pls (version 1.2-1)

crossval: Cross-validation of PLSR and PCR models

Description

A stand alone cross-validation function for mvr objects.

Usage

crossval(object, segments = 10,
         segment.type = c("random", "consecutive", "interleaved"),
         length.seg, trace = 15, ...)

Arguments

object
an mvr object; the regression to cross-validate.
segments
the number of segments to use, or a list with segments (see below). Ignored if loo = TRUE.
segment.type
the type of segments to use. Ignored if segments is a list.
length.seg
Positive integer. The length of the segments to use. If specified, it overrides segments unless segments is a list.
trace
if TRUE, tracing is turned on. If numeric, it denotes a time limit (in seconds). If the estimated total time of the cross-validation exceeds this limit, tracing is turned on.
...
additional arguments, sent to the underlying fit function.

Value

  • The supplied object is returned, with an additional component validation, which is a list with components
  • methodeuqals "CV" for cross-validation.
  • predan array with the cross-validated predictions.
  • MSEP0a vector of MSEP values (one for each response variable) for a model with zero components, i.e., only the intercept.
  • MSEPa matrix of MSEP values for models with 1, ..., ncomp components. Each row corresponds to one response variable.
  • adja matrix of adjustment values for calculating bias corrected MSEP. MSEP uses this.
  • R2a matrix of R2 values for models with 1, ..., ncomp components. Each row corresponds to one response variable.
  • segmentsthe list of segments used in the cross-validation.
  • ncompthe number of components.

encoding

latin1

Details

This function performs cross-validation on a model fit by mvr. It can handle models such as plsr(y ~ msc(X), ...) or other models where the predictor variables need to be recalculated for each segment. When recalculation is not needed, the result of crossval(mvr(...)) is identical to mvr(..., validation = "CV"), but slower.

Note that to use crossval, the data must be specified with a data argument when fitting object.

If segments is a list, the arguments segment.type and length.seg are ignored. The elements of the list should be integer vectors specifying the indices of the segments. See cvsegments for details.

Otherwise, segments of type segment.type are generated. How many segments to generate is selected by specifying the number of segments in segments, or giving the segment length in length.seg. If both are specified, segments is ignored.

The R2 component returned is calculated as the squared correlation between the cross-validated predictions and the responses.

When tracing is turned on, the segment number is printed for each segment.

References

Mevik, B.-H., Cederkvist, H. R. (2004) Mean Squared Error of Prediction (MSEP) Estimates for Principal Component Regression (PCR) and Partial Least Squares Regression (PLSR). Journal of Chemometrics, 18(9), 422--429.

See Also

mvr mvrCv cvsegments MSEP

Examples

Run this code
data(NIR)
NIR.pcr <- pcr(y ~ msc(X), 6, data = NIR)
NIR.cv <- crossval(NIR.pcr, segments = 10)
plot(MSEP(NIR.cv))

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