CheckSelect:在线检查点选择灵活,准确,稳健,高效的数据评估

Soumi Das;Manasvi Sagarkar;Suparna Bhattacharya;Sourangshu Bhattacharya
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引用次数: 0

摘要

在本文中,我们认为数据评估技术应该灵活、准确、稳健和高效(FARE)。这里,准确性和效率指的是与完整训练相比,在更短的时间内识别出最重要的数据点的概念。灵活性是指该方法适用于各种值函数的能力,而鲁棒性是指该方法适用于来自相关领域的不同数据分布的能力。我们提出了一个两阶段的方法来实现这些目标,其中第一阶段,检查点选择,在相关数据集上训练时提取重要的模型检查点,第二个数据评估和子集选择(DVSS)阶段提取高值子集。由于总价值函数是未知的,这个过程中的一个关键挑战是在训练过程中有效地确定最重要的检查点。我们将其视为一个在线稀疏逼近问题,并提出了一种新的在线正交匹配追踪算法来求解它。在标准数据集上进行的大量实验表明,CheckSelect在基线中提供了最佳的准确性,同时保持了与最先进技术相当的效率。我们还展示了CheckSelect在标准域自适应任务上的灵活性和鲁棒性,在数据选择准确性方面优于现有方法,而无需在完整的目标域数据集上进行重新训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CheckSelect: Online Checkpoint Selection for Flexible, Accurate, Robust, and Efficient Data Valuation
In this article, we argue that data valuation techniques should be flexible, accurate, robust, and efficient (FARE). Here, accuracy and efficiency refer to the notion of identification of most important data points in less time compared to full training. Flexibility refers to the ability of the method to be used with various value functions, while robustness refers to the ability to be used with different data distributions from a related domain. We propose a two-phase approach toward achieving these objectives, where the first phase, checkpoint selection, extracts important model checkpoints while training on a related dataset, and the second data valuation and subset selection (DVSS) phase extracts the high-value subsets. A key challenge in this process is to efficiently determine the most important checkpoints during the training, since the total value function is unknown. We pose this as an online sparse approximation problem and propose a novel online orthogonal matching pursuit algorithm for solving it. Extensive experiments on standard datasets show that CheckSelect provides the best accuracy among the baselines while maintaining efficiency comparable to state of the art. We also demonstrate the flexibility and robustness of CheckSelect on a standard domain adaptation task, where it outperforms existing methods in data selection accuracy without the need to retrain on the full target-domain dataset.
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CiteScore
7.70
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