Geometrically Inspired Kernel Machines for Collaborative Learning Beyond Gradient Descent (Abstract Reprint)

Authors

  • Mohit Kumar University of Rostock, Germany Software Competence Center Hagenberg GmbH, Austria
  • Alexander Valentinitsch Software Competence Center Hagenberg GmbH, Austria
  • Magdalena Fuchs ETH Zürich, Switzerland
  • Mathias Brucker Software Competence Center Hagenberg GmbH, Austria
  • Juliana Bowles University of St Andrews, UK
  • Adnan Husakovic Primetals Technologies Austria GmbH, Austria
  • Ali Abbas Primetals Technologies Austria GmbH, Austria
  • Bernhard A. Moser Johannes Kepler University, Austria Software Competence Center Hagenberg GmbH, Austria

DOI:

https://doi.org/10.1609/aaai.v40i47.41386

Abstract

This paper develops a novel mathematical framework for collaborative learning by means of geometrically inspired kernel machines which includes statements on the bounds of generalisation and approximation errors, and sample complexity. For classification problems, this approach allows us to learn bounded geometric structures around given data points and hence solve the global model learning problem in an efficient way by exploiting convexity properties of the related optimisation problem in a Reproducing Kernel Hilbert Space (RKHS). In this way, we can reduce classification problems to determining the closest bounded geometric structure from a given data point. Further advantages that come with our solution is that our approach does not require clients to perform multiple epochs of local optimisation using stochastic gradient descent, nor require rounds of communication between client/server for optimising the global model. We highlight that numerous experiments have shown that the proposed method is a competitive alternative to the state-of-the-art.

Published

2026-03-14

How to Cite

Kumar, M., Valentinitsch, A., Fuchs, M., Brucker, M., Bowles, J., Husakovic, A., … Moser, B. A. (2026). Geometrically Inspired Kernel Machines for Collaborative Learning Beyond Gradient Descent (Abstract Reprint). Proceedings of the AAAI Conference on Artificial Intelligence, 40(47), 39871–39871. https://doi.org/10.1609/aaai.v40i47.41386