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Advanced filters: Author: Andrew Henry Moberly Clear advanced filters
  • Integral equations are used in science and engineering to model complex systems with non-local dependencies; however, existing traditional and machine-learning-based methods cannot yield accurate or efficient solutions in several complex cases. Zappala and colleagues introduce a neural-network-based method that can learn an integral operator and its dynamics from data, demonstrating higher accuracy or scalability compared with several state-of-the-art methods.

    • Emanuele Zappala
    • Antonio Henrique de Oliveira Fonseca
    • David van Dijk
    ResearchOpen Access
    Nature Machine Intelligence
    Volume: 6, P: 1046-1062