Solution Path
Solution path research encompasses diverse fields, focusing on finding optimal or effective solutions across various problem domains, from computer vision and natural language processing to robotics and differential equations. Current research emphasizes developing robust and efficient algorithms, including transformer-based models and physics-informed neural networks, to address challenges like data heterogeneity, occlusion, and model interpretability. These advancements are crucial for improving the accuracy, reliability, and explainability of solutions in numerous applications, ranging from autonomous driving and medical diagnosis to material science and environmental monitoring.
Papers
A Deep Learning Approach for the solution of Probability Density Evolution of Stochastic Systems
Seid H. Pourtakdoust, Amir H. Khodabakhsh
opPINN: Physics-Informed Neural Network with operator learning to approximate solutions to the Fokker-Planck-Landau equation
Jae Yong Lee, Juhi Jang, Hyung Ju Hwang
FDVTS's Solution for 2nd COV19D Competition on COVID-19 Detection and Severity Analysis
Junlin Hou, Jilan Xu, Rui Feng, Yuejie Zhang