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Causal Representation Learning


Generative Models

- + Generative models, including GPT, GANs, and diffusion models, wield significant neural network capabilities to faithfully replicate intricate distributions found in real data. Our research emphasis lies in crafting generative models that are not only data-efficient but also computationally efficient. Moreover, delving into the realm of causal generative models, our core interest centers on developing models that mimic the data generation process while affording controllable and nuanced generations. Lastly, our curiosity extends to exploring generative models tailored for diverse data types, spanning images, text, 3D human motion, and beyond.