as.matrix.classres      as.matrix method for classification results
as.matrix.ldecomp       as.matrix method for ldecomp object
as.matrix.plsdares      as.matrix method for PLS-DA results
as.matrix.plsres        as.matrix method for PLS results
as.matrix.regcoeffs     as.matrix method for regression coefficients
                        class
as.matrix.regres        as.matrix method for regression results
as.matrix.simcamres     as.matrix method for SIMCAM results
as.matrix.simcares      as.matrix method for SIMCA classification
                        results
capitalize              Capitalize text or vector with text values
carbs                   Raman spectra of carbonhydrates
categorize              Categorize PCA results
categorize.pca          Categorize PCA results based on orthogonal and
                        score distances.
categorize.pls          Categorize data rows based on PLS results and
                        critical limits for total distance.
chisq.crit              Calculates critical limits for distance values
                        using Chi-square distribution
chisq.prob              Calculate probabilities for distance values
                        using Chi-square distribution
classify.plsda          PLS-DA classification
classify.simca          SIMCA classification
classmodel.processRefValues
                        Check reference class values and convert it to
                        a factor if necessary
classres                Results of classification
classres.getPerformance
                        Calculation of classification performance
                        parameters
confint.regcoeffs       Confidence intervals for regression
                        coefficients
constraint              Class for MCR-ALS constraint
constraintAngle         Method for angle constraint
constraintClosure       Method for closure constraint
constraintNonNegativity
                        Method for non-negativity constraint
constraintNorm          Method for normalization constraint
constraintUnimod        Method for unimodality constraint
constraints.list        Shows information about all implemented
                        constraints
crossval                Generate sequence of indices for
                        cross-validation
crossval.getParams      Define parameters based on 'cv' value
crossval.regmodel       Cross-validation of a regression model
crossval.simca          Cross-validation of a SIMCA model
crossval.str            String with description of cross-validation
                        method
dd.crit                 Calculates critical limits for distance values
                        using Data Driven moments approach
ddmoments.param         Calculates critical limits for distance values
                        using Data Driven moments approach
ddrobust.param          Calculates critical limits for distance values
                        using Data Driven robust approach
ellipse                 Create ellipse on the current plot
employ.constraint       Applies constraint to a dataset
employ.prep             Applies a list with preprocessing methods to a
                        dataset
eye                     Create the identity matrix
fprintf                 Imitation of fprinf() function
getCalibrationData      Calibration data
getCalibrationData.pca
                        Returns matrix with original calibration data
getCalibrationData.simcam
                        Get calibration data
getConfidenceEllipse    Compute confidence ellipse for a set of points
getConfusionMatrix      Confusion matrix for classification results
getConfusionMatrix.classres
                        Confusion matrix for classification results
getConvexHull           Compute coordinates of a closed convex hull for
                        data points
getDataLabels           Create a vector with labels for plot series
getImplementedConstraints
                        Shows a list with implemented constraints
getImplementedPrepMethods
                        Shows a list with implemented preprocessing
                        methods
getLabelsAsIndices      Create labels as column or row indices
getLabelsAsValues       Create labels from data values
getMainTitle            Get main title
getPlotColors           Define colors for plot series
getProbabilities        Get class belonging probability
getProbabilities.pca    Probabilities for residual distances
getProbabilities.simca
                        Probabilities of class belonging for PCA/SIMCA
                        results
getPureVariables        Identifies pure variables
getR                    Creates rotation matrix to map a set vectors
                        'base1' to a set of vectors 'base2'.
