2024
DOI: 10.5194/gmd-17-1765-2024
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Towards variance-conserving reconstructions of climate indices with Gaussian process regression in an embedding space

Marlene Klockmann,
Udo von Toussaint,
Eduardo Zorita

Abstract: Abstract. We present a new framework for the reconstruction of climate indices based on proxy data such as tree rings. The framework is based on the supervised learning method Gaussian Process Regression (GPR) and aims at preserving the amplitude of past climate variability. It can adequately handle noise-contaminated proxies and variable proxy availability over time. To this end, the GPR is formulated in a modified input space, termed here embedding space. We test the new framework for the reconstruction of t… Show more

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