Evolving Observation
Evolving observation research focuses on leveraging diverse data sources, often incomplete or noisy, to improve learning and prediction in various domains. Current efforts concentrate on developing robust algorithms and model architectures, such as transformers and neural networks, that can handle variable-length observations, sparse data, and transitions between different environments. This work is significant because it addresses limitations in traditional methods by enabling more efficient and accurate learning from real-world data, impacting fields ranging from weather forecasting and robotics to human behavior analysis and scientific discovery.
Papers
Using VAEs to Learn Latent Variables: Observations on Applications in cryo-EM
Daniel G. Edelberg, Roy R. Lederman
Fast exploration and learning of latent graphs with aliased observations
Miguel Lazaro-Gredilla, Ishan Deshpande, Sivaramakrishnan Swaminathan, Meet Dave, Dileep George
Joint Behavior and Common Belief
Meir Friedenberg, Joseph Y. Halpern