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Fuzzy Logic for Elimination of Redundant Information of Microarray Data

机译:消除微阵列数据冗余信息的模糊逻辑

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摘要

Gene subset selection is essential for classification and analysis of microarray data. However, gene selection is known to be a very difficult task since gene expression data not only have high dimensionalities, but also contain redundant information and noises. To cope with these difficulties, this paper introduces a fuzzy logic based pre-processing approach composed of two main steps. First, we use fuzzy inference rules to transform the gene expression levels of a given dataset into fuzzy values. Then we apply a similarity relation to these fuzzy values to define fuzzy equivalence groups, each group containing strongly similar genes. Dimension reduction is achieved by considering for each group of similar genes a single representative based on mutual information. To assess the usefulness of this approach, extensive experimentations were carried out on three well-known public datasets with a combined classification model using three statistic filters and three classifiers.
机译:基因子集的选择对于微阵列数据的分类和分析至关重要。然而,已知基因选择是非常困难的任务,因为基因表达数据不仅具有高维,而且还包含冗余信息和噪音。为了解决这些困难,本文介绍了一种基于模糊逻辑的预处理方法,该方法包括两个主要步骤。首先,我们使用模糊推理规则将给定数据集的基因表达水平转换为模糊值。然后,我们对这些模糊值应用相似关系,以定义模糊对等组,每个组包含高度相似的基因。通过基于互信息为每组相似基因考虑一个单一的代表,可以实现降维。为了评估此方法的有效性,我们对三个知名的公共数据集进行了广泛的实验,并使用了三个统计过滤器和三个分类器,并建立了组合分类模型。

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