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von Mises Quasi-Processes for Bayesian Circular Regression

Authors :
Cohen, Yarden
Navarro, Alexandre Khae Wu
Frellsen, Jes
Turner, Richard E.
Riemer, Raziel
Pakman, Ari
Publication Year :
2024

Abstract

The need for regression models to predict circular values arises in many scientific fields. In this work we explore a family of expressive and interpretable distributions over circle-valued random functions related to Gaussian processes targeting two Euclidean dimensions conditioned on the unit circle. The resulting probability model has connections with continuous spin models in statistical physics. Moreover, its density is very simple and has maximum-entropy, unlike previous Gaussian process-based approaches, which use wrapping or radial marginalization. For posterior inference, we introduce a new Stratonovich-like augmentation that lends itself to fast Markov Chain Monte Carlo sampling. We argue that transductive learning in these models favors a Bayesian approach to the parameters. We present experiments applying this model to the prediction of (i) wind directions and (ii) the percentage of the running gait cycle as a function of joint angles.<br />Comment: Contribution to the Structured Probabilistic Inference & Generative Modeling workshop of ICML 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.13151
Document Type :
Working Paper