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Solution paths for the generalized lasso with applications to spatially varying coefficients regression

机译:广义套索的解决方案路径与应用到空间不同系数回归

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摘要

Penalized regression can improve prediction accuracy and reduce dimension. The generalized lasso problem is used in many applications in various fields. The generalized lasso penalizes a linear transformation of the coefficients rather than the coefficients themselves. The proposed algorithm solves the generalized lasso problem and provides the full solution path. A confidence set can then be constructed on the generalized lasso parameters based on the modified residual bootstrap lasso. The approach is demonstrated using spatially varying coefficients regression, and it is shown to be both accurate and efficient compared to previous work. (C) 2019 Elsevier B.V. All rights reserved.
机译:惩罚的回归可以提高预测准确性和减少维度。 广义的套索问题在各个领域的许多应用中使用。 通用套索惩罚系数的线性变换而不是系数本身。 所提出的算法解决了广义的套索问题并提供完整的解决方案路径。 然后可以基于修改的残余引导套索在广义的套索参数上构建一个置信度集。 使用空间变化的系数回归来证明该方法,与之前的工作相比,它被证明是准确和有效的。 (c)2019年Elsevier B.V.保留所有权利。

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