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Partial least squares-discriminant analysis vectors, regression

Besides the classical Discriminant Analysis (DA) and the k-Nearest Neighbor (k-NN), other classification methods widely used in QSAR/QSPR studies are SIMCA, Linear Vector Quantization (LVQ), Partial Least Squares-Discriminant Analysis (PLS-DA), Classification and Regression Trees (CART), and Cluster Significance Analysis (CSA), specifically proposed for asymmetric classification in QSAR. [Pg.1253]

Partial least square (PLS) regression model describes the dependences between two variables blocks, e.g. sensor responses and time variables. Let the X matrix represent the sensor responses and the Y matrix represent time, the X and Y matrices could be approximated to few orthogonal score vectors, respectively. These components are then rotated in order to get as good a prediction of y variables as possible [25], Linear discriminant analysis (LDA) is among the most used classification techniques. The method maximises the variance between... [Pg.759]


See other pages where Partial least squares-discriminant analysis vectors, regression is mentioned: [Pg.293]    [Pg.307]    [Pg.176]    [Pg.232]    [Pg.678]    [Pg.5]    [Pg.468]    [Pg.188]   
See also in sourсe #XX -- [ Pg.203 , Pg.204 ]




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Discriminant analysis

Discriminant-regression analysis

Discriminate analysis

Least squares regression

Least-squares analysis

Partial Least Squares regression

Partial discriminant analysis

Partial least squares

Partial least squares discriminant analysis

Partial least-squares regression analysis

Regression analysis

Regression analysis, least-squares

Regression partial

Squares Analysis

Vector analysis

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