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A Comparative Analysis of Rough Set Based Intelligent Techniques for Unsupervised Gene Selection

机译:基于粗糙集的无监督基因选择智能技术比较分析

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摘要

As the micro array databases increases in dimension and results in complexity, identifying the most informative genes is a challenging task. Such difficulty is often related to the huge number of genes with very few samples. Research in medical data mining addresses this problem by applying techniques from data mining and machine learning to the micro array datasets. In this paper Unsupervised Tolerance Rough Set based Quick Reduct (U-TRS-QR), a diverse feature selection algorithm, which extends the existing equivalent rough sets for unsupervised learning, is proposed. Genes selected by the proposed method leads to a considerably improved class predictions in wide experiments on two gene expression datasets: Brain Tumor and Colon Cancer The results indicate consistent improvement among 12 classifiers.
机译:随着微阵列数据库尺寸的增加和复杂性的提高,鉴定信息最多的基因是一项艰巨的任务。这种困难通常与样本很少的大量基因有关。医学数据挖掘的研究通过将数据挖掘和机器学习技术应用于微阵列数据集来解决此问题。在本文中,提出了一种基于非监督公差粗糙集的快速约简算法(U-TRS-QR),该算法扩展了现有的等效粗糙集用于非监督学习的多样化特征选择算法。通过提议的方法选择的基因可以在两个基因表达数据集(脑肿瘤和结肠癌)的广泛实验中显着改善类别预测。结果表明12个分类器之间的一致性得到了持续改善。

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