Pcr: Difference between revisions
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===Synopsis=== | ===Synopsis=== | ||
:model = pcr(x,y,ncomp,''options'') %identifies model (calibration step) | :model = pcr(x,y,ncomp,''options'') %identifies model (calibration step) | ||
:pred = pcr(x,model,''options'') %applies model to a new X-block | :pred = pcr(x,model,''options'') %applies model to a new X-block | ||
:valid = pcr(x,y,model,''options'') %applies model to a new X-block, with corresponding new Y values | :valid = pcr(x,y,model,''options'') %applies model to a new X-block, with corresponding | ||
:pcr - Launches an Analysis window with PCR as the selected method. | |||
new Y values | |||
===Description=== | ===Description=== |
Revision as of 10:45, 16 May 2016
Purpose
Principal Components Regression: multivariate inverse least squares regression.
Synopsis
- model = pcr(x,y,ncomp,options) %identifies model (calibration step)
- pred = pcr(x,model,options) %applies model to a new X-block
- valid = pcr(x,y,model,options) %applies model to a new X-block, with corresponding
- pcr - Launches an Analysis window with PCR as the selected method.
new Y values
Description
PCR calculates a single principal components regression model using the given number of components ncomp to predict y from measurements x, OR applies an existing PCR model to a new set of data x
To make predictions, the inputs are x the new predictor x-block (2-way array class "double" or "dataset"), and model the PCR model. The output pred is a structure, similar to model, that contains scores, predictions, etc. for the new data.
If new y-block measurements are also available for the new data, then the inputs are x the new x-block (2-way array class "double" or "dataset"), y the new y-block (2-way array class "double" or "dataset"), and model the PCR model to apply. The output valid is a structure, similar to model, that contains scores, predictions, and additional y-block statistics etc. for the new data.
In prediction and validation modes, the same model structure is used but predictions are provided in the model.detail.pred field.
Note: Calling pcr with no inputs starts the graphical user interface (GUI) for this analysis method.
Inputs
- x = X-block data (2-way array or DataSet Object)
- y = Y-block data (2-way array or DataSet Object)
- ncomp = number of components to to be calculated (positive integer scalar).
Optional Inputs
- options discussed below
Outputs
The output is a standard model structure with the following fields (see Standard Model Structure):
- modeltype: 'PCR',
- datasource: structure array with information about input data,
- date: date of creation,
- time: time of creation,
- info: additional model information,
- reg: regression vector,
- loads: cell array with model loadings for each mode/dimension,
- pred: 2 element cell array containing model predictions for each input block (when options.blockdetail='normal' x-block predictions are not saved and this will be an empty array), and the y-block predictions.
- tsqs: cell array with T2 values for each mode,
- ssqresiduals: cell array with sum of squares residuals for each mode,
- description: cell array with text description of model, and
- detail: sub-structure with additional model details and results.
Options
options = a structure array with the following fields:
- display: [ 'off' | {'on'} ], governs level of display to command window,
- plots: [ 'none' | {'final'} ], governs level of plotting,
- outputversion: [ 2 | {3} ], governs output format (discussed below),
- preprocessing: {[] []}, two element cell array containing preprocessing structures (see PREPROCESS) defining preprocessing to use on the x- and y-blocks (first and second elements respectively),
- algorithm: [ {'svd'} | ' robustpcr' | ' correlationpcr' | 'frpcr' ], governs which algorithm to use.
- 'svd' = standard singular value decomposition algorithm.
- 'robustpcr' = robust algorithm with automatic outlier detection.
- 'correlationpcr' = standard PCR with re-ordering of factors in order of y-variance captured.
- 'frpcr' = full-ratio PCR (a.k.a. optimized scaling) with automatic sample scale correction. Note that with FRPCR, models generally perform better without mean-centering on the x-block.
- blockdetails: ['compact' | {'standard'} | 'all'], extent of predictions and raw residuals included in model. 'standard' = only y-block, 'all' x and y blocks.
- confidencelimit: [ {'0.95'} ], confidence level for Q and T2 limits. A value of zero (0) disables calculation of confidence limits,
- roptions: structure of options to pass to rpcr (robust PCR engine from the Libra Toolbox). Only used when algorithm is 'robustpcr',
- alpha : [ {0.75} ], (1-alpha) measures the number of outliers the algorithm should resist. Any value between 0.5 and 1 may be specified. These options are only used when algorithm is 'robustpcr'.
- intadjust : [ {0} ], if equal to one, the intercept adjustment for the LTS-regression will be calculated. See ltsregres for details (Libra Toolbox).
The default options can be retreived using: options = pcr('options');.
OUTPUTVERSION
By default (options.outputversion = 3) the output of the function is a standard model structure model. If options.outputversion = 2, the output format is:
- [b,ssq,t,p] = pcr(x,y,ncomp,options)
where the outputs are
- b = matrix of regression vectors or matrices for each number of principal components up to ncomp,
- ssq = the sum of squares information,
- t = x-block scores, and
- p = x-block loadings.
Note: The regression matrices are ordered in b such that each Ny (number of y-block variables) rows correspond to the regression matrix for that particular number of principal components.
See Also
analysis, crossval, frpcr, modelstruct, pca, pls, preprocess, analysis, ridge