Parvin et al., 2013 - Google Patents
Data weighing mechanisms for clustering ensemblesParvin et al., 2013
View PDF- Document ID
- 9315072473723695233
- Author
- Parvin H
- Minaei-Bidgoli B
- Alinejad-Rokny H
- Punch W
- Publication year
- Publication venue
- Computers & Electrical Engineering
External Links
Snippet
Inspired by bagging and boosting algorithms in classification, the non-weighing and weighing-based sampling approaches for clustering are proposed and studied in the paper. The effectiveness of non-weighing-based sampling technique, comparing the efficacy of …
- 238000005303 weighing 0 title abstract description 12
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