Deep Generative Model

Deep generative models are a class of machine learning algorithms designed to learn the underlying probability distribution of complex data and generate new samples resembling the training data. Current research focuses on improving model architectures like variational autoencoders (VAEs), diffusion models, and generative adversarial networks (GANs), exploring their applications in diverse fields such as medical imaging, robotics, finance, and scientific modeling. These models are significant because they offer powerful tools for data augmentation, anomaly detection, and complex system simulation, impacting various scientific disciplines and practical applications by enabling more efficient and insightful data analysis.

Papers