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ELIMINATING COMPLEX EIGENVECTORS AND EIGENVALUES IN MULTIWAY ANALYSES USING THE DIRECT TRILINEAR DECOMPOSITION METHOD
作者姓名:PAUL  J.GEMPERLINE
作者单位:Department of
摘    要:The direct trilinear decomposition method(DTDM)is an algorithm for performing quantitative curveresolution of three-dimensional data that follow the so-called trilinear model,e.g.chromatography-spectroscopy or emission-excitation fluorescence.Under certain conditions complexeigenvalues and eigenvectors emerge when the generalized eigenproblem is solved in DTDM.Previouspublications never treated those cases.In this paper we show how similarity transformations can be usedto eliminate the imaginary part of the complex eigenvalues and eigenvectors,thereby increasing theusefulness of DTDM in practical applications.The similarity transformation technique was first used byour laboratory to solve the similar problem in the generalized rank annihilation method(GRAM).Because unique elution profiles and spectra can be derived by using data matrices from three or moresamples simultaneously,DTDM with similarity transformations is more efficient than GRAM in the casewhere there are many samples to be investigated.


ELIMINATING COMPLEX EIGENVECTORS AND EIGENVALUES IN MULTIWAY ANALYSES USING THE DIRECT TRILINEAR DECOMPOSITION METHOD
PAUL J.GEMPERLINE.ELIMINATING COMPLEX EIGENVECTORS AND EIGENVALUES IN MULTIWAY ANALYSES USING THE DIRECT TRILINEAR DECOMPOSITION METHOD[J].Journal of Geographical Sciences,1993(2).
Authors:SHOUSONG LI PAUL JGEMPERLINE
Institution:SHOUSONG LI PAUL J.GEMPERLINE Department of Chemistry,East Carolina University,Greenville,NC -,U.S.A.
Abstract:The direct trilinear decomposition method(DTDM)is an algorithm for performing quantitative curve resolution of three-dimensional data that follow the so-called trilinear model,e.g. chromatography-spectroscopy or emission-excitation fluorescence.Under certain conditions complex eigenvalues and eigenvectors emerge when the generalized eigenproblem is solved in DTDM.Previous publications never treated those cases.In this paper we show how similarity transformations can be used to eliminate the imaginary part of the complex eigenvalues and eigenvectors,thereby increasing the usefulness of DTDM in practical applications.The similarity transformation technique was first used by our laboratory to solve the similar problem in the generalized rank annihilation method(GRAM). Because unique elution profiles and spectra can be derived by using data matrices from three or more samples simultaneously,DTDM with similarity transformations is more efficient than GRAM in the case where there are many samples to be investigated.
Keywords:Direct trilinear decomposition method  Curve resolution  Trilinear data Similarity transformation  Generalized rank annihilation method
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