基于数据的课程有效吗?

Maxim K. Surkov, Vladislav D. Mosin, Ivan P. Yamshchikov
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引用次数: 3

摘要

目前最先进的NLP系统使用大型神经网络,需要大量的计算资源进行训练。受人类知识获取的启发,研究人员提出了课程学习-排序任务(基于任务的课程)或排序和采样数据集(基于数据的课程),以促进培训。这项工作调查了基于数据的课程学习对大型语言模型(如BERT和T5)的好处。我们基于复杂性度量和不同的抽样策略对各种课程进行了实验。在几个NLP任务上进行的大量实验表明,基于各种复杂性度量的课程很少有任何好处,而随机抽样的效果要么和课程一样好,要么更好。
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Do Data-based Curricula Work?
Current state-of-the-art NLP systems use large neural networks that require extensive computational resources for training. Inspired by human knowledge acquisition, researchers have proposed curriculum learning - sequencing tasks (task-based curricula) or ordering and sampling the datasets (data-based curricula) that facilitate training. This work investigates the benefits of data-based curriculum learning for large language models such as BERT and T5. We experiment with various curricula based on complexity measures and different sampling strategies. Extensive experiments on several NLP tasks show that curricula based on various complexity measures rarely have any benefits, while random sampling performs either as well or better than curricula.
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