自然语言理解中样本大小的确定

Ernie Chang, Muhammad Hassan Rashid, Pin-Jie Lin, Changsheng Zhao, Vera Demberg, Yangyang Shi, Vikas Chandra
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引用次数: 0

摘要

确切地知道需要标记多少数据点才能实现特定的模型性能,这是减少注释总体预算的一个非常有益的步骤。它既适用于主动学习,也适用于传统的数据注释,尤其适用于资源匮乏的场景。然而,它仍然是NLP研究中一个很大程度上未被探索的领域。因此,我们探索了各种技术来估计达到目标性能值所需的训练样本大小。我们推导了一种简单而有效的方法来预测基于少量训练样本的最大可实现模型性能-这可以作为数据注释过程中数据质量和样本量确定的早期指标。我们对四种语言理解任务进行了消融研究,结果表明,所提出的方法允许我们在只有10%的数据的平均绝对误差(~ 0.9%)的小范围内预测模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting Sample Size Determination in Natural Language Understanding
Knowing exactly how many data points need to be labeled to achieve a certain model performance is a hugely beneficial step towards reducing the overall budgets for annotation. It pertains to both active learning and traditional data annotation, and is particularly beneficial for low resource scenarios. Nevertheless, it remains a largely under-explored area of research in NLP. We therefore explored various techniques for estimating the training sample size necessary to achieve a targeted performance value. We derived a simple yet effective approach to predict the maximum achievable model performance based on small amount of training samples - which serves as an early indicator during data annotation for data quality and sample size determination. We performed ablation studies on four language understanding tasks, and showed that the proposed approach allows us to forecast model performance within a small margin of mean absolute error (~ 0.9%) with only 10% data.
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