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22–24 Jun 2022
Asia/Bangkok timezone
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Memorization and Prediction Capability of Interacting Phase Oscillators

S4 High Energy and Particle Physics
23 Jun 2022, 11:30
15m
QUARTZ

QUARTZ

Board: O-S4-2
Invited Speaker High Energy and Particle Physics S4 High Energy and Particle Physics

Speaker

Mr Chanin Kumpeerakij

Description

Nonlinear dynamical systems, such as well-tuned recurrent neural networks, have proved a powerful tool for modeling temporal data. However, tuning such models to achieve the best performance remains an outstanding challenge, not least because of the complex behaviors that emerge from interacting microscopic constituents. Here, we consider a minimal model of two interacting phase oscillators coupled to a thermal bath and driven by a common signal. We quantify the memory and predictive capability of the system with the mutual information between the phases of oscillators and the signals at different times. We show that the interaction between oscillators can increase the information between the system and the signal. We attribute this behavior to an increase in the effective signal-to-noise ratio, resulting from a stronger correlation between the oscillators. Our work offers a first step toward a systematic approach to optimize interacting nonlinear dynamical systems for memorizing and predicting temporal patterns.

Author

Mr Chanin Kumpeerakij

Presentation materials