Network-based Feature Screening with Applications to Genome Data

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  Modern biological techniques have led to a variety of types of data,which are often used to identify important biomarkers for certain diseases based on appropriate statistical methods,such as feature screening.Feature screening has been extensively studied in the statistical literature,which is effective to select useful predictors for ultra-high dimensional data.
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