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Model Instability in Microarray Gene Expression Class Prediction Studies

机译:微阵列基因表达类预测研究中的模型不稳定性

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This work is devoted to the problem of building a sample classifier based on data from microarray gene expression experiments. Two specific issues related to this are tackled in this paper: (a) selection of parameters of a classification model to ensure best generalization power, and (b) variability of expected prediction error (EPE) for new data as a function of the model parameters. A method is presented for selection of model parameters minimizing the EPE in studies where the number of samples (n) is much smaller then the number of attributes (d). Due to very unstable behaviour of the EPE in the space of model parameters, it seems essential that microarray studies involve systematic search for the right model parameters, as shown in this work.
机译:该作品致力于基于微阵列基因表达实验的数据构建样本分类器的问题。本文解决了与此相关的两个特定问题:(a)对分类模型的参数选择,以确保最佳泛化功率,并且(b)作为模型参数的函数的新数据的预期预测误差(EPE)的变化。提出了一种方法,用于选择模型参数最小化EPE在研究中的EPE(n)的数量小得多,然后是属性(d)的数量。由于EPE在模型参数空间中的非常不稳定的行为,微阵列研究似乎涉及系统地搜索右模型参数,如本工作所示。

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