基于外部知识扩展的小样本文本分类

Jian Guan, Rui Xu, Jing Ya, Qiu Tang, Jidong Xue, Ni Zhang
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引用次数: 0

摘要

当注释数据稀缺时,当前大多数文本分类模型的性能会急剧下降。在这种具有挑战性的情况下,由于语义知识的捕获有限,现有的少量文本分类模型不够准确或鲁棒。本文利用WordNet和预训练模型BERT,提出了一种基于外部知识扩展的少镜头文本分类方法,以及在训练和预测过程中监督更丰富信息的两种扩展策略。我们将文本分割成句子,开发了基于知识对句子进行语义扩展的术语选择技术,并测量了知识扩展后的文本实例表示。这样,我们发现该方法能够提高在少量文本分类任务上的性能。我们在两个英语文本分类数据集——IMDB和ASRS上评估了我们的方法,这些数据集跨越了一系列的训练集大小。实验结果表明,通过知识扩展,我们的方法具有鲁棒性,在两个数据集上都能获得与现有方法更好或相当的性能,在训练集规模为380的ASRS测试集上,与之前的方法相比,实现了2.7%的相对提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Text Classification with External Knowledge Expansion
The performance of most current models for text classification drops dramatically when annotated data is scarce. In such challenging scenarios, the existing models for few-shot text classification are not accurate or robust enough due to limited capture of semantic knowledge. In this paper, we propose a method of few-shot text classification based on external knowledge expansion and two strategies of expansion to supervise richer information during training and prediction, by leveraging WordNet and pre-trained model BERT. We split texts into sentences, develop techniques to select terms to semantically expand sentences based on knowledge and measure the text instance representation after knowledge expansion. In this way, we find the method is capable of improving the performance on the task of few-shot text classification. We evaluate our method on two English text classification datasets - IMDB and ASRS across a range of training set sizes. Experiment results show that by knowledge expansion, our method is robust and yields better or comparable performance to the state-of-the-art methods on both datasets, which achieves 2.7% relative improvement compared with previous method on the ASRS test set with the training set size of 380.
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