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Differential privacy-based evaporative cooling feature selection and classification with relief-F and random forests

机译:基于差动隐私的蒸发冷却特征选择和分类与救济 - F和随机森林

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摘要

Motivation: Classification of individuals into disease or clinical categories from high-dimensional biological data with low prediction error is an important challenge of statistical learning in bioinformatics. Feature selection can improve classification accuracy but must be incorporated carefully into cross-validation to avoid overfitting. Recently, feature selection Methods based on differential privacy, such as differentially private random forests and reusable holdout sets, have been proposed. However, for domains such as bioinformatics, where the number of features is much larger than the number of observations p n, these differential privacy methods are susceptible to overfitting.
机译:动机:对具有低预测误差的高维生物数据中个体进入疾病或临床类别的分类是生物信息学中统计学习的重要挑战。 特征选择可以提高分类准确性,但必须仔细纳入交叉验证以避免过度装备。 最近,已经提出了基于差异隐私的特征选择方法,例如差异私有随机林和可重复使用的阻滞集。 然而,对于诸如生物信息学的域,其中特征的数量远大于观察数P N,这些差动隐私方法易于过度拟合。

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