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An Empirical Study on the Efficacy of Deep Active Learning for Image Classification

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arxiv 2212.03088 v1 pith:MNTKEIIW submitted 2022-11-30 cs.CV cs.AI

An Empirical Study on the Efficacy of Deep Active Learning for Image Classification

classification cs.CV cs.AI
keywords underlinemethodsdatalearningperformancessalachieveactive
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Deep Active Learning (DAL) has been advocated as a promising method to reduce labeling costs in supervised learning. However, existing evaluations of DAL methods are based on different settings, and their results are controversial. To tackle this issue, this paper comprehensively evaluates 19 existing DAL methods in a uniform setting, including traditional fully-\underline{s}upervised \underline{a}ctive \underline{l}earning (SAL) strategies and emerging \underline{s}emi-\underline{s}upervised \underline{a}ctive \underline{l}earning (SSAL) techniques. We have several non-trivial findings. First, most SAL methods cannot achieve higher accuracy than random selection. Second, semi-supervised training brings significant performance improvement compared to pure SAL methods. Third, performing data selection in the SSAL setting can achieve a significant and consistent performance improvement, especially with abundant unlabeled data. Our findings produce the following guidance for practitioners: one should (i) apply SSAL early and (ii) collect more unlabeled data whenever possible, for better model performance.

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Cited by 1 Pith paper

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  1. Are Candidate Models Really Needed for Active Learning?

    cs.CV 2026-05 unverdicted novelty 5.0

    Active learning with randomly initialized models achieves comparable results to traditional candidate-model methods, with low-confidence sampling proving most effective.