The problem of Bayesian reduced rank regression is considered in this paper. We propose, for the first time, to use Langevin Monte Carlo method in this problem. A spectral scaled Student prior distrbution is used to exploit the underlying low-rank structure of the coefficient matrix. We show that our algorithms are significantly faster than the Gibbs sampler in high-dimensional setting. Simulation results show that our proposed algorithms for Bayesian reduced rank regression are comparable to the state-of-the-art method where the rank is chosen by cross validation.
翻译:Bayesian 降级回归的问题在本文件中得到了考虑。 我们首次建议在此问题上使用 Langevin Monte Carlo 方法。 使用光谱缩放学生的先吸附法来利用系数矩阵的基本低位结构。 我们显示我们的算法比Gibbs的高位采样者要快得多。 模拟结果表明,我们为Bayesian 降级回归提议的算法与通过交叉验证选择排名的最先进方法相似。