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Main Authors: Huang, Sheng-Jun, Li, Yi, Sun, Yiming, Tang, Ying-Peng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.14121
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author Huang, Sheng-Jun
Li, Yi
Sun, Yiming
Tang, Ying-Peng
author_facet Huang, Sheng-Jun
Li, Yi
Sun, Yiming
Tang, Ying-Peng
contents Active learning (AL) for multiple target models aims to reduce labeled data querying while effectively training multiple models concurrently. Existing AL algorithms often rely on iterative model training, which can be computationally expensive, particularly for deep models. In this paper, we propose a one-shot AL method to address this challenge, which performs all label queries without repeated model training. Specifically, we extract different representations of the same dataset using distinct network backbones, and actively learn the linear prediction layer on each representation via an $\ell_p$-regression formulation. The regression problems are solved approximately by sampling and reweighting the unlabeled instances based on their maximum Lewis weights across the representations. An upper bound on the number of samples needed is provided with a rigorous analysis for $p\in [1, +\infty)$. Experimental results on 11 benchmarks show that our one-shot approach achieves competitive performances with the state-of-the-art AL methods for multiple target models.
format Preprint
id arxiv_https___arxiv_org_abs_2405_14121
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle One-shot Active Learning Based on Lewis Weight Sampling for Multiple Deep Models
Huang, Sheng-Jun
Li, Yi
Sun, Yiming
Tang, Ying-Peng
Machine Learning
Active learning (AL) for multiple target models aims to reduce labeled data querying while effectively training multiple models concurrently. Existing AL algorithms often rely on iterative model training, which can be computationally expensive, particularly for deep models. In this paper, we propose a one-shot AL method to address this challenge, which performs all label queries without repeated model training. Specifically, we extract different representations of the same dataset using distinct network backbones, and actively learn the linear prediction layer on each representation via an $\ell_p$-regression formulation. The regression problems are solved approximately by sampling and reweighting the unlabeled instances based on their maximum Lewis weights across the representations. An upper bound on the number of samples needed is provided with a rigorous analysis for $p\in [1, +\infty)$. Experimental results on 11 benchmarks show that our one-shot approach achieves competitive performances with the state-of-the-art AL methods for multiple target models.
title One-shot Active Learning Based on Lewis Weight Sampling for Multiple Deep Models
topic Machine Learning
url https://arxiv.org/abs/2405.14121