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Memory, Prediction and Computation in the Kuramoto model

ORAL

Abstract

Nonlinear dynamical systems, such as recurrent neural networks, have proved a powerful model for temporal data, exhibiting remarkable predictive capacity even for chaotic time series. However such performance relies on finding the right parameter regimes, a challenging process for large dynamical systems required to model complex data. Here we investigate the computational capability of interacting phase oscillators, described by the Kuramoto model and coupled to synthetic input data with tunable correlation times. Our approach enables systematic exploration of qualitatively distinct parameter regimes, separated by phase transitions, as well as how they interact with the structure in the data. We use information-theoretic measures to quantify the memory and predictive capacities of many-oscillator systems and analyze their computational efficiency through the lens of the information bottleneck principle. Our work offers an insight into the emergence of computation from the collective behaviors of large dynamical systems.

Presenters

  • Chanin Kumpeerakij

    Chula Intelligent and Complex Systems Lab, Department of Physics, Faculty of Science, Chulalongkorn University, Thailand

Authors

  • Chanin Kumpeerakij

    Chula Intelligent and Complex Systems Lab, Department of Physics, Faculty of Science, Chulalongkorn University, Thailand

  • David J Schwab

    The Graduate Center, CUNY

  • Thiparat Chotibut

    Chula Intelligent and Complex Systems Lab, Department of Physics, Chulalongkorn University, Thailand, Chula Intelligent and Complex Systems Lab, Department of Physics, Faculty of Science, Chulalongkorn University, Bangkok, Thailand, Chula Intelligent and Complex Systems Lab, Department of Physics, Faculty of Science, Chulalongkorn University, Thailand

  • Vudtiwat Ngampruetikorn

    The Graduate Center, CUNY, The Graduate Center, City University of New York