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SPReM: Sparse Projection Regression Model For High-Dimensional Linear Regression

机译:SPReM:高维线性回归的稀疏投影回归模型

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The aim of this article is to develop a sparse projection regression modeling (SPReM) framework to perform multivariate regression modeling with a large number of responses and a multivariate covariate of interest. We propose two novel heritability ratios to simultaneously perform dimension reduction, response selection, estimation, and testing, while explicitly accounting for correlations among multivariate responses. Our SPReM is devised to specifically address the low statistical power issue of many standard statistical approaches, such as the Hotelling's T-2 test statistic or a mass univariate analysis, for high-dimensional data. We formulate the estimation problem of SPReM as a novel sparse unit rank projection (SURP) problem and propose a fast optimization algorithm for SURP. Furthermore, we extend SURP to the sparse multirank projection (SMURP) by adopting a sequential SURP approximation. Theoretically, we have systematically investigated the convergence properties of SURP and the convergence rate of SURP estimates. Our simulation results and real data analysis have shown that SPReM outperforms other state-of-the-art methods.
机译:本文的目的是开发一个稀疏投影回归建模(SPReM)框架,以执行具有大量响应和感兴趣的多元协变量的多元回归建模。我们提出两个新颖的遗传率,以同时执行降维,响应选择,估计和测试,同时明确考虑多元响应之间的相关性。我们的SPReM专为解决许多标准统计方法的低统计能力问题而设计,例如针对高维数据的Hotelling的T-2测试统计或质量单变量分析。我们将SPReM的估计问题公式化为一个新的稀疏单位秩投影(SURP)问题,并提出了SURP的快速优化算法。此外,我们通过采用顺序SURP近似将SURP扩展到稀疏多秩投影(SMURP)。从理论上讲,我们系统地研究了SURP的收敛性和SURP估计的收敛速度。我们的仿真结果和实际数据分析表明,SPReM优于其他最新方法。

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