Deep Learning Algorithm
Deep learning algorithms are computational models inspired by the structure and function of the brain, primarily used to learn complex patterns from data and make predictions. Current research emphasizes improving model robustness and interpretability, particularly through techniques like feature attribution and sharpness-aware minimization, and exploring efficient training methods such as self-supervised learning and decentralized training across heterogeneous datasets. These advancements are driving significant impact across diverse fields, from medical diagnosis (e.g., cancer detection, retinopathy screening) and cybersecurity to scientific discovery (e.g., materials science, astrophysics) and industrial applications (e.g., seismic interpretation, manufacturing defect detection).
Papers
Point Cloud Registration for LiDAR and Photogrammetric Data: a Critical Synthesis and Performance Analysis on Classic and Deep Learning Algorithms
Ningli Xu, Rongjun Qin, Shuang Song
Lightsolver challenges a leading deep learning solver for Max-2-SAT problems
Hod Wirzberger, Assaf Kalinski, Idan Meirzada, Harel Primack, Yaniv Romano, Chene Tradonsky, Ruti Ben Shlomi