Network-Constrained Covariate Coefficient and Connection Sign Estimation

Matthias Weber, Jonas Striaukas, M. Schumacher, H. Binder
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引用次数: 3

Abstract

Often, variables are linked to each other via a network. When such a network structure is known, this knowledge can be incorporated into regularized regression settings via a network penalty term. However, when the type of interaction via the network is unknown (that is, whether connections are of an activating or a repressing type), the connection signs have to be estimated simultaneously with the covariate coefficients. This can be done with an algorithm iterating a connection sign estimation step and a covariate coefficient estimation step. We develop such an algorithm and show detailed simulation results and an application forecasting event times. The algorithm performs well in a variety of settings. We also briefly describe the R-package that we developed for this purpose, which is publicly available.
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网络约束协变量系数与连接符号估计
通常,变量通过网络相互连接。当这样的网络结构已知时,可以通过网络惩罚项将该知识纳入正则化回归设置中。然而,当通过网络的交互类型未知时(即,连接是激活型还是抑制型),连接符号必须与协变量系数同时估计。这可以通过迭代连接符号估计步骤和协变量系数估计步骤的算法来完成。我们开发了这种算法,并给出了详细的仿真结果和预测事件时间的应用。该算法在各种环境下都表现良好。我们还简要介绍了我们为此目的开发的r包,它是公开可用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Iterated and Exponentially Weighted Moving Principal Component Analysis Instrumental Variable Estimation of Large Panel Data Models with Common Factors lpirfs: An R Package to Estimate Impulse Response Functions by Local Projections A Practical Method to Reduce Privacy Loss When Disclosing Statistics Based on Small Samples Network-Constrained Covariate Coefficient and Connection Sign Estimation
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