ATTENTION/WARNING - NE PAS DÉPOSER ICI/DO NOT SUBMIT HERE

Ceci est la version de TEST de DIAL.mem. Veuillez ne pas soumettre votre mémoire sur ce site mais bien à l'URL suivante: 'https://thesis.dial.uclouvain.be'.
This is the TEST version of DIAL.mem. Please use the following URL to submit your master thesis: 'https://thesis.dial.uclouvain.be'.
 

Textual analysis of belgian newspapers with topic models

(2023)

Files

Leblanc_81972000_2023.pdf
  • Open access
  • Adobe PDF
  • 5.55 MB

Details

Supervisors
Faculty
Degree label
Abstract
The objective of this master's thesis is to perform a textual analysis of various Belgian newspapers in order to compare and contrast their content. This analysis is facilitated by Latent Dirichlet Allocation, an unsupervised topic model capable of learning topics from text. Initially, we present the datasets we created for this work and the preprocessing steps employed to train the models effectively. Then, we present Latent Dirichlet Allocation along with techniques for visualizing, evaluating, labeling and exploring such models. Finally, we utilize these methods to conduct a content comparison of the newspapers.