Inverting the Leverage Score Gradient: An Efficient Approximate Newton Method
Chenyang Li, Zhao Song, Zhaoxing Xu, Junze Yin

TL;DR
This paper introduces an efficient iterative algorithm for inverting leverage score gradients, enabling approximate solutions to regularized least squares problems with reduced computational complexity, impacting model understanding and data privacy.
Contribution
It presents a novel approximate Newton method that leverages subsampled leverage score distributions to efficiently invert the leverage score gradient, improving computational efficiency.
Findings
Algorithm achieves near-linear time complexity per iteration.
Effective in recovering model parameters from leverage score gradients.
Reduces computational cost significantly compared to traditional methods.
Abstract
Leverage scores have become essential in statistics and machine learning, aiding regression analysis, randomized matrix computations, and various other tasks. This paper delves into the inverse problem, aiming to recover the intrinsic model parameters given the leverage scores gradient. This endeavor not only enriches the theoretical understanding of models trained with leverage score techniques but also has substantial implications for data privacy and adversarial security. We specifically scrutinize the inversion of the leverage score gradient, denoted as . An innovative iterative algorithm is introduced for the approximate resolution of the regularized least squares problem stated as . Our algorithm employs subsampled leverage score distributions to compute an approximate Hessian in each iteration,…
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Taxonomy
TopicsIterative Methods for Nonlinear Equations · Advanced Optimization Algorithms Research · Model Reduction and Neural Networks
