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Learning Scale Free Networks by Reweighted L1 regularization
Published on May 06, 20113944 Views
Methods for L1-type regularization have been widely used in Gaussian graphical model selection tasks to encourage sparse structures. However, often we would like to include more structural information
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Chapter list
Learning Scale-Free Networks by Reweighted L1 Regularization00:00
High Dimensional Structure Learning (1)00:16
High Dimensional Structure Learning (2)00:33
High Dimensional Structure Learning (3)00:35
Prior Information is important (1)01:08
Prior Information is important (2)02:01
Scale-Free Networks03:08
Barabási–Albert (B-A) model (1)04:26
Barabási–Albert (B-A) model (2)04:56
Barabási–Albert (B-A) model (3)05:16
Gaussian Markov Random Field05:36
Useful Properties of Gaussian06:54
L1 - based methods (1)08:04
L1 - based methods (2)09:01
L1 - based methods (3)09:41
L1 - based methods (4)10:03
L1 is not good for scale free networks11:15
Power Law Regularization (1)12:07
Power Law Regularization (2)12:56
L1 Relaxation (1)13:03
L1 Relaxation (2)13:16
L1 Relaxation (3)14:02
How to solve the optimization problem14:25
A MM algorithm (1)15:05
A MM algorithm (2)15:32
A MM algorithm (3)15:36
A MM algorithm (4)15:44
A MM algorithm (5)15:49
A MM algorithm (6)16:01
Reweighted L1 -based Optimization (1)16:24
Reweighted L1 -based Optimization (2)17:01
Reweighted L1 -based Optimization (3)17:34
Reweighted L1 -based Optimization (4)17:49
Reweighted L1 -based Optimization (5)18:16
Reweighted L1 -based Optimization (6)18:30
Other works on structured Regularization19:20
Experiments (simulated scale free network)20:39
ROC curves (1)21:21
ROC curves (2)21:45
ROC curves (3)22:15
ROC curves (4)22:22
Degree distributions22:26
Percentage of edges connecting to hubs23:24
Improvement over iterations (1)23:48
Improvement over iterations (2)24:00
Improvement over iterations (3)24:05
Improvement over iterations (4)24:09
Improvement over iterations (5)24:10
Experiments (simulated hub network)24:32
Experiments (Microarray data)24:59
Future works25:22
Thank you26:15