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Graph Topology Learning and Signal Recovery Via Bayesian Inference
Mahmoud Ramezani-Mayiami
, Mohammad Hajimirsadeghi
, Karl Skretting
, Rick S. Blum
,
H. Vincent Poor
Electrical and Computer Engineering
Center for Statistics & Machine Learning
High Meadows Environmental Institute
Research output
:
Chapter in Book/Report/Conference proceeding
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Conference contribution
10
Scopus citations
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Engineering
Experimental Result
100%
Tasks
100%
Measured Data
100%
Maximization
100%
Gaussians
100%
Mean Square Error
100%
Random Field
100%
Probability Density Function
100%
Optimisation Problem
100%
Performance Measure ψ
100%
Posterior Probability
100%
Error Estimator
100%
Keyphrases
Graph Topology Learning
100%
Training Recovery
100%
Gaussian Markov Random Field
50%
Field Process
50%
Topology Learning
50%
Computer Science
Topology Graph
100%
Experimental Result
33%
Optimization Problem
33%
Probability Density Function
33%
Performance Measure
33%
Analysis Model
33%
Posterior Probability
33%