Konferenzpaper
Autorenliste: Strickert, Marc; Sreenivasulu, Nese; Peterek, Silke; Weschke, Winfriede; Mock, Hans-Peter; Seiffert, Udo
Jahr der Veröffentlichung: 2006
Seiten: 274-285
Zeitschrift: Lecture notes in computer science
Bandnummer: 4087
ISSN: 0302-9743
ISBN: 3-540-37951-7
eISSN: 1611-3349
DOI Link: https://doi.org/10.1007/11829898_25
Konferenz: 2nd IAPR Workshop on Artificial Neural Networks in Pattern Recognition
Verlag: Springer
Abstract:
A novel approach to feature selection from unlabeled vector data is presented. It is based on the reconstruction of original data relationships in an auxiliary space with either weighted or omitted features. Feature weighting, on one hand; is related to the return forces of factors in a parametric data similarity measure as response to disturbance of their optimum values. Feature omission, on the other hand, inducing measurable loss of reconstruction quality, is realized in an iterative greedy way. The proposed framework allows to apply custom data similarity measures. Here, adaptive Euclidean distance and adaptive Pearson correlation are considered, the former serving as standard reference, the latter being, usefully for intensity data. Results of the different strategies are given for chromatography and gene expression data.
Zitierstile
Harvard-Zitierstil: Strickert, M., Sreenivasulu, N., Peterek, S., Weschke, W., Mock, H. and Seiffert, U. (2006) Unsupervised feature selection for biomarker identification in chromatography and gene expression data, Lecture notes in computer science, 4087, pp. 274-285. https://doi.org/10.1007/11829898_25
APA-Zitierstil: Strickert, M., Sreenivasulu, N., Peterek, S., Weschke, W., Mock, H., & Seiffert, U. (2006). Unsupervised feature selection for biomarker identification in chromatography and gene expression data. Lecture notes in computer science. 4087, 274-285. https://doi.org/10.1007/11829898_25