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Robust Sparse Estimation of Multiresponse Regression and Inverse Covariance Matrix via the L2 distance

机译:基于L2距离的多响应回归和协方差逆矩阵的鲁棒稀疏估计

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We propose a robust framework to jointly perform two key modeling tasks involving high dimensional data: (i) learning a sparse functional mapping from multiple predictors to multiple responses while taking advantage of the coupling among responses, and (ii) estimating the conditional dependency structure among responses while adjusting for their predictors. The traditional likelihood-based estimators lack resilience with respect to outliers and model misspecification. This issue is exacerbated when dealing with high dimensional noisy data. In this work, we propose instead to minimize a regularized distance criterion, which is motivated by the minimum distance functionals used in nonparametric methods for their excellent robustness properties. The proposed estimates can be obtained efficiently by leveraging a sequential quadratic programming algorithm. We provide theoretical justification such as estimation consistency for the proposed estimator. Additionally, we shed light on the robustness of our estimator through its linearization, which yields a combination of weighted lasso and graphical lasso with the sample weights providing an intuitive explanation of the robustness. We demonstrate the merits of our framework through simulation study and the analysis of real financial and genetics data.
机译:我们提出了一个健壮的框架来共同执行涉及高维数据的两个关键建模任务:(i)在利用响应之间的耦合的同时,学习从多个预测变量到多个响应的稀疏函数映射,以及(ii)调整预测因素时做出回应。传统的基于似然的估计器在异常值和模型错误指定方面缺乏弹性。当处理高维噪声数据时,这个问题更加严重。相反,在这项工作中,我们建议最小化规则距离准则,该准则是非参数方法中使用的最小距离函数所具有的出色的鲁棒性。通过利用顺序二次规划算法,可以有效地获得建议的估算值。我们为拟议的估算器提供了理论依据,例如估算一致性。此外,我们通过其线性化揭示了估计器的鲁棒性,该估计器将加权套索和图形套索与样本权重结合在一起,提供了鲁棒性的直观说明。我们通过模拟研究以及对实际财务和遗传数据的分析,证明了我们框架的优点。

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