No Equations Needed: Learning System Dynamics Without Relying on Closed-Form ODEs
Krzysztof Kacprzyk, Mihaela van der Schaar

TL;DR
This paper introduces a new approach for modeling dynamical systems directly from data, bypassing the need for discovering and analyzing closed-form ODEs, thereby simplifying the process and improving model interpretability.
Contribution
The paper proposes a direct semantic modeling method that predicts system behavior from data, eliminating the traditional two-step process of ODE discovery and analysis.
Findings
Simplifies dynamical system modeling process
Allows direct behavior editing and incorporation of biases
Enhances transparency and flexibility of models
Abstract
Data-driven modeling of dynamical systems is a crucial area of machine learning. In many scenarios, a thorough understanding of the model's behavior becomes essential for practical applications. For instance, understanding the behavior of a pharmacokinetic model, constructed as part of drug development, may allow us to both verify its biological plausibility (e.g., the drug concentration curve is non-negative and decays to zero) and to design dosing guidelines. Discovery of closed-form ordinary differential equations (ODEs) can be employed to obtain such insights by finding a compact mathematical equation and then analyzing it (a two-step approach). However, its widespread use is currently hindered because the analysis process may be time-consuming, requiring substantial mathematical expertise, or even impossible if the equation is too complex. Moreover, if the found equation's behavior…
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Taxonomy
TopicsComplex Systems and Decision Making
