Skip to the main content

Original scientific paper

https://doi.org/10.32985/ijeces.15.7.5

Improving Spatio-Temporal Topic Modeling with Swarm Intelligence: A Study on TripAdvisor Forum of Morocco

Ibrahim Bouabdallaoui orcid id orcid.org/0000-0001-5696-5408 ; LASTIMI Laboratory – High School of Technology Salé, Mohammed V University in Rabat Avenue Le Prince Héritier, Salé, Morocco *
Fatima Guerouate ; LASTIMI Laboratory – High School of Technology Salé, Mohammed V University in Rabat Avenue Le Prince Héritier, Salé, Morocco
Mohammed Sbihi ; LASTIMI Laboratory – High School of Technology Salé, Mohammed V University in Rabat Avenue Le Prince Héritier, Salé, Morocco

* Corresponding author.


Full text: english pdf 4.245 Kb

page 591-601

downloads: 58

cite


Abstract

This study introduces innovative methodologies for spatiotemporal topic modeling applied to the TripAdvisor forum of Morocco, leveraging the diverse and geographically tagged user-generated content. We develop and evaluate two schemas integrating Latent Dirichlet Allocation (LDA) with advanced clustering techniques, including a hybrid K-Means algorithm that incorporates Genetic Algorithms and the Artificial Bee Colony method. The first schema independently processes user threads, publication times, and locations using LDA, followed by clustering, while the second schema combines these dimensions into a unified vector for holistic LDA application, facilitating direct comparisons of clustering efficacy. Our findings demonstrate that swarm intelligence significantly boosts clustering performance, especially for larger clusters, and enhances the visualization of complex data relationships. These insights offer actionable intelligence for tourism stakeholders and underscore the practical benefits of advanced computational techniques in harnessing user-generated content for strategic decision-making.

Keywords

topic modeling; latent Dirichlet allocation; artificial bee colony; genetic algorithms; k-means;

Hrčak ID:

319163

URI

https://hrcak.srce.hr/319163

Publication date:

12.7.2024.

Visits: 205 *