Max-Linear Regression by Convex Programming
Seonho Kim, Sohail Bahmani, and Kiryung Lee

TL;DR
This paper introduces a convex programming approach called anchored regression for estimating parameters in max-linear regression models, providing theoretical guarantees and demonstrating competitive empirical performance, especially under noise.
Contribution
It develops a scalable convex estimator for max-linear regression, with non-asymptotic guarantees and empirical validation, addressing computational challenges in the field.
Findings
Exact recovery with high probability under Gaussian noise.
Sample complexity scales as $k^{4}p$ up to a log factor.
Method is robust to arbitrary deterministic noise.
Abstract
We consider the multivariate max-linear regression problem where the model parameters need to be estimated from independent samples of the (noisy) observations . The max-linear model vastly generalizes the conventional linear model, and it can approximate any convex function to an arbitrary accuracy when the number of linear models is large enough. However, the inherent nonlinearity of the max-linear model renders the estimation of the regression parameters computationally challenging. Particularly, no estimator based on convex programming is known in the literature. We formulate and analyze a scalable convex program given by anchored regression (AR) as the estimator for the max-linear regression problem. Under the…
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Taxonomy
TopicsMachine Learning and Algorithms · Statistical Methods and Inference · Sparse and Compressive Sensing Techniques
