Topics in Contextualised Attention Embeddings

Mozhgan Talebpour, A. G. S. D. Herrera, Shoaib Jameel
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引用次数: 1

Abstract

Contextualised word vectors obtained via pre-trained language models encode a variety of knowledge that has already been exploited in applications. Complementary to these language models are probabilistic topic models that learn thematic patterns from the text. Recent work has demonstrated that conducting clustering on the word-level contextual representations from a language model emulates word clusters that are discovered in latent topics of words from Latent Dirichlet Allocation. The important question is how such topical word clusters are automatically formed, through clustering, in the language model when it has not been explicitly designed to model latent topics. To address this question, we design different probe experiments. Using BERT and DistilBERT, we find that the attention framework plays a key role in modelling such word topic clusters. We strongly believe that our work paves way for further research into the relationships between probabilistic topic models and pre-trained language models.
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语境化注意嵌入中的主题
通过预先训练的语言模型获得的语境化词向量编码了各种已经在应用中被利用的知识。与这些语言模型相辅相成的是概率主题模型,它从文本中学习主题模式。最近的研究表明,从语言模型中对词级上下文表示进行聚类,可以模拟从潜在狄利克雷分配中发现的词的潜在主题中的词聚类。重要的问题是,当语言模型没有明确设计为潜在主题建模时,如何通过聚类自动形成这些主题词簇。为了解决这个问题,我们设计了不同的探针实验。利用BERT和蒸馏伯特,我们发现注意框架在建模这类词主题聚类中起着关键作用。我们坚信,我们的工作为进一步研究概率主题模型和预训练语言模型之间的关系铺平了道路。
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