Complex Network
Complex networks research focuses on understanding the structure and dynamics of interconnected systems, aiming to predict their behavior and resilience in the face of perturbations. Current research emphasizes developing efficient algorithms for tasks like community detection, node centrality analysis, and network embedding, often employing machine learning models such as graph neural networks, deep sets, and evolutionary algorithms, alongside generative models for data augmentation. These advancements have significant implications for diverse fields, including disease modeling, social network analysis, and the optimization of technological systems, by providing tools for improved prediction, control, and understanding of complex systems.
Papers
LLaMA-NAS: Efficient Neural Architecture Search for Large Language Models
Anthony Sarah, Sharath Nittur Sridhar, Maciej Szankin, Sairam Sundaresan
Network Diffusion -- Framework to Simulate Spreading Processes in Complex Networks
Michał Czuba, Mateusz Nurek, Damian Serwata, Yu-Xuan Qiu, Mingshan Jia, Katarzyna Musial, Radosław Michalski, Piotr Bródka