Analytical Sciences
Online ISSN : 1348-2246
Print ISSN : 0910-6340
ISSN-L : 0910-6340
Original Papers
Elimination of the Uninformative Calibration Sample Subset in the Modified UVE(Uninformative Variable Elimination)-PLS (Partial Least Squares) Method
Jun KOSHOUBUTetsuo IWATAShigeo MINAMI
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2001 Volume 17 Issue 2 Pages 319-322

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Abstract
In order to increase the predictive ability of the PLS (Partial Least Squares) model, we have developed a new algorithm, by which uninformative samples which cannot contribute to the model very much are eliminated from a calibration data set. In the proposed algorithm, uninformative wavelength (or independent) variables are eliminated at the first stage by using the modified UVE (Uninformative Variable Elimination)-PLS method that we reported previously. Then, if the prediction error of the ith (1 ≤ in) sample is larger than 3σ, the corresponding sample is eliminated as uninformative, where n is the total number of calibration samples and σ is the standard deviation calculated from the other n-1 samples. Calculation of σ by the leave-one-out manner enhances the ability to identify the uninformative samples. The final PLS model is constructed precisely because both uninformative wavelength variables and uninformative samples are eliminated. In order to demonstrate the usefulness of the algorithm, we have applied it to two kinds of mid-infrared spectral data sets.
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© 2001 by The Japan Society for Analytical Chemistry
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