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The Ethereal
Consensus-based Recursive Multi-Output Gaussian Process
April 11, 2026 ยท Grace Period ยท + Add venue
Authors
Yogesh Prasanna Kumar Rao, Tamas Keviczky, Raj Thilak Rajan
arXiv ID
2604.10146
Category
cs.LG: Machine Learning
Cross-listed
eess.SP
Citations
0
Abstract
Multi-output Gaussian Processes provide principled uncertainty-aware learning of vector-valued fields but are difficult to deploy in large-scale, distributed, and streaming settings due to their computational and centralized nature. This paper proposes a Consensus-based Recursive Multi-Output Gaussian Process (CRMGP) framework that combines recursive inference on shared basis vectors with neighbour-to-neighbour information-consensus updates. The resulting method supports parallel, fully distributed learning with bounded per-step computation while preserving inter-output correlations and calibrated uncertainty. Experiments on synthetic wind fields and real LiDAR data demonstrate that CRMGP achieves competitive predictive performance and reliable uncertainty calibration, offering a scalable alternative to centralized Gaussian process models for multi-agent sensing applications.
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