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2 projects in result set.
Compositional Data Analysis in Practice - easyCODA is an R package for analysing compositional data, based on the logratio transformation. The package includes some basic plotting functions as well as the multivariate methods of logratio analysis, correspondence analysis and redundancy analysis.
Tags: principal component analysis, logratio transformation, Multivariate Analysis, dimension reduction, multidimensional scaling, correspondence analysis, compositional data
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Registered: 2018-05-01 16:26

Thresher - Thresher is a comprehensive, statistical approach to class discovery combining PCA with hierarchical clustering. It can (1) identify outliers, (2) estimate the number of subgroups, and (3) automate the selection of metrics and linkage rules.
Tags: Bioinformatics, Clustering, Mixture, PCA, bioinformatics, clustering, dimension reduction

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Registered: 2014-05-08 14:18

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