Corpus ID: 209532066

Computational model discovery with reinforcement learning

@article{Bassenne2020ComputationalMD,
  title={Computational model discovery with reinforcement learning},
  author={Maxime Bassenne and Adri{\'a}n Lozano-Dur{\'a}n},
  journal={ArXiv},
  year={2020},
  volume={abs/2001.00008}
}
  • Maxime Bassenne, Adrián Lozano-Durán
  • Published in ArXiv 2020
  • Mathematics, Computer Science, Physics
  • The motivation of this study is to leverage recent breakthroughs in artificial intelligence research to unlock novel solutions to important scientific problems encountered in computational science. To address the human intelligence limitations in discovering reduced-order models, we propose to supplement human thinking with artificial intelligence. Our three-pronged strategy consists of learning (i) models expressed in analytical form, (ii) which are evaluated a posteriori, and iii) using… CONTINUE READING

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