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Simplex-to-Euclidean Bijection for Conjugate and Calibrated Multiclass Gaussian Process

arXiv cs.LG / 3/18/2026

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Key Points

  • The paper proposes a conjugate and calibrated Gaussian process (GP) model for multiclass classification by using Aitchison geometry on the probability simplex to map simplex-valued probabilities to an unconstrained Euclidean representation.
  • This mapping turns classification into a GP regression problem with fewer latent dimensions than standard multiclass GP classifiers, enabling conjugate inference.
  • It achieves well-calibrated predictive probabilities and avoids distributional approximations in model construction.
  • The method is compatible with standard sparse GP regression techniques, enabling scalable inference on larger datasets.
  • Empirical results show well-calibrated and competitive performance on synthetic and real-world datasets.

Abstract

We propose a conjugate and calibrated Gaussian process (GP) model for multi-class classification by exploiting the geometry of the probability simplex. Our approach uses Aitchison geometry to map simplex-valued class probabilities to an unconstrained Euclidean representation, turning classification into a GP regression problem with fewer latent dimensions than standard multi-class GP classifiers. This yields conjugate inference and reliable predictive probabilities without relying on distributional approximations in the model construction. The method is compatible with standard sparse GP regression techniques, enabling scalable inference on larger datasets. Empirical results show well-calibrated and competitive performance across synthetic and real-world datasets.