Latent Variable
Latent variable modeling aims to uncover hidden factors underlying observed data, improving understanding of complex systems and enabling more accurate predictions. Current research focuses on developing robust and efficient algorithms for inferring these latent variables, particularly within variational autoencoders (VAEs), diffusion models, and generative adversarial networks (GANs), often incorporating techniques like disentanglement and causal discovery. These advancements are impacting diverse fields, from medical diagnostics (integrating genomic and imaging data) to recommender systems (mitigating bias) and neuroscience (interpreting neural activity), by providing more interpretable and informative representations of complex datasets.
Papers
[Re] The Discriminative Kalman Filter for Bayesian Filtering with Nonlinear and Non-Gaussian Observation Models
Josue Casco-Rodriguez, Caleb Kemere, Richard G. Baraniuk
Bayesian adaptive learning to latent variables via Variational Bayes and Maximum a Posteriori
Hu Hu, Sabato Marco Siniscalchi, Chin-Hui Lee