Transfer learning (TL) is a well-established machine learning technique to boost the generalization performance on a specific (target) task using information gained from a …
This research presents a comprehensive framework for predicting the damage in lightweight composite high-pressure hydrogen storage tanks and optimizes their design to prevent …
A Kikumoto, K Shibata, T Nishio, D Badre - bioRxiv, 2024 - pmc.ncbi.nlm.nih.gov
Extensive practice makes task performance more efficient and precise, leading to automaticity. However, theories of automaticity differ on which levels of task representations …
Statistical learning is a mechanism for detecting associations among co-occurring elements in many domains and species. A key controversy is whether it leads to memory for discrete …
Statistical physics provides tools for analyzing high-dimensional problems in machine learning and theoretical neuroscience. These calculations, particularly those using the …
The Bayesian approach has proven to be a valuable tool for analytical inspection of neural networks. Recent theoretical advances have led to the development of an effective statistical …
Delayed generalization, also known as``grokking'', has emerged as a well-replicated phenomenon in overparameterized neural networks. Recent theoretical works associated …