Draft:Minimax linkage
Submission declined on 31 July 2024 by Bluethricecreamman (talk). The proposed article does not have sufficient content to require an article of its own, but it could be merged into the existing article at Hierarchical_clustering. Since anyone can edit Wikipedia, you are welcome to add that information yourself. Thank you.
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- Comment: Just put this in the list of criterion. WP:NOTAMANUAL applies, we should not be a source of technical info about an algorithm like this unless if it is evidently clear that the technical info is notable.Also the sourcing is not WP:SECONDARY Bluethricecreamman (talk) 21:28, 31 July 2024 (UTC)
A major contributor to this article appears to have a close connection with its subject. (April 2024) |
In computational mathematics/statistics, minimax linkage is a criterion applied in hierarchical cluster analysis. Minimax linkage hierarchical clustering is a special case of the hierarchical clustering approaches, originally first introduced by Ao et al.[1] in the AI genomics software project CLUSTAG in 2004. Medical institutions have been deploying the minimax linkage hierarchical clustering in their genomics research. Jacob Bien and Robert Tibshirani (2011)[2] investigated the theoretical properties of the minimax linkage hierarchical clustering. Xiao Hui Tai and Kayla Frisoli (2021)[3] conducted benchmarking for the minimax linkage hierarchical clustering. The development history of the minimax linkage criterion is shown as follows.
Minimax linkage in genomics applications
[edit]The complete linkage hierarchical clustering, minimax linkage hierarchical clustering and set cover algorithms were implemented in the program CLUSTAG for tag SNP selection.
Theoretical properties of minimax linkage
[edit]Benchmarking the minimax linkage hierarchical clustering
[edit]Bien and Tibshirani (2011)[2] used two real datasets to demonstrate the appeal of using minimax linkage compared with other linkages.
Tai and Frisoli (2021)[3] reported that, similarly to Bien and Tibshirani (2011), minimax linkage often produced the smallest distances to prototypes, meaning that objects in a cluster were tightly clustered around their prototype.
References
[edit]- ^ Ao, Sio Iong; Yip, K.; Ng, M.; Cheung, D.; Fong, P.-Y.; Melhado, I.; Sham, P. C. (advance online: 2004-12-07). "CLUSTAG: hierarchical clustering and graph methods for selecting tag SNPs". Bioinformatics. 21 (8): 1735–1736.
- ^ a b Bien, Jacob; Tibshirani, Robert (2011). "Hierarchical Clustering With Prototypes via Minimax Linkage". Journal of the American Statistical Association. 106 (495): 1075–1084. doi:10.1198/jasa.2011.tm10183. PMC 4527350. PMID 26257451.
- ^ a b Tai, Xiao Hui; Frisoli, Kayla. "Benchmarking Minimax Linkage in Hierarchical Clustering". In: Data Analysis and Rationality in a Complex World, Springer, 2021.
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