getRegcoeffs            Get regression coefficients
getRegcoeffs.regmodel   Regression coefficients for PLS model'
getRes                  Return list with valid results
getSelectedComponents   Get selected components
getSelectivityRatio     Selectivity ratio
getSelectivityRatio.pls
                        Selectivity ratio for PLS model
getVIPScores            VIP scores
getVIPScores.pls        VIP scores for PLS model
getVariance.mcr         Compute explained variance for MCR case
hotelling.crit          Calculate critical limits for distance values
                        using Hotelling T2 distribution
hotelling.prob          Calculate probabilities for distance values and
                        given parameters using Hotelling T2
                        distribution
imshow                  show image data as an image
ipls                    Variable selection with interval PLS
ipls.backward           Runs the backward iPLS algorithm
ipls.forward            Runs the forward iPLS algorithm
jm.crit                 Calculate critical limits for distance values
                        using Jackson-Mudholkar approach
jm.prob                 Calculate probabilities for distance values and
                        given parameters using Hotelling T2
                        distribution
ldecomp                 Class for storing and visualising linear
                        decomposition of dataset (X = TP' + E)
ldecomp.getDistances    Compute score and residual distances
ldecomp.getLimParams    Compute parameters for critical limits based on
                        calibration results
ldecomp.getLimitsCoordinates
                        Compute coordinates of lines or curves with
                        critical limits
ldecomp.getQLimits      Compute critical limits for orthogonal
                        distances (Q)
ldecomp.getT2Limits     Compute critical limits for score distances
                        (T2)
ldecomp.getVariances    Compute explained variance
ldecomp.plotResiduals   Residuals distance plot for a set of ldecomp
                        objects
mcr                     General class for Multivariate Curve Resolution
                        model
mcrals                  Multivariate curve resolution using Alternating
                        Least Squares
mcrals.cal              Identifies pure variables
mcrals.fcnnls           Fast combinatorial non-negative least squares
mcrals.nnls             Non-negative least squares
mcrals.ols              Ordinary least squares
mcrpure                 Multivariate curve resolution based on pure
                        variables
mda.cbind               A wrapper for cbind() method with proper set of
                        attributes
mda.data2im             Convert data matrix to an image
mda.df2mat              Convert data frame to a matrix
mda.exclcols            Exclude/hide columns in a dataset
mda.exclrows            Exclude/hide rows in a dataset
mda.getattr             Get data attributes
mda.getexclind          Get indices of excluded rows or columns
mda.im2data             Convert image to data matrix
mda.inclcols            Include/unhide the excluded columns
mda.inclrows            include/unhide the excluded rows
mda.purge               Removes excluded (hidden) rows and colmns from
                        data
mda.purgeCols           Removes excluded (hidden) colmns from data
mda.purgeRows           Removes excluded (hidden) rows from data
mda.rbind               A wrapper for rbind() method with proper set of
                        attributes
mda.setattr             Set data attributes
mda.setimbg             Remove background pixels from image data
mda.show                Wrapper for show() method
mda.subset              A wrapper for subset() method with proper set
                        of attributed
mda.t                   A wrapper for t() method with proper set of
                        attributes
mdaplot                 Plotting function for a single set of objects
mdaplot.areColors       Check color values
mdaplot.formatValues    Format vector with numeric values
mdaplot.getColors       Color values for plot elements
mdaplot.getXAxisLim     Calculate limits for x-axis.
mdaplot.getXTickLabels
                        Prepare xticklabels for plot
mdaplot.getXTicks       Prepare xticks for plot
mdaplot.getYAxisLim     Calculate limits for y-axis.
