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From cancer gene expression data to simple vital rules

机译:从癌症基因表达数据到简单的重要规则

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Microarray gene expression profiling technology generates huge high-dimensional data. Finding analysis techniques that can cope with such data characteristics is crucial in Bioinformatics. This paper proposes a variation of an ensemble learning approach combined with a clustering technique to extract “simple” and yet “vital” rules from genomic data. The paper describes the approach and evaluates it on cancer gene expression data sets. We report experimental results including comparisons with other results obtained from a similar ensemble learning approach as well as some sophisticated techniques such as support vector machines.
机译:微阵列基因表达谱分析技术产生了大量的高维数据。寻找能够应对此类数据特征的分析技术在生物信息学中至关重要。本文提出了一种集成学习方法的变体,该方法结合了聚类技术,可从基因组数据中提取“简单”而又“重要”的规则。本文描述了该方法,并在癌症基因表达数据集上对其进行了评估。我们报告了实验结果,包括与从类似的集成学习方法以及一些复杂的技术(如支持向量机)获得的其他结果进行比较。

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