Differentiable Neural
Differentiable neural networks integrate optimization algorithms directly into neural network architectures, enabling end-to-end training of systems involving both continuous and discrete components. Current research focuses on applying this approach to diverse problems, including particle tracking, shape abstraction, brain modeling, and solving combinatorial optimization problems within the network itself, often leveraging architectures like graph neural networks and associative memories. This approach allows for efficient training of complex systems and offers significant advantages in areas like scientific modeling, image processing, and machine learning, leading to improved accuracy and interpretability.
Papers
October 6, 2022
July 27, 2022
June 4, 2022
May 30, 2022
April 1, 2022
March 18, 2022
March 1, 2022
February 25, 2022