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Papers/vONTSS: vMF based semi-supervised neural topic modeling wi...

vONTSS: vMF based semi-supervised neural topic modeling with optimal transport

Weijie Xu, Xiaoyu Jiang, Srinivasan H. Sengamedu, Francis Iannacci, Jinjin Zhao

2023-07-03Text ClassificationTopic Classificationtext-classificationClassificationTopic Models
PaperPDF

Abstract

Recently, Neural Topic Models (NTM), inspired by variational autoencoders, have attracted a lot of research interest; however, these methods have limited applications in the real world due to the challenge of incorporating human knowledge. This work presents a semi-supervised neural topic modeling method, vONTSS, which uses von Mises-Fisher (vMF) based variational autoencoders and optimal transport. When a few keywords per topic are provided, vONTSS in the semi-supervised setting generates potential topics and optimizes topic-keyword quality and topic classification. Experiments show that vONTSS outperforms existing semi-supervised topic modeling methods in classification accuracy and diversity. vONTSS also supports unsupervised topic modeling. Quantitative and qualitative experiments show that vONTSS in the unsupervised setting outperforms recent NTMs on multiple aspects: vONTSS discovers highly clustered and coherent topics on benchmark datasets. It is also much faster than the state-of-the-art weakly supervised text classification method while achieving similar classification performance. We further prove the equivalence of optimal transport loss and cross-entropy loss at the global minimum.

Results

TaskDatasetMetricValueModel
Text ClassificationAG NewsC_v0.49vONTSS
Text ClassificationAG NewsNPMI0.054vONTSS
Text Classification20NewsGroupsC_v0.69vONTSS
Text ClassificationAgNewsC_v0.49vONTSS
Topic ModelsAG NewsC_v0.49vONTSS
Topic ModelsAG NewsNPMI0.054vONTSS
Topic Models20NewsGroupsC_v0.69vONTSS
Topic ModelsAgNewsC_v0.49vONTSS
ClassificationAG NewsC_v0.49vONTSS
ClassificationAG NewsNPMI0.054vONTSS
Classification20NewsGroupsC_v0.69vONTSS
ClassificationAgNewsC_v0.49vONTSS

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