Latent Dirichlet Allocation
Latent Dirichlet Allocation (LDA) is a probabilistic topic modeling technique used to discover underlying thematic structures in large collections of text data. Current research focuses on improving LDA's performance, particularly for short texts and diverse domains, often by integrating it with other methods like large language models (LLMs), graph neural networks (GNNs), or transformer-based embeddings to enhance topic coherence and interpretability. LDA's applications span diverse fields, including healthcare, finance, social media analysis, and legal research, enabling automated extraction of insights from unstructured textual data and facilitating more efficient data analysis.
Papers
December 2, 2022
November 10, 2022
October 31, 2022
August 28, 2022
August 19, 2022
July 23, 2022
July 8, 2022
June 28, 2022
June 23, 2022
June 9, 2022
May 29, 2022
May 19, 2022
April 22, 2022
April 14, 2022
March 1, 2022
February 18, 2022
November 30, 2021
November 22, 2021