校正多元回归及其在神经语义基发现中的应用

Han Liu, Lie Wang, Tuo Zhao
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引用次数: 34

摘要

本文提出了一种校正多元回归方法CMR,用于拟合高维多元回归模型。与现有方法相比,CMR根据每个回归任务的噪声水平校准正则化,从而同时获得改进的有限样本性能和调优不灵敏度。从理论上给出了CMR在参数估计中达到最优收敛速率的充分条件。在计算上,我们提出了一种有效的平滑近端梯度算法,其最坏情况数值收敛速率为O(1/御柱),其中御柱是目标函数值的预先指定精度。我们进行了全面的数值模拟,以说明CMR始终优于其他高维多元回归方法。我们还将CMR应用于解决大脑活动预测问题,并发现它与人类专家创建的手工模型一样具有竞争力。实现该方法的R包camel可在综合R存档网络http://cran.r-project.org/web/packages/camel/上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calibrated multivariate regression with application to neural semantic basis discovery
We propose a calibrated multivariate regression method named CMR for fitting high dimensional multivariate regression models. Compared with existing methods, CMR calibrates regularization for each regression task with respect to its noise level so that it simultaneously attains improved finite-sample performance and tuning insensitiveness. Theoretically, we provide sufficient conditions under which CMR achieves the optimal rate of convergence in parameter estimation. Computationally, we propose an efficient smoothed proximal gradient algorithm with a worst-case numerical rate of convergence O(1/ϵ), where ϵ is a pre-specified accuracy of the objective function value. We conduct thorough numerical simulations to illustrate that CMR consistently outperforms other high dimensional multivariate regression methods. We also apply CMR to solve a brain activity prediction problem and find that it is as competitive as a handcrafted model created by human experts. The R package camel implementing the proposed method is available on the Comprehensive R Archive Network http://cran.r-project.org/web/packages/camel/.
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