An Accelerated Doubly Stochastic Gradient Method with Faster Explicit Model Identification
Runxue Bao, Bin Gu, Heng Huang

TL;DR
This paper introduces an accelerated doubly stochastic gradient method that explicitly identifies sparse models faster, reducing computational costs and improving efficiency in high-dimensional loss minimization problems.
Contribution
The paper presents a novel ADSGD algorithm that explicitly identifies sparse models faster and with lower complexity, outperforming existing implicit methods.
Findings
Achieves linear convergence rate.
Reduces computational complexity.
Faster explicit model identification.
Abstract
Sparsity regularized loss minimization problems play an important role in various fields including machine learning, data mining, and modern statistics. Proximal gradient descent method and coordinate descent method are the most popular approaches to solving the minimization problem. Although existing methods can achieve implicit model identification, aka support set identification, in a finite number of iterations, these methods still suffer from huge computational costs and memory burdens in high-dimensional scenarios. The reason is that the support set identification in these methods is implicit and thus cannot explicitly identify the low-complexity structure in practice, namely, they cannot discard useless coefficients of the associated features to achieve algorithmic acceleration via dimension reduction. To address this challenge, we propose a novel accelerated doubly stochastic…
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Taxonomy
TopicsMachine Learning and ELM · Sparse and Compressive Sensing Techniques · Domain Adaptation and Few-Shot Learning
