A B C D E F G H I K L M O P Q R S T W X
| aggmean | Centers of classes |
| aicplsr | AIC and Cp for Univariate PLSR Models |
| asdgap | asdgap |
| bias | Residuals and prediction error rates |
| blockscal | Block autoscaling |
| cassav | cassav |
| cglsr | CG Least Squares Models |
| checkdupl | Duplicated rows in datasets |
| checkna | Find and count NA values in a dataset |
| coef.Cglsr | CG Least Squares Models |
| coef.Dkpls | Direct KPLSR Models |
| coef.Dkrr | Direct KRR Models |
| coef.Kplsr | KPLSR Models |
| coef.Krr | KRR (LS-SVMR) |
| coef.Lmr | Linear regression models |
| coef.Plsr | PLSR algorithms |
| coef.Rr | Linear Ridge Regression |
| cor2 | Residuals and prediction error rates |
| covsel | CovSel |
| dderiv | Derivation by finite difference |
| detrend | Polynomial de-trend transformation |
| dfplsr_cg | Degrees of freedom of Univariate PLSR Models |
| dfplsr_cov | Degrees of freedom of Univariate PLSR Models |
| dfplsr_div | Degrees of freedom of Univariate PLSR Models |
| dkplsr | Direct KPLSR Models |
| dkrr | Direct KRR Models |
| dmnorm | Multivariate normal probability density |
| dtagg | Summary statistics of data subsets |
| dummy | Table of dummy variables |
| eposvd | External parameter orthogonalization (EPO) |
| err | Residuals and prediction error rates |
| euclsq | Matrix of distances |
| euclsq_mu | Matrix of distances |
| fda | Factorial discriminant analysis |
| fdasvd | Factorial discriminant analysis |
| forages | forages |
| getknn | KNN selection |
| gridcv | Cross-validation |
| gridcvlb | Cross-validation |
| gridcvlv | Cross-validation |
| gridscore | Tuning of predictive models on a validation dataset |
| gridscorelb | Tuning of predictive models on a validation dataset |
| gridscorelv | Tuning of predictive models on a validation dataset |
| hconcat | Block autoscaling |
| headm | Display of the first part of a data set |
| interpl | Resampling of spectra by interpolation methods |
| knnda | KNN-DA |
| knnr | KNN-R |
| kpca | KPCA |
| kplsr | KPLSR Models |
| kplsrda | KPLSR-DA models |
| kpol | Kernel functions |
| krbf | Kernel functions |
| krr | KRR (LS-SVMR) |
| krrda | KRR-DA models |
| ktanh | Kernel functions |
| lda | LDA and QDA |
| lmr | Linear regression models |
| lmrda | LMR-DA models |
| locw | Locally weighted models |
| locwlv | Locally weighted models |
| lodis | Orthogonal distances from a PCA or PLS score space |
| lwplslda | KNN-LWPLS-DA Models |
| lwplslda_agg | Aggregation of KNN-LWPLSDA models with different numbers of LVs |
| lwplsqda | KNN-LWPLS-DA Models |
| lwplsqda_agg | Aggregation of KNN-LWPLSDA models with different numbers of LVs |
| lwplsr | KNN-LWPLSR |
| lwplsrda | KNN-LWPLS-DA Models |
| lwplsrda_agg | Aggregation of KNN-LWPLSDA models with different numbers of LVs |
| lwplsr_agg | Aggregation of KNN-LWPLSR models with different numbers of LVs |
| mahsq | Matrix of distances |
| mahsq_mu | Matrix of distances |
| matB | Between and within covariance matrices |
| matW | Between and within covariance matrices |
| mavg | Smoothing by moving average |
| mblocks | Block autoscaling |
| mpars | Tuning of predictive models on a validation dataset |
| mse | Residuals and prediction error rates |
| msep | Residuals and prediction error rates |
| octane | octane |
| odis | Orthogonal distances from a PCA or PLS score space |
| ozone | ozone |
| pcaeigen | PCA algorithms |
| pcaeigenk | PCA algorithms |
| pcanipals | PCA algorithms |
| pcanipalsna | PCA algorithms |
| pcasph | PCA algorithms |
| pcasvd | PCA algorithms |
| pinv | Moore-Penrose pseudo-inverse of a matrix |
| plotjit | Jittered plot |
| plotscore | Plotting errors rates |
