Nonparametric adaptive control and prediction: theory and randomized algorithms
Nicholas M. Boffi, Stephen Tu, Jean-Jacques E. Slotine

TL;DR
This paper introduces a nonparametric adaptive control algorithm using reproducing kernel Hilbert spaces and randomized Fourier features, enabling scalable, expressive, and provably stable control of high-dimensional systems.
Contribution
It develops a novel nonparametric adaptive control method with randomized implementation that maintains expressivity and computational efficiency, extending adaptive control to infinite-dimensional spaces.
Findings
Successfully learned a 60-dimensional gravitational system model.
Achieved polynomial complexity scaling with system parameters.
Demonstrated improved performance with deep neural network extensions.
Abstract
A key assumption in the theory of nonlinear adaptive control is that the uncertainty of the system can be expressed in the linear span of a set of known basis functions. While this assumption leads to efficient algorithms, it limits applications to very specific classes of systems. We introduce a novel nonparametric adaptive algorithm that estimates an infinite-dimensional density over parameters online to learn an unknown dynamics in a reproducing kernel Hilbert space. Surprisingly, the resulting control input admits an analytical expression that enables its implementation despite its underlying infinite-dimensional structure. While this adaptive input is rich and expressive - subsuming, for example, traditional linear parameterizations - its computational complexity grows linearly with time, making it comparatively more expensive than its parametric counterparts. Leveraging the theory…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Applications · Generative Adversarial Networks and Image Synthesis
