Sparse Max-Affine Regression
Haitham Kanj, Seonho Kim, Kiryung Lee

TL;DR
This paper introduces Sparse Gradient Descent for variable selection in convex piecewise linear regression, providing non-asymptotic convergence analysis, initialization methods, and a novel transformation with theoretical guarantees.
Contribution
The paper proposes a new sparse gradient descent method, an initialization scheme using sparse PCA, and a transformation called RMD, with comprehensive theoretical analysis and empirical validation.
Findings
Sp-GD achieves $\e$-accuracy with $ ilde{O}(rac{1}{\e^2})$ samples.
Initialization scheme estimates parameters with $ ilde{O}(rac{1}{\e^2})$ samples.
Numerical results support theoretical convergence and accuracy claims.
Abstract
This paper presents Sparse Gradient Descent as a solution for variable selection in convex piecewise linear regression, where the model is given as the maximum of -affine functions for . Here, and denote the ground-truth weight vectors and intercepts. A non-asymptotic local convergence analysis is provided for Sp-GD under sub-Gaussian noise when the covariate distribution satisfies the sub-Gaussianity and anti-concentration properties. When the model order and parameters are fixed, Sp-GD provides an -accurate estimate given observations where denotes the noise variance. This also implies the exact parameter recovery by Sp-GD from noise-free…
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