MaxMatch-Dropout: WordPiece的子词正则化

Tatsuya Hiraoka
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引用次数: 4

摘要

提出了一种基于最大匹配算法的WordPiece子词正则化方法。所提出的方法MaxMatch-Dropout使用最大匹配算法在搜索中随机删除单词。它实现了对BERT-base等流行的预训练语言模型的子词正则化微调。实验结果表明,MaxMatch-Dropout提高了文本分类和机器翻译任务以及其他子词正则化方法的性能。此外,我们还提供了子词正则化方法的比较分析:使用sentencepece (Unigram), BPE-Dropout和MaxMatch-Dropout进行子词正则化。
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MaxMatch-Dropout: Subword Regularization for WordPiece
We present a subword regularization method for WordPiece, which uses a maximum matching algorithm for tokenization. The proposed method, MaxMatch-Dropout, randomly drops words in a search using the maximum matching algorithm. It realizes finetuning with subword regularization for popular pretrained language models such as BERT-base. The experimental results demonstrate that MaxMatch-Dropout improves the performance of text classification and machine translation tasks as well as other subword regularization methods. Moreover, we provide a comparative analysis of subword regularization methods: subword regularization with SentencePiece (Unigram), BPE-Dropout, and MaxMatch-Dropout.
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