Mukherjee Ashin, Zhu Ji
Department of Statistics, University of Michigan, Ann Arbor, MI 48109, USA.
Stat Anal Data Min. 2011 Dec;4(6):612-622. doi: 10.1002/sam.10138. Epub 2011 Oct 7.
In multivariate linear regression, it is often assumed that the response matrix is intrinsically of lower rank. This could be because of the correlation structure among the prediction variables or the coefficient matrix being lower rank. To accommodate both, we propose a reduced rank ridge regression for multivariate linear regression. Specifically, we combine the ridge penalty with the reduced rank constraint on the coefficient matrix to come up with a computationally straightforward algorithm. Numerical studies indicate that the proposed method consistently outperforms relevant competitors. A novel extension of the proposed method to the reproducing kernel Hilbert space (RKHS) set-up is also developed.
在多元线性回归中,通常假设响应矩阵本质上具有较低的秩。这可能是由于预测变量之间的相关结构或系数矩阵具有较低的秩。为了兼顾这两者,我们提出了一种用于多元线性回归的降秩岭回归。具体而言,我们将岭罚项与系数矩阵上的降秩约束相结合,得出一种计算简便的算法。数值研究表明,所提出的方法始终优于相关的竞争对手。我们还开发了所提出方法到再生核希尔伯特空间(RKHS)设置的一种新颖扩展。