Enforcing constraints for interpolation and extrapolation in Generative Adversarial Networks
Panos Stinis, Tobias Hagge, Alexandre M. Tartakovsky, Enoch Yeung

TL;DR
This paper develops methods to incorporate algebraic and differential constraints into GANs for improved interpolation and extrapolation of dynamical systems, addressing stability and efficiency issues.
Contribution
It introduces constraint enforcement techniques within GAN training for dynamical systems, enhancing prediction accuracy while managing training stability.
Findings
Adding small noise to constraints improves training stability.
Constraint enforcement during training enhances extrapolation accuracy.
Projection steps can enforce constraints during prediction.
Abstract
We suggest ways to enforce given constraints in the output of a Generative Adversarial Network (GAN) generator both for interpolation and extrapolation (prediction). For the case of dynamical systems, given a time series, we wish to train GAN generators that can be used to predict trajectories starting from a given initial condition. In this setting, the constraints can be in algebraic and/or differential form. Even though we are predominantly interested in the case of extrapolation, we will see that the tasks of interpolation and extrapolation are related. However, they need to be treated differently. For the case of interpolation, the incorporation of constraints is built into the training of the GAN. The incorporation of the constraints respects the primary game-theoretic setup of a GAN so it can be combined with existing algorithms. However, it can exacerbate the problem of…
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Taxonomy
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