Probabilistic Generative Deep Learning for Molecular Design
This approach tackles molecular design for fields like drug discovery, but it appears incremental as it builds on existing generative models and data sources.
The paper addresses the problem of discovering and designing new molecules by using probabilistic generative deep learning models, leveraging existing databases and computational data to learn molecular structures and properties.
Probabilistic generative deep learning for molecular design involves the discovery and design of new molecules and analysis of their structure, properties and activities by probabilistic generative models using the deep learning approach. It leverages the existing huge databases and publications of experimental results, and quantum-mechanical calculations, to learn and explore molecular structure, properties and activities. We discuss the major components of probabilistic generative deep learning for molecular design, which include molecular structure, molecular representations, deep generative models, molecular latent representations and latent space, molecular structure-property and structure-activity relationships, molecular similarity and molecular design. We highlight significant recent work using or applicable to this new approach.