Physical Consistency Bridges Heterogeneous Data in Molecular Multi-Task Learning

Neural Information Processing Systems 

In recent years, machine learning has demonstrated impressive capability in handling molecular science tasks. To support various molecular properties at scale, machine learning models are trained in the multi-task learning paradigm. Nevertheless, data of different molecular properties are often not aligned: some quantities, e.g.