OKRidge: Scalable Optimal k-Sparse Ridge Regression.

Jiachang Liu, Sam Rosen, Chudi Zhong, Cynthia Rudin
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Abstract

We consider an important problem in scientific discovery, namely identifying sparse governing equations for nonlinear dynamical systems. This involves solving sparse ridge regression problems to provable optimality in order to determine which terms drive the underlying dynamics. We propose a fast algorithm, OKRidge, for sparse ridge regression, using a novel lower bound calculation involving, first, a saddle point formulation, and from there, either solving (i) a linear system or (ii) using an ADMM-based approach, where the proximal operators can be efficiently evaluated by solving another linear system and an isotonic regression problem. We also propose a method to warm-start our solver, which leverages a beam search. Experimentally, our methods attain provable optimality with run times that are orders of magnitude faster than those of the existing MIP formulations solved by the commercial solver Gurobi.

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OKRidge:可扩展的最优 k-Sparse Ridge 回归。
我们考虑了科学发现中的一个重要问题,即确定非线性动力系统的稀疏支配方程。这就需要求解稀疏脊回归问题,使其达到可证明的最优性,以确定哪些项驱动了底层动力学。我们提出了一种用于稀疏脊回归的快速算法 OKRidge,它采用了一种新颖的下界计算方法,首先是鞍点公式,然后是求解(i)线性系统或(ii)使用基于 ADMM 的方法,其中近算子可以通过求解另一个线性系统和等价回归问题来有效评估。我们还提出了一种利用波束搜索热启动求解器的方法。通过实验,我们的方法达到了可证明的最优性,运行时间比商业求解器 Gurobi 所求解的现有 MIP 公式快了几个数量级。
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Large language models transition from integrating across position-yoked, exponential windows to structure-yoked, power-law windows. OKRidge: Scalable Optimal k-Sparse Ridge Regression. A Path to Simpler Models Starts With Noise. Fair Canonical Correlation Analysis. Exploring and Interacting with the Set of Good Sparse Generalized Additive Models.
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