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Main Authors: Ma, Yanan, Xiao, Chenghao, Yuan, Chenhan, van der Veer, Sabine N, Hassan, Lamiece, Lin, Chenghua, Nenadic, Goran
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.15136
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author Ma, Yanan
Xiao, Chenghao
Yuan, Chenhan
van der Veer, Sabine N
Hassan, Lamiece
Lin, Chenghua
Nenadic, Goran
author_facet Ma, Yanan
Xiao, Chenghao
Yuan, Chenhan
van der Veer, Sabine N
Hassan, Lamiece
Lin, Chenghua
Nenadic, Goran
contents Topic modelling is a pivotal unsupervised machine learning technique for extracting valuable insights from large document collections. Existing neural topic modelling methods often encode contextual information of documents, while ignoring contextual details of candidate centroid words, leading to the inaccurate selection of topic words due to the contextualization gap. In parallel, it is found that functional words are frequently selected over topical words. To address these limitations, we introduce CAST: Corpus-Aware Self-similarity Enhanced Topic modelling, a novel topic modelling method that builds upon candidate centroid word embeddings contextualized on the dataset, and a novel self-similarity-based method to filter out less meaningful tokens. Inspired by findings in contrastive learning that self-similarities of functional token embeddings in different contexts are much lower than topical tokens, we find self-similarity to be an effective metric to prevent functional words from acting as candidate topic words. Our approach significantly enhances the coherence and diversity of generated topics, as well as the topic model's ability to handle noisy data. Experiments on news benchmark datasets and one Twitter dataset demonstrate the method's superiority in generating coherent, diverse topics, and handling noisy data, outperforming strong baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15136
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CAST: Corpus-Aware Self-similarity Enhanced Topic modelling
Ma, Yanan
Xiao, Chenghao
Yuan, Chenhan
van der Veer, Sabine N
Hassan, Lamiece
Lin, Chenghua
Nenadic, Goran
Computation and Language
Topic modelling is a pivotal unsupervised machine learning technique for extracting valuable insights from large document collections. Existing neural topic modelling methods often encode contextual information of documents, while ignoring contextual details of candidate centroid words, leading to the inaccurate selection of topic words due to the contextualization gap. In parallel, it is found that functional words are frequently selected over topical words. To address these limitations, we introduce CAST: Corpus-Aware Self-similarity Enhanced Topic modelling, a novel topic modelling method that builds upon candidate centroid word embeddings contextualized on the dataset, and a novel self-similarity-based method to filter out less meaningful tokens. Inspired by findings in contrastive learning that self-similarities of functional token embeddings in different contexts are much lower than topical tokens, we find self-similarity to be an effective metric to prevent functional words from acting as candidate topic words. Our approach significantly enhances the coherence and diversity of generated topics, as well as the topic model's ability to handle noisy data. Experiments on news benchmark datasets and one Twitter dataset demonstrate the method's superiority in generating coherent, diverse topics, and handling noisy data, outperforming strong baselines.
title CAST: Corpus-Aware Self-similarity Enhanced Topic modelling
topic Computation and Language
url https://arxiv.org/abs/2410.15136