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首页> 外文期刊>Journal of applied statistics >Robust sparse regression by modeling noise as a mixture of gaussians
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Robust sparse regression by modeling noise as a mixture of gaussians

机译:通过将噪声作为高斯的混合来建模噪声来漏洞回归

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摘要

Regression analysis has been proven to be a quite effective tool in a large variety of fields. In many regression models, it is often assumed that noise is with a specific distribution. Although the theoretical analysis can be greatly facilitated, the model-fitting performance may be poor since the supposed noise distribution may deviate from real noise to a large extent. Meanwhile, the model is also expected to be robust in consideration of the complexity of real-world data. Without any assumption about noise, we propose in this paper a novel sparse regression method called MoG-Lasso to directly model noise in linear regression models via a mixture of Gaussian distributions (MoG). Meanwhile, the penalty is included as a part of the loss function of MoG-Lasso to enhance its ability to identify a sparse model. As for the parameters in MoG-Lasso, we present an efficient algorithm to estimate them via the EM (expectation maximization) and ADMM (alternating direction method of multipliers) algorithms. With some simulated and real data contaminated by complex noise, the experiments show that the novel model MoG-Lasso performs better than several other popular methods in both 'pn' and 'pn' situations, including Lasso, LAD-Lasso and Huber-Lasso.
机译:已经证明了回归分析是各种各样的领域的一个非常有效的工具。在许多回归模型中,通常认为噪声具有特定分布。尽管可以大大促进理论分析,但是模型拟合性能可能差,因为假定的噪声分布可能在很大程度上偏离真实噪声。同时,考虑到现实世界数据的复杂性,该模型也有望是稳健的。没有任何关于噪声的假设,我们提出了一种新的稀疏回归方法,称为MOG-LASSO,通过高斯分布(MOG)的混合来直接模拟线性回归模型中的噪声。同时,惩罚作为MOG-LASSO损失功能的一部分,以增强其识别稀疏模型的能力。至于MOG-LASSO中的参数,我们提出了一种有效的算法来通过EM(期望最大化)和ADMM(乘法器的交替方向方法)算法来估计它们。通过一些被复杂噪声污染的一些模拟和真实数据,实验表明,新颖的模型MOG-LASSO在“P> N”和“P>”和“P

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