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A Bregman-proximal point algorithm for robust non-negative matrix factorization with possible missing values and outliers - application to gene expression analysis

机译:一种Bregman-近点算法,用于鲁棒的非负矩阵分解,可能存在缺失值和异常值-在基因表达分析中的应用

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Background Non-Negative Matrix factorization has become an essential tool for feature extraction in a wide spectrum of applications. In the present work, our objective is to extend the applicability of the method to the case of missing and/or corrupted data due to outliers. Results An essential property for missing data imputation and detection of outliers is that the uncorrupted data matrix is low rank, i.e. has only a small number of degrees of freedom. We devise a new version of the Bregman proximal idea which preserves nonnegativity and mix it with the Augmented Lagrangian approach for simultaneous reconstruction of the features of interest and detection of the outliers using a sparsity promoting ? 1 penality. Conclusions An application to the analysis of gene expression data of patients with bladder cancer is finally proposed.
机译:背景技术非负矩阵分解已成为广泛应用中特征提取的重要工具。在当前工作中,我们的目标是将方法的适用性扩展到由于异常值导致数据丢失和/或损坏的情况。结果丢失数据插补和检测离群值的一个基本属性是,未损坏的数据矩阵的等级较低,即只有很少的自由度。我们设计了保留非负性的Bregman近端构想的新版本,并将其与增强拉格朗日方法混合使用,以同时重建感兴趣的特征并使用稀疏促进来检测异常值。 1 处罚。结论最终提出了在膀胱癌患者基因表达数据分析中的应用。

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