ARC Code TI: Block-GP: Scalable Gaussian Process Regression

Block GP is a Gaussian Process regression framework for multimodal data, that can be an order of magnitude more scalable than existing state-of-the-art nonlinear regression algorithms. The framework builds local Gaussian Processes on semantically meaningful partitions of the data and provides higher prediction accuracy than a single global model with very high confidence.

Data and Resources

Additional Info

Field Value
Maintainer Dennis Koga
Last Updated March 31, 2025, 23:11 (UTC)
Created March 31, 2025, 23:11 (UTC)
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harvest_source_title DNG Legacy Data
identifier OCIO-Fitara-113
issued 2015-07-21
landingPage http://ti.arc.nasa.gov/opensource/projects/block-gp/
modified 2020-01-29
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publisher Ames Research Center
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