Consistent Comparison
Consistent comparison across diverse methods and datasets is a crucial aspect of many scientific fields, aiming to objectively evaluate and improve model performance and identify optimal approaches. Current research focuses on comparing various model architectures (e.g., convolutional neural networks, transformers, autoencoders) and algorithms (e.g., reinforcement learning, genetic programming) across different applications, including medical image analysis, natural language processing, and robotics. These comparative studies are essential for advancing methodological rigor, informing best practices, and ultimately improving the reliability and effectiveness of models in various scientific and practical domains.
Papers
A Comparison of Mesh-Free Differentiable Programming and Data-Driven Strategies for Optimal Control under PDE Constraints
Roussel Desmond Nzoyem, David A. W. Barton, Tom Deakin
A New Real-World Video Dataset for the Comparison of Defogging Algorithms
Alexandra Duminil, Jean-Philippe Tarel, Roland Brémond
Exploration and Comparison of Deep Learning Architectures to Predict Brain Response to Realistic Pictures
Riccardo Chimisso, Sathya Buršić, Paolo Marocco, Giuseppe Vizzari, Dimitri Ognibene
A Comparison between Frame-based and Event-based Cameras for Flapping-Wing Robot Perception
Raul Tapia, Juan Pablo Rodríguez-Gómez, Juan Antonio Sanchez-Diaz, Francisco Javier Gañán, Iván Gutierrez Rodríguez, Javier Luna-Santamaria, José Ramiro Martínez-de Dios, Anibal Ollero
Optimization of Raman amplifiers: a comparison between black-, grey- and white-box modeling
Metodi P. Yankov, Mehran Soltani, Andrea Carena, Darko Zibar, Francesco Da Ros