Geometric deep learning models, which incorporate the relevant molecular symmetries within the neural network architecture, have considerably improved the accuracy and data …
Identifying transition states—saddle points on the potential energy surface connecting reactant and product minima—is central to predicting kinetic barriers and understanding …
F Jia, H Zhu, F Jia, X Ren, S Chen, H Tan… - Scientific Reports, 2024 - nature.com
Recently, generative models have been gradually emerging into the extended dataset field, showcasing their advantages. However, when it comes to generating tabular data, these …
D Shu, AB Farimani - arXiv preprint arXiv:2408.04718, 2024 - arxiv.org
The success of diffusion probabilistic models in generative tasks, such as text-to-image generation, has motivated the exploration of their application to regression problems …
Transporting between arbitrary distributions is a fundamental goal in generative modeling. Recently proposed diffusion bridge models provide a potential solution, but they rely on a …
L Kreimendahl, M Karnaukh… - The Journal of Physical …, 2024 - ACS Publications
Diffusion generative models, a class of machine learning techniques, have shown remarkable promise in materials science and chemistry by enabling the precise generation …
Y Liu, P Wu, X Li, W Mo - PloS one, 2024 - journals.plos.org
This paper takes the example of industrial architectural heritage in Dalian to explore design scheme generation methods based on generative artificial intelligence (AIGC). The study …
ECY Yuan, A Kumar, X Guan, ED Hermes… - arXiv preprint arXiv …, 2024 - arxiv.org
Identifying transition states--saddle points on the potential energy surface connecting reactant and product minima--is central to predicting kinetic barriers and understanding …
This study introduces a modified score matching method aimed at generating molecular structures with high energy accuracy. The denoising process of score matching or diffusion …