Towards Efficient Molecular Property Optimization with Graph Energy Based Models

Miglior, Luca, Simone, Lorenzo, Podda, Marco, Bacciu, Davide

arXiv.org Artificial Intelligence 

Optimizing chemical properties is a challenging task due to the vastness and complexity of chemical space. Here, we present a generative energy-based architecture for implicit chemical property optimization, designed to efficiently generate molecules that satisfy target properties without explicit conditional generation. We use Graph Energy Based Models and a training approach that does not require property labels.