Litcius/Paper detail

Reinforcement Learning Configuration Interaction

Joshua J. Goings, Hang Hu, Chao Yang, Xiaosong Li

2021Journal of Chemical Theory and Computation25 citationsDOIOpen Access PDF

Abstract

Selected configuration interaction (sCI) methods exploit the sparsity of the full configuration interaction (FCI) wave function, yielding significant computational savings and wave function compression without sacrificing the accuracy. Despite recent advances in sCI methods, the selection of important determinants remains an open problem. We explore the possibility of utilizing reinforcement learning approaches to solve the sCI problem. By mapping the configuration interaction problem onto a sequential decision-making process, the agent learns on-the-fly which determinants to include and which to ignore, yielding a compressed wave function at near-FCI accuracy. This method, which we call reinforcement-learned configuration interaction, adds another weapon to the sCI arsenal and highlights how reinforcement learning approaches can potentially help solve challenging problems in electronic structure theory.

Topics & Concepts

Reinforcement learningComputer scienceExploitFunction (biology)Artificial intelligenceProcess (computing)Machine learningReinforcementEngineeringOperating systemBiologyEvolutionary biologyComputer securityStructural engineeringMachine Learning in Materials ScienceMolecular Junctions and NanostructuresAdvanced Memory and Neural Computing