How Much More Data Do I Need? Estimating Requirements for Downstream Tasks

Rafid Mahmood, James Lucas, David Acuna, Daiqing Li, Jonah Philion, J. M. Álvarez, Zhiding Yu, S. Fidler, M. Law
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引用次数: 11

Abstract

Given a small training data set and a learning algorithm, how much more data is necessary to reach a target validation or test performance? This question is of critical importance in applications such as autonomous driving or medical imaging where collecting data is expensive and time-consuming. Overestimating or underestimating data requirements incurs substantial costs that could be avoided with an adequate budget. Prior work on neural scaling laws suggest that the power-law function can fit the validation performance curve and extrapolate it to larger data set sizes. We find that this does not immediately translate to the more difficult downstream task of estimating the required data set size to meet a target performance. In this work, we consider a broad class of computer vision tasks and systematically investigate a family of functions that generalize the power-law function to allow for better estimation of data requirements. Finally, we show that incorporating a tuned correction factor and collecting over multiple rounds significantly improves the performance of the data estimators. Using our guidelines, practitioners can accurately estimate data requirements of machine learning systems to gain savings in both development time and data acquisition costs.
我还需要多少数据?评估下游任务的需求
给定一个小的训练数据集和一个学习算法,需要多少数据才能达到目标验证或测试性能?这个问题在自动驾驶或医疗成像等应用中至关重要,因为这些应用收集数据既昂贵又耗时。高估或低估数据需求会导致大量的成本,而这些成本是可以通过适当的预算来避免的。先前对神经尺度律的研究表明幂律函数可以拟合验证性能曲线,并将其外推到更大的数据集规模。我们发现,这并不能立即转化为更困难的下游任务,即估计所需的数据集大小以满足目标性能。在这项工作中,我们考虑了一类广泛的计算机视觉任务,并系统地研究了一系列函数,这些函数可以推广幂律函数,以便更好地估计数据需求。最后,我们表明,结合一个调整的校正因子和多次收集显著提高了数据估计器的性能。使用我们的指南,从业者可以准确地估计机器学习系统的数据需求,以节省开发时间和数据获取成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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