Litcius/Paper detail

PolyNC: a natural and chemical language model for the prediction of unified polymer properties

Haoke Qiu, Lunyang Liu, Xuepeng Qiu, Xuemin Dai, Xiangling Ji, Zhao‐Yan Sun

2023Chemical Science63 citationsDOIOpen Access PDF

Abstract

the power of Natural language and Chemical language (PolyNC). To showcase the efficacy of PolyNC, we have meticulously curated a labeled prompt-structure-property corpus encompassing 22 970 polymer data points on a series of essential polymer properties. Through the use of natural language prompts, PolyNC gains a comprehensive understanding of polymer properties, while employing chemical language (SMILES) to describe polymer structures. In a unified text-to-text manner, PolyNC consistently demonstrates exceptional performance on both regression tasks (such as property prediction) and the classification task (polymer classification). Simultaneous and interactive multitask learning enables PolyNC to holistically grasp the structure-property relationships of polymers. Through a combination of experiments and characterizations, the generalization ability of PolyNC has been demonstrated, with attention analysis further indicating that PolyNC effectively learns structural information about polymers from multimodal inputs. This work provides compelling evidence of the potential for deploying end-to-end language models in polymer research, representing a significant advancement in the AI community's dedicated pursuit of advancing polymer science.

Topics & Concepts

Task (project management)Computer sciencePolymerNatural (archaeology)Unified ModelArtificial intelligenceChemistrySystems engineeringEngineeringOrganic chemistryBiologyPhysicsPaleontologyMeteorologyMachine Learning in Materials ScienceComputational Drug Discovery MethodsTopic Modeling