BERT-Flow-VAE: A Weakly-supervised Model for Multi-Label Text Classification

Ziwen Liu, J. Grau-Bové, Scott Orr
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Abstract

Multi-label Text Classification (MLTC) is the task of categorizing documents into one or more topics. Considering the large volumes of data and varying domains of such tasks, fully supervised learning requires manually fully annotated datasets which is costly and time-consuming. In this paper, we propose BERT-Flow-VAE (BFV), a Weakly-Supervised Multi-Label Text Classification (WSMLTC) model that reduces the need for full supervision. This new model (1) produces BERT sentence embeddings and calibrates them using a flow model, (2) generates an initial topic-document matrix by averaging results of a seeded sparse topic model and a textual entailment model which only require surface name of topics and 4-6 seed words per topic, and (3) adopts a VAE framework to reconstruct the embeddings under the guidance of the topic-document matrix. Finally, (4) it uses the means produced by the encoder model in the VAE architecture as predictions for MLTC. Experimental results on 6 multi-label datasets show that BFV can substantially outperform other baseline WSMLTC models in key metrics and achieve approximately 84% performance of a fully-supervised model.
BERT-Flow-VAE:多标签文本分类的弱监督模型
多标签文本分类(MLTC)是将文档分类为一个或多个主题的任务。考虑到这些任务的大量数据和不同的领域,完全监督学习需要手动完全注释的数据集,这是昂贵且耗时的。在本文中,我们提出了BERT-Flow-VAE (BFV),这是一种弱监督多标签文本分类(WSMLTC)模型,减少了对完全监督的需要。该模型(1)生成BERT句子嵌入并使用流模型对其进行校准;(2)将种子稀疏主题模型和文本蕴涵模型的结果平均生成初始主题-文档矩阵,每个主题只需要表面主题名称和4-6个种子词;(3)在主题-文档矩阵的指导下,采用VAE框架重构嵌入。最后,(4)它使用VAE体系结构中编码器模型产生的均值作为MLTC的预测。在6个多标签数据集上的实验结果表明,BFV在关键指标上明显优于其他基线WSMLTC模型,达到了全监督模型的84%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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