Title of article :
Use of an artificial model of monitoring data to aid interpretation
of principal component analysis
Author/Authors :
Guntis Bru¯melis *، نويسنده , , Lu¯cija Lapin¸a، نويسنده , , Ol¸g?erts Nikodemus، نويسنده , , Guntis Tabors، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2000
Abstract :
An artificial data matrix of element concentrations at sampling locations was created which included six simulated gradients of
correlated variables (Ca+Mg, Ni+V, Pb+Cu+Zn, Cd, Fe and K), representing a simplified model of a National survey. The data
matrix model was used to explore the efficiency with which Principal Components Analysis (PCA), without and with Varimax
rotation, could derive the imposed gradients. The dependence of PCA on outliers was decreased by log-transformation of data. The
Components derived from non-rotated PCA were confounded by bipolar clusters and oblique gradients, both resulting in superimposition
of two independent gradients on one Component. Therefore, erroneous interpretation of results could result from assessment
of variable loadings on Components, without assessment of coupled independent gradients. Varimax rotation greatly improved the
results, by rotation of too few Components led to the same problems, and rotation of too many Components led to fragmentation
of correlated variables onto single-element Components. The best configuration matching the original model could be selected after
investigation of element concentrations superimposed on sample ordinations.
Keywords :
Principal component analysis , Atmospheric deposition , multivariate analysis , monitoring
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software