DIATOMS;
GRADIENT ANALYSIS;
INDICATOR VALUES;
PALAEO-ENVIRONMENTS;
PARTIAL LEAST SQUARES REGRESSION;
PLS;
SPECIES-ENVIRONMENT CALIBRATION;
TRANSFER FUNCTION;
D O I:
10.1007/BF00028046
中图分类号:
Q17 [水生生物学];
学科分类号:
071004 ;
摘要:
Weighted averaging regression and calibration form a simple, yet powerful method for reconstructing environmental variables from species assemblages. Based on the concepts of niche-space partitioning and ecological optima of species (indicator values), it performs well with noisy, species-rich data that cover a long ecological gradient (>3 SD units). Partial least squares regression is a linear method for multivariate calibration that is popular in chemometrics as a robust alternative to principal component regression. It successively selects linear components so as to maximize predictive power. In this paper the ideas of the two methods are combined. It is shown that the weighted averaging method is a form of partial least combined method, weighted averaging partial least squares, consists of using further components, namely as many as are useful in terms of predictive power. The further components utilize the residual structure in the species data to improve the species parameters (`optima') in the final weighted averaging predictor. Simulations show that the new method can give 70% in data sets with low noise, but only a small reduction in noisy data sets. In three real data sets of diatom assemblages collected for the reconstruction of acidity and salinity, the reduction in prediction error was zero, 19% and 32%.