DeepCore: A Comprehensive Library for Coreset Selection in Deep Learning

Chengcheng Guo, B. Zhao, Yanbing Bai
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引用次数: 43

Abstract

Coreset selection, which aims to select a subset of the most informative training samples, is a long-standing learning problem that can benefit many downstream tasks such as data-efficient learning, continual learning, neural architecture search, active learning, etc. However, many existing coreset selection methods are not designed for deep learning, which may have high complexity and poor generalization performance. In addition, the recently proposed methods are evaluated on models, datasets, and settings of different complexities. To advance the research of coreset selection in deep learning, we contribute a comprehensive code library, namely DeepCore, and provide an empirical study on popular coreset selection methods on CIFAR10 and ImageNet datasets. Extensive experiments on CIFAR10 and ImageNet datasets verify that, although various methods have advantages in certain experiment settings, random selection is still a strong baseline.
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DeepCore:深度学习中Coreset选择的综合库
Coreset选择是一个长期存在的学习问题,其目的是选择最具信息量的训练样本子集,它可以有利于许多下游任务,如数据高效学习、持续学习、神经结构搜索、主动学习等。然而,现有的许多核心集选择方法并不是为深度学习设计的,可能具有较高的复杂性和较差的泛化性能。此外,最近提出的方法在不同复杂性的模型、数据集和设置上进行了评估。为了推进深度学习中核心集选择的研究,我们提供了一个全面的代码库DeepCore,并在CIFAR10和ImageNet数据集上对流行的核心集选择方法进行了实证研究。在CIFAR10和ImageNet数据集上的大量实验证明,尽管各种方法在某些实验设置中具有优势,但随机选择仍然是一个强大的基线。
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