LINOCS: Lookahead Inference of Networked Operators for Continuous Stability
Noga Mudrik, Eva Yezerets, Yenho Chen, Christopher Rozell, Adam, Charles

TL;DR
LINOCS is a novel method that accurately identifies hidden dynamical interactions in noisy, high-dimensional systems, enabling better long-term predictions and interpretability in complex temporal data.
Contribution
Introduces LINOCS, a robust learning approach that integrates multi-step predictions with adaptive weighting to recover interpretable networked operators in dynamical systems.
Findings
Successfully recovers ground truth operators in synthetic data
Produces meaningful operators in real-world examples
Enhances long-term prediction accuracy
Abstract
Identifying latent interactions within complex systems is key to unlocking deeper insights into their operational dynamics, including how their elements affect each other and contribute to the overall system behavior. For instance, in neuroscience, discovering neuron-to-neuron interactions is essential for understanding brain function; in ecology, recognizing the interactions among populations is key for understanding complex ecosystems. Such systems, often modeled as dynamical systems, typically exhibit noisy high-dimensional and non-stationary temporal behavior that renders their identification challenging. Existing dynamical system identification methods often yield operators that accurately capture short-term behavior but fail to predict long-term trends, suggesting an incomplete capture of the underlying process. Methods that consider extended forecasts (e.g., recurrent neural…
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Taxonomy
TopicsControl and Stability of Dynamical Systems · Advanced Control Systems Optimization · Stability and Control of Uncertain Systems
