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Multi-task sparse structure learning with Gaussian copula models
André R. Gonçalves
, Fernando J. Von Zuben
,
Arindam Banerjee
Computer Science and Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
52
Scopus citations
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Keyphrases
Multi-task
100%
Gaussian Copula
100%
Sparse Structure Learning
100%
Task Relationship
100%
Multi-task Learning
50%
Relationship Structure
50%
North America
25%
Future Climate
25%
South America
25%
Benchmark Dataset
25%
Learning Objectives
25%
Recent Advances
25%
Classification Problem
25%
Synthetic Data
25%
Regression Problem
25%
Alternating Minimization
25%
Inverse Covariance Matrix
25%
Estimation Problem
25%
Novel Family
25%
Task Parameters
25%
Generalization Performance
25%
Joint Estimation
25%
Sparse Estimators
25%
Model Output
25%
Structure Learning
25%
Family Model
25%
Gaussian Graphical Model
25%
Earth System Model
25%
Individual Tasks
25%
Computer Science
Multitask Learning
100%
structure learning
100%
Graphical Model
50%
Regression Problem
50%
Generalization Performance
50%
Individual Task
50%
Classification Problem
50%
Covariance Matrix
50%
Psychology
Gaussian Distribution
100%
Copula
100%
Systems Model
25%