Bhuyan, Bikram PratimSingh, Thipendra P.Tomar, RaviMeraihi, YassineRamdane-Cherif, Amar2024-10-142024-10-1420240941-0643https://link.springer.com/article/10.1007/s00521-024-10365-1https://doi.org/10.1007/s00521-024-10365-1https://dspace.univ-boumerdes.dz/handle/123456789/14365This study introduces a novel computational framework integrating monadic second-order temporal logic (MSOTL) with hypergraph models to enhance the predictive analysis and prediction of complex systems, with a specific focus on urban agriculture. Traditional graph-based models often fail to capture the intricate, high-order temporal dynamics inherent in such systems. By leveraging the expressive power of MSOTL within a hypergraph context, our approach enables a more nuanced representation of temporal and relational data, leading to improved predictive accuracy and deeper analytical insights. The framework was applied to a comprehensive dataset of urban agricultural practices, incorporating data from diverse farming sites across multiple countries. Our results demonstrate the model’s capability to outperform existing methods in predicting agricultural outcomes by effectively capturing both the spatial and temporal complexities of urban farming data. The study not only advances the theoretical understanding of hypergraph-based temporal logic modeling but also offers an application for urban agricultural planning and management.enHypergraph representationMonadic second-order temporal logicNeuro-symbolic artificial intelligencePredictive modelingUrban agricultureA Monadic Second-Order Temporal Logic framework for hypergraphsArticle