Alimenté par : Claudia (ADFI Alsace)
Cet outil s'appuie sur PubMind
Un accès direct à la littérature scientifique via la base PubMed permettant de faciliter la veille sur les enjeux complexes de la santé mentale et du fait religieux : de la neuroscience des croyances à l'étude des abus spirituels, en passant par la prise en charge des traumatismes et des processus de déconversion.
Dernière synchronisation le 07/06/2026
PLoS One . 2025;20 (7) :e0327459
Sports event revenue prediction is a complex, multimodal task that requires effective integration of diverse data sources. Traditional models struggle to combine real-time data streams with historical time-series data, resulting in limited prediction accuracy. To address this challenge, we propose F-TransR, a Transformer-based multimodal revenue prediction model. F-TransR introduces key innovations, including a real-time data stream processing module, a historical time-series modeling module, a novel multimodal fusion mechanism, and a cross-modal interaction modeling module. These modules enable the model to effectively integrate and capture dynamic interactions between multimodal features and temporal dependencies, which previous models fail to handle efficiently. Experimental results demonstrate that F-TransR significantly outperforms state-of-the-art models, including Informer, Autoformer, FEDformer, MTNet, and CrossFormer, on the Kaggle Sports Analytics and Reddit Comments datasets. On the Kaggle dataset, MSE and MAPE are reduced by 6.4% and 2.9%, respectively, while [Formula: see text] increases to 0.938. On the Reddit dataset, MSE and MAPE decrease by 6.6% and 5.3%, respectively, and [Formula: see text] improves to 0.854. Compared to existing methods, F-TransR not only improves the interaction efficiency of multimodal features but also demonstrates strong robustness and scalability, providing substantial support for multimodal revenue prediction in real-world applications.