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SP-NSAICD 2026 : [ESANN2026] Special Session - Neuro Symbolic AI and Complex Data | |||||||||||||
Link: https://www.esann.org/special-sessions#session1 | |||||||||||||
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Call For Papers | |||||||||||||
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CALL FOR PAPERS (ESANN 2026) European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning: https://www.esann.org/ More details on the Special Session "Neuro Symbolic AI and Complex Data": https://www.esann.org/special-sessions#session1 Bruges, Belgium, 22-24 April 2026 *************************************************************** ****** Call For Papers ****** In the contemporary era of Artificial Intelligence (AI) based decision-making, the application of AI on complex data (e.g., nonlinear systems, images, text, sequences, trees, and graphs) has become increasingly pivotal - spanning domains such as drug discovery, industrial automation, and decision support systems. Yet, purely data-driven methods often fall short in domains where structured reasoning, interpretability, and the integration of human knowledge are essential. Neuro-symbolic AI emerges as a promising paradigm that combines the strengths of symbolic reasoning with sub-symbolic learning, bridging the gap between data-driven models and domain-specific knowledge, requirements, and constraints. This fusion allows for more generalizable, explainable, and trustworthy systems, capable of incorporating logical rules, expert knowledge, and domain constraints into complex data-driven tasks. In this context, Neuro-Symbolic AI holds the potential to enhance model sustainability, robustness, transparency, and alignment with human-centric goals. This additional knowledge can take many forms, for example: -) Constraint-Aware AI, which embeds hard or soft logical constraints or verification rules in learning algorithms; -) AI for science, where (possibly interpretable) models must comply with physical laws or symbolic expressions; -) Socially responsible AI, where ethical frameworks and cultural principles shape decisions; -) Applications (e.g., bioinformatics, software engineering, natural sciences, or legal informatics) where knowledge graphs and ontologies guide data-driven inference. This special session aims to gather valuable contributions and early findings in the field of Neuro-Symbolic AI for Complex Data. Our main objective is to showcase the potential and limitations of new ideas, improvements, and cross-disciplinary integrations of symbolic reasoning and machine learning for solving real-world problems. We welcome contributions across disciplines and encourage submissions that integrate symbolic reasoning, statistical learning, complex data, and domain-specific knowledge to advance the frontiers of AI research. ****** Session Organisers ****** -) Luca Oneto (University of Genoa, Italy) -) Nicolò Navarin (University of Padua, Italy) -) Luca Pasa (University of Padua, Italy) -) Davide Rigoni (University of Padua, Italy) -) Davide Anguita (DIBRIS - University of Genova, Italy) |
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