mdaplot.getYTickLabels
                        Prepare yticklabels for plot
mdaplot.getYTicks       Prepare yticks for plot
mdaplot.plotAxes        Create axes plane
mdaplot.prepareColors   Prepare colors based on palette and opacity
                        value
mdaplot.showColorbar    Plot colorbar
mdaplot.showLines       Plot lines
mdaplotg                Plotting function for several plot series
mdaplotg.getLegend      Create and return vector with legend values
mdaplotg.getXLim        Compute x-axis limits for mdaplotg
mdaplotg.getYLim        Compute y-axis limits for mdaplotg
mdaplotg.prepareData    Prepare data for mdaplotg
mdaplotg.processParam   Check mdaplotg parameters and replicate them if
                        necessary
mdaplotg.showLegend     Show legend for mdaplotg
mdaplotyy               Create line plot with double y-axis
mdatools                Package for Multivariate Data Analysis
                        (Chemometrics)
pca                     Principal Component Analysis
pca.cal                 PCA model calibration
pca.getB                Low-dimensional approximation of data matrix X
pca.mvreplace           Replace missing values in data
pca.nipals              NIPALS based PCA algorithm
pca.run                 Runs one of the selected PCA methods
pca.svd                 Singular Values Decomposition based PCA
                        algorithm
pcares                  Results of PCA decomposition
pcv                     Compute matrix with pseudo-validation set
pellets                 Image data
people                  People data
pinv                    Pseudo-inverse matrix
plot.classres           Plot function for classification results
plot.ipls               Overview plot for iPLS results
plot.mcr                Plot summary for MCR model
plot.pca                Model overview plot for PCA
plot.pcares             Plot method for PCA results object
plot.pls                Model overview plot for PLS
plot.plsda              Model overview plot for PLS-DA
plot.plsdares           Overview plot for PLS-DA results
plot.plsres             Overview plot for PLS results
plot.randtest           Plot for randomization test results
plot.regcoeffs          Regression coefficients plot
plot.regres             Plot method for regression results
plot.simca              Model overview plot for SIMCA
plot.simcam             Model overview plot for SIMCAM
plot.simcamres          Model overview plot for SIMCAM results
plotBars                Show plot series as bars
plotBiplot              Biplot
plotBiplot.pca          PCA biplot
plotConfidenceEllipse   Add confidence ellipse for groups of points on
                        scatter plot
plotContributions       Plot resolved contributions
plotContributions.mcr   Show plot with resolved contributions
plotConvexHull          Add convex hull for groups of points on scatter
                        plot
plotCooman              Cooman's plot
plotCooman.simcam       Cooman's plot for SIMCAM model
plotCooman.simcamres    Cooman's plot for SIMCAM results
plotCorr                Correlation plot
plotCorr.randtest       Correlation plot for randomization test results
plotCumVariance         Variance plot
plotCumVariance.ldecomp
                        Cumulative explained variance plot
plotCumVariance.mcr     Show plot with cumulative explained variance
plotCumVariance.pca     Cumulative explained variance plot for PCA
                        model
plotDensity             Show plot series as density plot (using hex
                        binning)
plotDiscriminationPower
                        Discrimination power plot
plotDiscriminationPower.simcam
                        Discrimination power plot for SIMCAM model
plotDistDoF             Degrees of freedom plot for both distances
plotErrorbars           Show plot series as error bars
plotExtreme             Shows extreme plot for SIMCA model
plotExtreme.pca         Extreme plot
plotHist                Statistic histogram
plotHist.randtest       Histogram plot for randomization test results
plotHotellingEllipse    Hotelling ellipse
plotLines               Show plot series as set of lines
plotLoadings            Loadings plot
plotLoadings.pca        Loadings plot for PCA model
plotMisclassified       Misclassification ratio plot
plotMisclassified.classmodel
                        Misclassified ratio plot for classification
                        model
plotMisclassified.classres
                        Misclassified ratio plot for classification
                        results
plotModelDistance       Model distance plot
plotModelDistance.simcam
                        Model distance plot for SIMCAM model
plotModellingPower      Modelling power plot
plotPerformance         Classification performance plot
plotPerformance.classmodel
                        Performance plot for classification model
plotPerformance.classres
                        Performance plot for classification results
plotPointsShape         Add confidence ellipse or convex hull for group
                        of points
plotPredictions         Predictions plot
plotPredictions.classmodel
                        Predictions plot for classification model
plotPredictions.classres
                        Prediction plot for classification results
plotPredictions.regmodel
                        Predictions plot for regression model
plotPredictions.regres
                        Predictions plot for regression results
plotPredictions.simcam
                        Predictions plot for SIMCAM model
plotPredictions.simcamres
                        Prediction plot for SIMCAM results
plotProbabilities       Plot for class belonging probability
plotProbabilities.classres
