Litcius/Paper detail

Translation between Molecules and Natural Language

Carl K. Edwards, Tuan Lai, Kevin Ros, Garrett Honke, Kyunghyun Cho, Heng Ji

2022121 citationsDOIOpen Access PDF

Abstract

We present MolT5 - a self-supervised learning framework for pretraining models on a vast amount of unlabeled natural language text and molecule strings. MolT5 allows for new, useful, and challenging analogs of traditional vision-language tasks, such as molecule captioning and text-based de novo molecule generation (altogether: translation between molecules and language), which we explore for the first time. Since MolT5 pretrains models on single-modal data, it helps overcome the chemistry domain shortcoming of data scarcity. Furthermore, we consider several metrics, including a new cross-modal embedding-based metric, to evaluate the tasks of molecule captioning and text-based molecule generation. Our results show that MolT5-based models are able to generate outputs, both molecules and captions, which in many cases are high quality.

Topics & Concepts

Computer scienceNatural language processingMachine translationNatural languageEmbeddingArtificial intelligenceNatural language generationTranslation (biology)Closed captioningMetric (unit)Training setDomain (mathematical analysis)ChemistryMathematicsEngineeringMessenger RNAMathematical analysisGeneImage (mathematics)Operations managementBiochemistryComputational Drug Discovery MethodsMachine Learning in Materials ScienceChemical Synthesis and Analysis
Translation between Molecules and Natural Language | Litcius