| plotsp | Plotting spectra |
| plotsp1 | Plotting spectra |
| plotxna | Plotting Missing Data in a Matrix |
| plotxy | 2-d scatter plot |
| plskern | PLSR algorithms |
| plslda | PLSDA models |
| plslda_agg | PLSDA with aggregation of latent variables |
| plsnipals | PLSR algorithms |
| plsqda | PLSDA models |
| plsqda_agg | PLSDA with aggregation of latent variables |
| plsrannar | PLSR algorithms |
| plsrda | PLSDA models |
| plsrda_agg | PLSDA with aggregation of latent variables |
| plsr_agg | PLSR with aggregation of latent variables |
| predict.Cglsr | CG Least Squares Models |
| predict.Dkplsr | Direct KPLSR Models |
| predict.Dkrr | Direct KRR Models |
| predict.Dmnorm | Multivariate normal probability density |
| predict.Knnda | KNN-DA |
| predict.Knnr | KNN-R |
| predict.Kplsr | KPLSR Models |
| predict.Kplsrda | KPLSR-DA models |
| predict.Krr | KRR (LS-SVMR) |
| predict.Krrda | KRR-DA models |
| predict.Lda | LDA and QDA |
| predict.Lmr | Linear regression models |
| predict.Lmrda | LMR-DA models |
| predict.Lwplsprobda | KNN-LWPLS-DA Models |
| predict.Lwplsprobda_agg | Aggregation of KNN-LWPLSDA models with different numbers of LVs |
| predict.Lwplsr | KNN-LWPLSR |
| predict.Lwplsrda | KNN-LWPLS-DA Models |
| predict.Lwplsrda_agg | Aggregation of KNN-LWPLSDA models with different numbers of LVs |
| predict.Lwplsr_agg | Aggregation of KNN-LWPLSR models with different numbers of LVs |
| predict.Plsda_agg | PLSDA with aggregation of latent variables |
| predict.Plsprobda | PLSDA models |
| predict.Plsr | PLSR algorithms |
| predict.Plsrda | PLSDA models |
| predict.Plsr_agg | PLSR with aggregation of latent variables |
| predict.Qda | LDA and QDA |
| predict.Rr | Linear Ridge Regression |
| predict.Rrda | RR-DA models |
| predict.Svm | SVM Regression and Discrimination |
| qda | LDA and QDA |
| r2 | Residuals and prediction error rates |
| residcla | Residuals and prediction error rates |
| residreg | Residuals and prediction error rates |
| rmgap | Removing vertical gaps in spectra |
| rmsep | Residuals and prediction error rates |
| rpd | Residuals and prediction error rates |
| rpdr | Residuals and prediction error rates |
| rr | Linear Ridge Regression |
| rrda | RR-DA models |
| sampcla | Within-class sampling |
| sampdp | Duplex sampling |
| sampks | Kennard-Stone sampling |
| savgol | Savitzky-Golay smoothing |
| scordis | Score distances (SD) in a PCA or PLS score space |
| segmkf | Segments for cross-validation |
| segmts | Segments for cross-validation |
| selwold | Heuristic selection of the dimension of a latent variable model with the Wold's criterion |
| sep | Residuals and prediction error rates |
| snv | Standard normal variate transformation (SNV) |
| sourcedir | Source R functions in a directory |
| summ | Description of the quantitative variables of a data set |
| summary.Fda | Factorial discriminant analysis |
| summary.Kpca | KPCA |
| summary.Pca | PCA algorithms |
| summary.Plsr | PLSR algorithms |
| summary.Svm | SVM Regression and Discrimination |
| svmda | SVM Regression and Discrimination |
| svmr | SVM Regression and Discrimination |
| transform | Generic transform function |
| transform.Dkpls | Direct KPLSR Models |
| transform.Fda | Factorial discriminant analysis |
| transform.Kpca | KPCA |
| transform.Kplsr | KPLSR Models |
| transform.Pca | PCA algorithms |
| transform.Plsr | PLSR algorithms |
| wdist | Distance-based weights |
| xfit | Matrix fitting from a PCA or PLS model |
| xfit.Pca | Matrix fitting from a PCA or PLS model |
| xfit.Plsr | Matrix fitting from a PCA or PLS model |
| xresid | Matrix fitting from a PCA or PLS model |