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An Investigation of Transfer Learning-Based Sentiment Analysis in Japanese

机译:日语中基于迁移学习的情感分析研究

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Text classification approaches have usually required task-specific model architectures and huge labeled datasets. Recently, thanks to the rise of text-based transfer learning techniques, it is possible to pre-train a language model in an unsupervised manner and leverage them to perform effectively on downstream tasks. In this work we focus on Japanese and show the potential use of transfer learning techniques in text classification. Specifically, we perform binary and multi-class sentiment classification on the Rakuten product review and Yahoo movie review datasets. We show that transfer learning-based approaches perform better than task-specific models trained on 3 times as much data. Furthermore, these approaches perform just as well for language modeling pre-trained on 1/30 of Wikipedia. We release our pre-trained models and code as open source.
机译:文本分类方法通常需要特定于任务的模型架构和庞大的标记数据集。最近,由于基于文本的迁移学习技术的兴起,可以以无监督的方式预训练语言模型,并利用它们来有效地执行下游任务。在这项工作中,我们重点关注日语,并展示了转移学习技术在文本分类中的潜在用途。具体来说,我们对乐天产品评论和Yahoo电影评论数据集执行二元和多类别情感分类。我们证明,基于迁移学习的方法比基于3倍数据训练的特定任务模型的性能更好。此外,这些方法对于在Wikipedia上1/30进行预训练的语言建模也同样有效。我们以开放源代码的形式发布了经过预训练的模型和代码。

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