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Estimation of pH optima and tolerances of diatoms in lake sediments by the methods of weighted averaging,least squares and maximum likelihood,and their use for the prediction of lake acidity
Authors:Jari Oksanen  Esa Läärä  Pertti Huttunen  Jouko Meriläinen
Affiliation:(1) Ecological Laboratory, Department of Environmental Hygiene, University of Kuopio, P.O. Box 6, SF-70211 Kuopio, Finland;(2) Department of Applied Mathematics and Statistics, University of Oulu, SF-90570 Oulu, Finland;(3) Department of Biology, University of Joensuu, P.O. Box 111, SF-80101 Joensuu, Finland;(4) Karelian Institute, Section of Ecology, University of Joensuu, P.O. Box 111, SF-80101 Joensuu, Finland
Abstract:Ecological optima and tolerances with respect to autumn pH were estimated for 63 diatom taxa in 47 Finnish lakes. The methods used were weighted averaging (WA), least squares (LS) and maximum likelihood (ML), the two latter methods assuming the Gaussian response model.WA produces optimum estimates which are necessarily within the observed lake pH range, whereas there is no such restriction in ML and LS. When the most extreme estimates of ML and LS were excluded, a reasonably close agreement among the results of different estimation methods was observed. When the species with unrealistic optima were excluded, the tolerance estimates were also rather similar, although the ML estimates were systematically greater.The parameter estimates were used to predict the autumn pH of 34 other lakes by weighted averaging. The ML and LS estimates including the extreme optima produced inferior predictions. A good prediction was obtained, however, when prediction with these estimates was additionally scaled with inverse squared tolerances, or when the extreme values were removed (censored). Tolerance downweighting was perhaps more efficient, and when it was used, no additional improvement was gained by censoring. The WA estimates produced good predictions without any manipulations, but these predictions tended to be biased towards the centroid of the observed range of pH values.At best, the average bias in prediction, as measured by mean difference between predicted and observed pH, was 0.082 pH units and the standard deviation of the differences, measuring the average random prediction error, was 0.256 pH units.
Keywords:weighted averaging  least squares  maximum likelihood  diatoms  acidification  Finland
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