Generative Framework
Generative frameworks encompass computational methods designed to create new data instances resembling a training dataset, aiming to model underlying data distributions and generate novel, realistic samples. Current research emphasizes diverse applications, from synthesizing images and videos to predicting complex systems and generating text, employing architectures like diffusion models, variational autoencoders, generative adversarial networks, and graph neural networks. These advancements have significant implications across various fields, including healthcare (predictive modeling), neuroscience (bridging data and theory), and AI safety (ensuring fairness and privacy in synthetic data generation).
Papers
Deep Discrete Encoders: Identifiable Deep Generative Models for Rich Data with Discrete Latent Layers
Seunghyun Lee, Yuqi Gu
ProjectedEx: Enhancing Generation in Explainable AI for Prostate Cancer
Xuyin Qi, Zeyu Zhang, Aaron Berliano Handoko, Huazhan Zheng, Mingxi Chen, Ta Duc Huy, Vu Minh Hieu Phan, Lei Zhang, Linqi Cheng, Shiyu Jiang, Zhiwei Zhang, Zhibin Liao, Yang Zhao, Minh-Son To
A Deep Probabilistic Framework for Continuous Time Dynamic Graph Generation
Ryien Hosseini, Filippo Simini, Venkatram Vishwanath, Henry Hoffmann
Interactive Scene Authoring with Specialized Generative Primitives
Clément Jambon (1), Changwoon Choi (2), Dongsu Zhang (2), Olga Sorkine-Hornung (1), Young Min Kim (2) ((1) ETH Zurich, (2) Seoul National University)