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A Multivariate Algorithm for Gene Selection Based on the Nearest Neighbor Probability

机译:基于最近邻概率的基因选择多元算法

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Experiments performed with DNA microarrays have very often the aim of retrieving a subset of genes involved in the discrimination between two physiological or pathological states (e.g. ill/healthy). Many methods have been proposed to solve this problem, among which the Signal to Noise ratio (S2N) [5] and SVM-RFE [6]. Recently, the complementary approach to RFE, called Recursive Feature Addition (RFA), has been successfully adopted. According to this approach, at each iteration the gene which maximizes a proper ranking function Φ is selected, thus producing an ordering among the considered genes. In this paper an RFA method based on the nearest neighbor probability, named NN-RFA, is described and tested on some real world problems regarding the classification of human tissues. The results of such simulations show the ability of NN-RFA in retrieving a correct subset of genes for the problems at hand.
机译:用DNA微阵列进行的实验通常具有检索参与在两个生理或病理状态(例如ILL / HEACTION)之间涉及歧视的基因子集的目的。已经提出了许多方法来解决这个问题,其中信噪比(S2N)[5]和SVM-RFE [6]。最近,已成功采用了RFE的互补方法,称为递归特征添加(RFA)。根据这种方法,在每次迭代时,选择最大化适当的排名功能φ的基因,从而在所考虑的基因中产生排序。在本文中,描述并测试了基于名为NN-RFA的最接近邻近概率的RFA方法,并在有关人体组织分类的一些现实世界问题上进行测试。这种模拟的结果显示了NN-RFA在检索手中问题的正确基因子集中的能力。

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