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Sparsity Optimization Method for Multivariate Feature Screening for Gene Expression Analysis

机译:基因表达分析多元特征筛选的稀疏性优化方法

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摘要

Constructing features from high-dimensional gene expression data is a critically important task for monitoring and predicting patients' diseases, or for knowledge discovery in computational molecular biology. The features need to capture the essential characteristics of the data to be maximally distinguishable. Moreover, the essential features usually lie in small or extremely low-dimensional subspaces, and it is crucial to find them for knowledge discovery and pattern classification. We present a computational method for extracting small or even extremely low-dimensional subspaces for multivariate feature screening and gene expression analysis using sparse optimization techniques. After we transform the feature screening problem into a convex optimization problem, we develop an efficient primal-dual interior-point method expressively for solving large-scale problems. The effectiveness of our method is confirmed by our experimental results. The computer programs will be publicly available.
机译:从高维基因表达数据构建特征是监测和预测患者疾病或计算分子生物学知识发现的至关重要的任务。这些功能需要捕获数据的基本特征,以便最大程度地区分。而且,基本特征通常位于小的或极低维的子空间中,因此对于知识发现和模式分类找到它们至关重要。我们提出了一种计算方法,该方法可提取稀疏或什至极低维的子空间,用于使用稀疏优化技术进行多元特征筛选和基因表达分析。将特征筛选问题转换为凸优化问题后,我们开发出了一种有效的原始对偶内点方法来解决大规模问题。我们的实验结果证实了我们方法的有效性。这些计算机程序将公开可用。

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