Autoencoder Model
Autoencoders are neural network models designed to learn efficient data representations by encoding input data into a lower-dimensional latent space and then reconstructing the original data from this compressed representation. Current research focuses on improving reconstruction quality, particularly through incorporating techniques like diffusion models and adversarial losses, and extending autoencoders to handle diverse data types, including images, audio, and multi-modal data, often using architectures such as masked autoencoders and transformers. This versatility makes autoencoders valuable tools across numerous fields, from image compression and anomaly detection to sound source localization and the prediction of treatment effects in healthcare.
Papers
On the Effects of Irrelevant Variables in Treatment Effect Estimation with Deep Disentanglement
Ahmad Saeed Khan, Erik Schaffernicht, Johannes Andreas Stork
Towards a Knowledge guided Multimodal Foundation Model for Spatio-Temporal Remote Sensing Applications
Praveen Ravirathinam, Ankush Khandelwal, Rahul Ghosh, Vipin Kumar