Veuillez utiliser cette adresse pour citer ce document : http://repository.enp.edu.dz/jspui/handle/123456789/11069
Titre: PULSE : leveraging spatiotemporal dynamics and human preferences for traffic prediction via graph representation learning
Auteur(s): Chouiref, Zinab-Kawtar
Zouaghi, Iskander, Directeur de thèse
Bouzeghoub, Amel, Directeur de thèse
Mots-clés: Check-in (POI)
PULSE
Human movements
POI recommendations
Crowd flows
Spatio-temporal dependencies
Sequential influences
Matrix factorization
Date de publication: 2024
Résumé: The proliferation of smart mobile devices and social networks has streamlined location sharing, enabling the analysis of check-in data for predicting human movement and enhancing point of interest (POI) recommendations. This predictive capability is pivotal for various intelligent location-based services, including crowd flow prediction and business recommendations. However, sparse user-POI interactions due to privacy concerns pose challenges to accurate prediction. To tackle these challenges, we propose a location prediction framework that integrates temporal-spatial dependencies and sequential influences. While traditional methods like matrix Factorization and Markov Chains have limitations in capturing complex behavioral patterns, recent advancements in deep learning, particularly Recurrent Neural Networks (RNNs) and Graph Convolutional Networks (GCNs) and knowledge graphs, offer promising avenues for improved prediction accuracy. Our proposed model, PULSE (Predictive User Location and Spatiotemporal Experience), leverages graph neural networks to capture both long-term life patterns and short-term behavioral preferences from user trajectories. By considering spatial and temporal dependencies separately and fusing them effectively, PULSE demonstrates superior performance compared to existing approaches, as validated through extensive experiments on real-world datasets. In summary, PULSE represents a novel approach to location prediction that harnesses the power of deep learning and Knowledge networks / Graphs, offering a comprehensive solution to address the complexities of human mobility forecasting and preferences history.
Description: Mémoire de Projet de Fin d’Etudes : Génie Industriel. Data Science-Intelligence Artificiel : Alger, École Nationale Polytechnique : 2024 Mémoire confidentiel 6 mois jusqu'à Janvier 2025
URI/URL: http://repository.enp.edu.dz/jspui/handle/123456789/11069
Collection(s) :Département Génie industriel : Data Science_Intelligence Artificielle

Fichier(s) constituant ce document :
Fichier Description TailleFormat 
pfe.2024.DSIA.CHOUIREF.Zineb-Kawtar..pdfPI01524320.53 kBAdobe PDFVoir/Ouvrir


Tous les documents dans DSpace sont protégés par copyright, avec tous droits réservés.