event thumbnail image
The 18th European Conference on Machine Learning (ECML) and the 11th European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD)
Pascal

Constraint Selection by Committee: An Ensemble Approach to Identifying Informative Constraints for Semi-Supervised Clustering

author: Derek Greene, UCD School of Computer Science and Informatics
You might be experiencing some problems with Your Video player.
Slides
0:00 Constraint Selection by Committee: An Ensemble Approach to Identifying Informative Constraints for Semi-Supervised Clustering
0:06 Outline
0:44 Semi-Supervised Clustering (1)
1:14 Semi-Supervised Clustering (2)
1:27 Semi-Supervised Clustering (3)
1:43 Semi-Supervised Clustering (4)
1:51 Semi-Supervised Clustering (5)
1:55 Pairwise Constrained Clustering (1)
2:19 Pairwise Constrained Clustering (2)
2:29 Pairwise Constrained Clustering (3)
2:32 Pairwise Constrained Clustering (4)
2:35 Pairwise Constrained Clustering (5)
3:00 Ensemble Clustering (1)
3:19 Ensemble Clustering (2)
3:23 Ensemble Clustering (3)
3:28 Ensemble Co-associations (1)
3:58 Ensemble Co-associations (2)
4:11 Ensemble Co-associations (3)
4:17 Ensemble Co-associations (4)
4:23 Constraint Selection (1)
5:12 Constraint Selection (2)
5:16 Constraint Selection (3)
5:35 Imputing Constraints (1)
5:58 Imputing Constraints (2)
6:21 Imputing Constraints (3)
6:43 Imputing Constraints (4)
6:48 Imputing Constraints (5)
7:00 Imputing Constraints (6)
7:07 Imputing Constraints (7)
7:19 Limitations of Imputed Constraints (1)
8:05 Limitations of Imputed Constraints (2)
8:29 Limitations of Imputed Constraints (3)
8:38 Unsupervised Uncertainty Sampling (1)
8:59 Unsupervised Uncertainty Sampling (2)
9:07 Unsupervised Uncertainty Sampling (3)
9:11 Unsupervised Uncertainty Sampling (4)
9:21 Unsupervised Uncertainty Sampling (5)
9:25 Unsupervised Uncertainty Sampling (6)
9:35 Unsupervised Uncertainty Sampling (7)
9:40 Unsupervised Uncertainty Sampling (8)
9:47 Unsupervised Uncertainty Sampling (9)
10:05 Unsupervised Uncertainty Sampling (10)
10:17 Ensemble Constraint Selection (1)
10:36 Ensemble Constraint Selection (2)
10:42 Phase 1: Initialisation (1)
10:49 Phase 1: Initialisation (2)
10:52 Phase 1: Initialisation (3)
10:57 Phase 1: Initialisation (4)
11:03 Phase 1: Initialisation (5)
11:07 Phase 1: Initialisation (6)
11:38 Phase 2: Cluster Expansion (1)
11:45 Phase 2: Cluster Expansion (2)
11:51 Phase 2: Cluster Expansion (3)
12:05 Phase 2: Cluster Expansion (4)
12:14 Phase 2: Cluster Expansion (5)
12:20 Phase 2: Cluster Expansion (6)
12:29 Phase 2: Cluster Expansion (7)
12:31 Phase 2: Cluster Expansion (8)
12:40 Validation of Imputed Constraints (1)
12:57 Validation of Imputed Constraints (2)
13:23 Imputed Constraints - Results (1)
13:47 Imputed Constraints - Results (2)
14:08 Imputed Constraints - Results (3)
14:32 Imputed Constraints - Results (4)
14:57 Constraint Selection Evaluation (1)
15:07 Constraint Selection Evaluation (2)
15:23 Constraint Selection Evaluation (3)

Lecture rating

People found this lecture:
Worth seeing
because it is:
 Valuable and informative
Well presented
Easily understandable
Acceptably recorded
You need to login to cast your vote.

Report a problem or upload files

If you have found a problem with this lecture or would like to send us extra material, articles, exercises, etc., please use our ticket system to describe your request and upload the data.
Enter your e-mail into the 'Cc' field, and we will keep you updated with your request's status.

Link this page

Would you like to put a link to this lecture on your homepage?
Go ahead! Copy the HTML snippet !

Write your own review or comment: