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.
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