                        Plot for class belonging probability
plotPurity              Plot purity values
plotPurity.mcrpure      Purity values plot
plotPuritySpectra       Plot purity spectra
plotPuritySpectra.mcrpure
                        Purity spectra plot
plotQDoF                Degrees of freedom plot for orthogonal distance
                        (Nh)
plotRMSE                RMSE plot
plotRMSE.ipls           RMSE development plot
plotRMSE.regmodel       RMSE plot for regression model
plotRMSE.regres         RMSE plot for regression results
plotRegcoeffs           Regression coefficients plot
plotRegcoeffs.regmodel
                        Regression coefficient plot for regression
                        model
plotRegressionLine      Add regression line for data points
plotResiduals           Residuals plot
plotResiduals.ldecomp   Residual distance plot
plotResiduals.pca       Residuals distance plot for PCA model
plotResiduals.regres    Residuals plot for regression results
plotScatter             Show plot series as set of points
plotScores              Scores plot
plotScores.ldecomp      Scores plot
plotScores.pca          Scores plot for PCA model
plotSelection           Selected intervals plot
plotSelection.ipls      iPLS performance plot
plotSelectivityRatio    Selectivity ratio plot
plotSelectivityRatio.pls
                        Selectivity ratio plot for PLS model
plotSensitivity         Sensitivity plot
plotSensitivity.classmodel
                        Sensitivity plot for classification model
plotSensitivity.classres
                        Sensitivity plot for classification results
plotSpecificity         Specificity plot
plotSpecificity.classmodel
                        Specificity plot for classification model
plotSpecificity.classres
                        Specificity plot for classification results
plotSpectra             Plot resolved spectra
plotSpectra.mcr         Show plot with resolved spectra
plotT2DoF               Degrees of freedom plot for score distance (Nh)
plotVIPScores           VIP scores plot
plotVIPScores.pls       VIP scores plot for PLS model
plotVariance            Variance plot
plotVariance.ldecomp    Explained variance plot
plotVariance.mcr        Show plot with explained variance
plotVariance.pca        Explained variance plot for PCA model
plotVariance.pls        Variance plot for PLS
plotVariance.plsres     Explained X variance plot for PLS results
plotWeights             Plot for PLS weights
plotWeights.pls         X loadings plot for PLS
plotXCumVariance        X cumulative variance plot
plotXCumVariance.pls    Cumulative explained X variance plot for PLS
plotXCumVariance.plsres
                        Explained cumulative X variance plot for PLS
                        results
plotXLoadings           X loadings plot
plotXLoadings.pls       X loadings plot for PLS
plotXResiduals          X residuals plot
plotXResiduals.pls      Residual distance plot for decomposition of X
                        data
plotXResiduals.plsres   X residuals plot for PLS results
plotXScores             X scores plot
plotXScores.pls         X scores plot for PLS
plotXScores.plsres      X scores plot for PLS results
plotXVariance           X variance plot
plotXVariance.pls       Explained X variance plot for PLS
plotXVariance.plsres    Explained X variance plot for PLS results
plotXYLoadings          X loadings plot
plotXYLoadings.pls      XY loadings plot for PLS
plotXYResiduals         Plot for XY-residuals
plotXYResiduals.pls     Residual XY-distance plot
plotXYResiduals.plsres
                        Residual distance plot
plotXYScores            XY scores plot
plotXYScores.pls        XY scores plot for PLS
plotXYScores.plsres     XY scores plot for PLS results
plotYCumVariance        Y cumulative variance plot
plotYCumVariance.pls    Cumulative explained Y variance plot for PLS
plotYCumVariance.plsres
                        Explained cumulative Y variance plot for PLS
                        results
plotYResiduals          Y residuals plot
plotYResiduals.plsres   Y residuals plot for PLS results
plotYResiduals.regmodel
                        Y residuals plot for regression model
plotYVariance           Y variance plot
plotYVariance.pls       Explained Y variance plot for PLS
plotYVariance.plsres    Explained Y variance plot for PLS results
plotseries              Create plot series object based on data, plot
                        type and parameters
pls                     Partial Least Squares regression
pls.cal                 PLS model calibration
pls.getLimitsCoordinates
                        Compute coordinates of lines or curves with
                        critical limits
pls.getZLimits          Compute critical limits for orthogonal
                        distances (Q)
pls.run                 Runs selected PLS algorithm
pls.simpls              SIMPLS algorithm
plsda                   Partial Least Squares Discriminant Analysis
plsdares                PLS-DA results
plsres                  PLS results
predict.mcrals          MCR ALS predictions
predict.mcrpure         MCR predictions
predict.pca             PCA predictions
predict.pls             PLS predictions
predict.plsda           PLS-DA predictions
predict.simca           SIMCA predictions
predict.simcam          SIMCA multiple classes predictions
prep                    Class for preprocessing object
prep.alsbasecorr        Baseline correction using assymetric least
                        squares
prep.autoscale          Autoscale values
prep.generic            Generic function for preprocessing
prep.list               Shows information about all implemented
                        preprocessing methods.
