Application of compositional data analysis to geochemical data of marine sediments
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In an earlier investigation (Burger et al., 2000) five sediment cores near the Rodrigues
Triple Junction in the Indian Ocean were studied applying classical statistical methods
(fuzzy c-means clustering, linear mixing model, principal component analysis) for the
extraction of endmembers and evaluating the spatial and temporal variation of
geochemical signals. Three main factors of sedimentation were expected by the marine
geologists: a volcano-genetic, a hydro-hydrothermal and an ultra-basic factor. The
display of fuzzy membership values and/or factor scores versus depth provided
consistent results for two factors only; the ultra-basic component could not be
identified. The reason for this may be that only traditional statistical methods were
applied, i.e. the untransformed components were used and the cosine-theta coefficient as
similarity measure.
During the last decade considerable progress in compositional data analysis was made
and many case studies were published using new tools for exploratory analysis of these
data. Therefore it makes sense to check if the application of suitable data transformations,
reduction of the D-part simplex to two or three factors and visual
interpretation of the factor scores would lead to a revision of earlier results and to
answers to open questions . In this paper we follow the lines of a paper of R. Tolosana-
Delgado et al. (2005) starting with a problem-oriented interpretation of the biplot
scattergram, extracting compositional factors, ilr-transformation of the components and
visualization of the factor scores in a spatial context: The compositional factors will be
plotted versus depth (time) of the core samples in order to facilitate the identification of
the expected sources of the sedimentary process.
Kew words: compositional data analysis, biplot, deep sea sediments
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