On the Convergence of Semi Unsupervised Calibration through Prior Adaptation Algorithm
Estienne, Lautaro, Hansen, Roberta, Vera, Matias, Ferrer, Luciana, Piantanida, Pablo
–arXiv.org Artificial Intelligence
Calibration is an essential key in machine leaning. Semi Unsupervised Calibration through Prior Adaptation (SUCPA) is a calibration algorithm used in (but not limited to) large-scale language models defined by a {system of first-order difference equation. The map derived by this system} has the peculiarity of being non-hyperbolic {with a non-bounded set of non-isolated fixed points}. In this work, we prove several convergence properties of this algorithm from the perspective of dynamical systems. For a binary classification problem, it can be shown that the algorithm always converges, {more precisely, the map is globally asymptotically stable, and the orbits converge} to a single line of fixed points. Finally, we perform numerical experiments on real-world application to support the presented results. Experiment codes are available online.
arXiv.org Artificial Intelligence
Jan-5-2024
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