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Maximum correlation minimum redundancy in weighted gene selection

机译:加权基因选择中的最大相关性最小冗余

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Microarray technology has been recently used to analyze the behavior of thousands of genes simultaneously, and have an important role in diagnosis, detection and treatment methods. Reducing the size of the attributes (genes) with high potential for classification of microarray data analysis is thus an important goal. In this paper, we propose a new feature selection method based on maximum correlation and minimum redundancy (MCMR). In addition, a new method for weighting the genes has been introduced to select a final set of genes within all participated genes in cross validation procedure. The performance of proposed have been analyzed on two microarray data sets: colon cancer and breast cancer dataset. The results show that MCMR can increase the classification accuracy as well as reducing the number of selected genes significantly, compare to some other gene selection methods such as SNR (signal to noise ratio), PCC (Pearson Correlation Coefficient) and Fisher score.
机译:微阵列技术已被用来同时分析成千上万基因的行为,并且在诊断,检测和治疗方法中具有重要作用。因此,减少具有高潜力的属性(基因)的大小,以进行微阵列数据分析的分类是一个重要目标。在本文中,我们提出了一种基于最大相关和最小冗余(MCMR)的新特征选择方法。另外,已经引入了一种重量基因的新方法,以在交叉验证程序中选择所有参与基因内的最终基因组。已经在两种微阵列数据集中分析了提出的性能:结肠癌和乳腺癌数据集。结果表明,MCMR可以提高分类精度,并显着降低所选基因的数量,与其他一些基因选择方法(如SNR(信噪比),PCC(Pearson相关系数)和Fisher分数)进行比较。

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