译:目标:为了提高微阵列数据分类准确性,加速分类器的收敛速度,并修改鲸鱼优化算法(MWOA),优化当地开发和全局探索之间的最佳平衡,搜索空间增强的修改鲸优化算法(SMWOA)是拟议的任务。方法:SMWOA选择最佳特征代表征收飞行方法和二次插值方法。利用用于SMWOA ANDALSO的加速融合速度的征收航班占据了本地Optima的结果,由人口分类构建。二次插值占据了搜索区域内更深入搜索的开发阶段。寻找:除此之外,还引入了自适应控制参数,以对解决方案质量进行明显的变化。通过全球勘探方法诠释了本地开发方法中的最佳公平。在选择特征后,在Naα贝雷斯(NB),支持向量机(SVM),K最近邻(KNN)和人工神经网络(ANN)分类器中加工,用于癌症检测。新颖性:通过处理分类器中最辨别的特征来改善分类准确性。 SMWOA-ANN的总体准确性,特异性,敏感度,F1分和平均误差分别比MWOA-ANN的6.7%,5.6%,7.3%和5.6%,用于癌症检测。

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