Neural Network Model
Neural network models are computational systems inspired by the structure and function of the brain, aiming to solve complex problems through learning from data. Current research focuses on improving model interpretability (e.g., through decompilation and analysis of network weights), enhancing efficiency (e.g., via pruning and coded inference), and addressing challenges in data scarcity and security (e.g., through generative models and encrypted training). These advancements are driving progress in diverse fields, from astrophysics and materials science to finance and healthcare, by enabling more accurate predictions, efficient computations, and improved decision-making.
Papers
WLD-Reg: A Data-dependent Within-layer Diversity Regularizer
Firas Laakom, Jenni Raitoharju, Alexandros Iosifidis, Moncef Gabbouj
Increasing biases can be more efficient than increasing weights
Carlo Metta, Marco Fantozzi, Andrea Papini, Gianluca Amato, Matteo Bergamaschi, Silvia Giulia Galfrè, Alessandro Marchetti, Michelangelo Vegliò, Maurizio Parton, Francesco Morandin
Prior-mean-assisted Bayesian optimization application on FRIB Front-End tunning
Kilean Hwang, Tomofumi Maruta, Alexander Plastun, Kei Fukushima, Tong Zhang, Qiang Zhao, Peter Ostroumov, Yue Hao
GCondNet: A Novel Method for Improving Neural Networks on Small High-Dimensional Tabular Data
Andrei Margeloiu, Nikola Simidjievski, Pietro Lio, Mateja Jamnik