首页> 外文期刊>Journal of Bioinformatics and Computational Biology >REGULARIZATION STRATEGIES FOR HYPERPLANE CLASSIFIERS: APPLICATION TO CANCER CLASSIFICATION WITH GENE EXPRESSION DATA
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REGULARIZATION STRATEGIES FOR HYPERPLANE CLASSIFIERS: APPLICATION TO CANCER CLASSIFICATION WITH GENE EXPRESSION DATA

机译:超平面分类器的调节策略:在具有基因表达数据的癌症分类中的应用

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Linear discrimination, from the point of view of numerical linear algebra, can be treated as solving an ill-posed system of linear equations. In order to generate a solution that is robust in the presence of noise, these problems require regularization. Here, we examine the ill-posedness involved in the linear discrimination of cancer gene expression data with respect to outcome and tumor subclasses. We show that a filter factor representation, based upon Singular Value Decomposition, yields insight into the numerical ill-posedness of the hyperplane-based separation when applied to gene expression data. We also show that this representation yields useful diagnostic tools for guiding the selection of classifier parameters, thus leading to improved performance.
机译:从数值线性代数的观点来看,线性判别可被视为求解线性方程组的不适定系统。为了生成在存在噪声时鲁棒的解决方案,这些问题需要进行正则化。在这里,我们检查与结果和肿瘤亚类有关的癌症基因表达数据的线性判别所涉及的不适。我们表明,基于奇异值分解的过滤器因子表示形式,可以应用于基于超平面的分离的数值不适定性,并应用于基因表达数据时,可以得出深刻的见解。我们还表明,这种表示产生了有用的诊断工具,可指导选择分类器参数,从而提高性能。

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