Conference paper
Authors list: Strickert, Marc; Sreenivasulu, Nese; Seiffert, Udo
Appeared in: 14th European symposium on artificial neural networks
Editor list: Verleysen, Michel
Publication year: 2006
Pages: 265-270
ISBN: 2-930307-06-4
URL: https://www.esann.org/sites/default/files/proceedings/legacy/es2006-97.pdf
Conference: 14th European Symposium on Artificial Neural Networks
Multidimensional scaling (MDS) methods are designed to establish a one-to-one correspondence of input-output relationships. While the input may be given as high-dimensional data items or as adjacency matrix characterizing data relations, the output space is usually chosen as low-dimensional Euclidean, ready for visualization. MDSLocalize, an existing method, is reformulated in terms of Sanger’s rule that replaces the original foundations of computationally costly singular value decomposition. The derived method is compared to the recently proposed high-throughput multi-dimensional scaling (HiT-MDS) and to the well-established XGvis system. For comparison, real-value gene expression data and corresponding DNA sequences, given as proximity data, are considered.
Abstract:
Citation Styles
Harvard Citation style: Strickert, M., Sreenivasulu, N. and Seiffert, U. (2006) Sanger-driven MDSLocalize - a comparative study for genomic data, in Verleysen, M. (ed.) 14th European symposium on artificial neural networks. Evere: D-side. pp. 265-270. https://www.esann.org/sites/default/files/proceedings/legacy/es2006-97.pdf
APA Citation style: Strickert, M., Sreenivasulu, N., & Seiffert, U. (2006). Sanger-driven MDSLocalize - a comparative study for genomic data. In Verleysen, M. (Ed.), 14th European symposium on artificial neural networks. (pp. 265-270). D-side. https://www.esann.org/sites/default/files/proceedings/legacy/es2006-97.pdf