2022
DOI: 10.4108/eetiot.v8i3.2263
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Use of Neural Topic Models in conjunction with Word Embeddings to extract meaningful topics from short texts

Abstract: Unsupervised machine learning is utilized as a part of the process of topic modeling to discover dormant topics hidden within a large number of documents. The topic model can help with the comprehension, organization, and summarization of large amounts of text. Additionally, it can assist with the discovery of hidden topics that vary across different texts in a corpus. Traditional topic models like pLSA (probabilistic latent semantic analysis) and LDA suffer performance loss when applied to short-text analysis… Show more

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