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Hierarchically-partitioned Gaussian process approximation
Byung Jun Lee
, Jongmin Lee
, Kee Eung Kim
Research output
:
Contribution to conference
›
Paper
›
peer-review
13
Citations (Scopus)
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Computer Science
Computational Complexity
100%
Approximation (Algorithm)
100%
Large Data Set
100%
Exact Algorithm
100%
Hierarchical Model
100%
Probabilistic Framework
100%
Range Dependency
100%
Machine Learning
100%
Learning System
100%
Keyphrases
Gaussian Process Approximation
100%
Inducing Points
100%
Local Gaussian Process
100%
Computational Complexity
50%
Hierarchical Model
50%
Large-scale Dataset
50%
Speed-accuracy
50%
Gaussian Process
50%
Exact Algorithm
50%
Gaussian Process Algorithm
50%
Overall Modeling
50%
Accuracy Performance
50%
Probabilistic Framework
50%
Machine Learning Tasks
50%
Dataset Size
50%