Neural Topic
Neural networks are increasingly used to address diverse challenges across scientific domains, from improving data compression and image reconstruction to modeling complex systems and enhancing decision-making processes. Current research focuses on developing novel neural architectures, such as hybrid residual networks and vision transformers, and integrating them with established methods like radial basis functions and optimal transport to improve accuracy, efficiency, and interpretability. These advancements are impacting various fields, including neuroscience, physics, and engineering, by enabling more efficient data analysis, improved model accuracy, and faster solutions to complex problems.
Papers
AlphaZip: Neural Network-Enhanced Lossless Text Compression
Swathi Shree Narashiman, Nitin Chandrachoodan
Neural refractive index field: Unlocking the Potential of Background-oriented Schlieren Tomography in Volumetric Flow Visualization
Yuanzhe He, Yutao Zheng, Shijie Xu, Chang Liu, Di Peng, Yingzheng Liu, Weiwei Cai