prep.msc                Multiplicative Scatter Correction
                        transformation
prep.norm               Normalization
prep.ref2km             Kubelka-Munk transformation
prep.savgol             Savytzky-Golay filter
prep.snv                Standard Normal Variate transformation
prep.transform          Transformation
prep.varsel             Variable selection
prepCalData             Prepares calibration data
preparePlotData         Take dataset and prepare them for plot
print.classres          Print information about classification result
                        object
print.ipls              Print method for iPLS
print.ldecomp           Print method for linear decomposition
print.mcrals            Print method for mcrpure object
print.mcrpure           Print method for mcrpure object
print.pca               Print method for PCA model object
print.pcares            Print method for PCA results object
print.pls               Print method for PLS model object
print.plsda             Print method for PLS-DA model object
print.plsdares          Print method for PLS-DA results object
print.plsres            print method for PLS results object
print.randtest          Print method for randtest object
print.regcoeffs         print method for regression coefficients class
print.regmodel          Print method for PLS model object
print.regres            print method for regression results object
print.simca             Print method for SIMCA model object
print.simcam            Print method for SIMCAM model object
print.simcamres         Print method for SIMCAM results object
print.simcares          Print method for SIMCA results object
randtest                Randomization test for PLS regression
regcoeffs               Regression coefficients
regcoeffs.getStats      Distribution statistics for regression
                        coeffificents
regres                  Regression results
regres.bias             Prediction bias
regres.err              Error of prediction
regres.r2               Determination coefficient
regres.rmse             RMSE
regres.slope            Slope
regress.addattrs        Add names and attributes to matrix with
                        statistics
repmat                  Replicate matric x
rotationMatrixToX1      Creates a rotation matrix to map a vector x to
                        [1 0 0 ... 0]
selectCompNum           Select optimal number of components for a model
selectCompNum.pca       Select optimal number of components for PCA
                        model
selectCompNum.pls       Select optimal number of components for PLS
                        model
selratio                Selectivity ratio calculation
setDistanceLimits       Set residual distance limits
setDistanceLimits.pca   Compute and set statistical limits for Q and T2
                        residual distances.
setDistanceLimits.pls   Compute and set statistical limits for residual
                        distances.
showDistanceLimits      Show residual distance limits
showLabels              Show labels on plot
showPredictions         Predictions
showPredictions.classres
                        Show predicted class values
simca                   SIMCA one-class classification
simcam                  SIMCA multiclass classification
simcam.getPerformanceStats
                        Performance statistics for SIMCAM model
simcamres               Results of SIMCA multiclass classification
simcares                Results of SIMCA one-class classification
simdata                 Spectral data of polyaromatic hydrocarbons
                        mixing
splitExcludedData       Split the excluded part of data
splitPlotData           Split dataset to x and y values depending on
                        plot type
summary.classres        Summary statistics about classification result
                        object
summary.ipls            Summary for iPLS results
summary.ldecomp         Summary statistics for linear decomposition
summary.mcrals          Summary method for mcrals object
summary.mcrpure         Summary method for mcrpure object
summary.pca             Summary method for PCA model object
summary.pcares          Summary method for PCA results object
summary.pls             Summary method for PLS model object
summary.plsda           Summary method for PLS-DA model object
summary.plsdares        Summary method for PLS-DA results object
summary.plsres          summary method for PLS results object
summary.randtest        Summary method for randtest object
summary.regcoeffs       Summary method for regcoeffs object
summary.regmodel        Summary method for regression model object
summary.regres          summary method for regression results object
summary.simca           Summary method for SIMCA model object
summary.simcam          Summary method for SIMCAM model object
summary.simcamres       Summary method for SIMCAM results object
summary.simcares        Summary method for SIMCA results object
unmix.mcrpure           Unmix spectral data using pure variables
                        estimated before
vipscores               VIP scores for PLS model
