Pattern Recognition
Pattern recognition, the automated identification of patterns and regularities in data, aims to extract meaningful information and facilitate decision-making across diverse fields. Current research emphasizes robust pattern recognition under challenging conditions (e.g., noisy data, adverse weather), often employing deep learning architectures like convolutional neural networks, transformers, and hybrid quantum-inspired models, alongside techniques such as dimensionality reduction and ensemble methods. These advancements are crucial for applications ranging from medical diagnosis and autonomous driving to traffic management and cybersecurity, improving efficiency, accuracy, and safety in various domains.
Papers
Forward Composition Propagation for Explainable Neural Reasoning
Isel Grau, Gonzalo Nápoles, Marilyn Bello, Yamisleydi Salgueiro, Agnieszka Jastrzebska
Prolog-based agnostic explanation module for structured pattern classification
Gonzalo Nápoles, Fabian Hoitsma, Andreas Knoben, Agnieszka Jastrzebska, Maikel Leon Espinosa