Latent Feature
Latent features represent unobserved variables underlying observable data, aiming to improve model performance, interpretability, and robustness. Current research focuses on mining these features using various techniques, including large language models, variational autoencoders, and diffusion models, often within frameworks like mixture-of-experts or knowledge distillation. This work is significant because uncovering and leveraging latent features enhances predictive accuracy in diverse fields such as healthcare, criminal justice, and 3D modeling, while also improving model explainability and addressing issues like bias and distribution shifts.
Papers
Disentangling Genotype and Environment Specific Latent Features for Improved Trait Prediction using a Compositional Autoencoder
Anirudha Powadi, Talukder Zaki Jubery, Michael C. Tross, James C. Schnable, Baskar Ganapathysubramanian
Analyzing Generative Models by Manifold Entropic Metrics
Daniel Galperin, Ullrich Köthe