Functions to estimate the mean squared error of prediction (MSEP), root mean squared error of prediction (RMSEP) and \(R^2\) (A.K.A. coefficient of multiple determination) for fitted PCR and PLSR models. Test-set, cross-validation and calibration-set estimates are implemented.
MSEP(object, ...)
# S3 method for mvr
MSEP(object, estimate, newdata, ncomp = 1:object$ncomp, comps,
intercept = cumulative, se = FALSE, …)RMSEP(object, ...)
# S3 method for mvr
RMSEP(object, ...)
R2(object, ...)
# S3 method for mvr
R2(object, estimate, newdata, ncomp = 1:object$ncomp, comps,
intercept = cumulative, se = FALSE, …)
mvrValstats(object, estimate, newdata, ncomp = 1:object$ncomp, comps,
intercept = cumulative, se = FALSE, …)
an mvr
object
a character vector. Which estimators to use.
Should be a subset of c("all", "train", "CV", "adjCV",
"test")
. "adjCV"
is only available for (R)MSEP. See
below for how the estimators are chosen.
a data frame with test set data.
a vector of positive integers. The components or number of components to use. See below.
logical. Whether estimates for a model with zero components should be returned as well.
logical. Whether estimated standard errors of the estimates should be calculated. Not implemented yet.
further arguments sent to underlying functions or (for
RMSEP
) to MSEP
mvrValstats
returns a list with components
three-dimensional array of SSE values. The first dimension is the different estimators, the second is the response variables and the third is the models.
matrix of SST values. The first dimension is the different estimators and the second is the response variables.
a numeric vector giving the number of objects used for each estimator.
the components specified, with 0
prepended if
intercept
is TRUE
.
TRUE
if comps
was NULL
or not
specified.
The other functions return an object of class "mvrVal"
, with
components
three-dimensional array of estimates. The first dimension is the different estimators, the second is the response variables and the third is the models.
"MSEP"
, "RMSEP"
or "R2"
.
the components specified, with 0
prepended if
intercept
is TRUE
.
TRUE
if comps
was NULL
or not
specified.
the function call
RMSEP
simply calls MSEP
and takes the square root of the
estimates. It therefore accepts the same arguments as MSEP
.
Several estimators can be used. "train"
is the training
or calibration data estimate, also called (R)MSEC. For R2
,
this is the unadjusted \(R^2\). It is
overoptimistic and should not be used for assessing models.
"CV"
is the cross-validation estimate, and "adjCV"
(for
RMSEP
and MSEP
) is
the bias-corrected cross-validation estimate. They can only be
calculated if the model has been cross-validated.
Finally, "test"
is the test set estimate, using newdata
as test set.
Which estimators to use is decided as follows (see below for
mvrValstats
). If
estimate
is not specified, the test set estimate is returned if
newdata
is specified, otherwise the CV and adjusted CV (for
RMSEP
and MSEP
)
estimates if the model has been cross-validated, otherwise the
training data estimate. If estimate
is "all"
, all
possible estimates are calculated. Otherwise, the specified estimates
are calculated.
Several model sizes can also be specified. If comps
is missing
(or is NULL
), length(ncomp)
models are used, with
ncomp[1]
components, …, ncomp[length(ncomp)]
components. Otherwise, a single model with the components
comps[1]
, …, comps[length(comps)]
is used.
If intercept
is TRUE
, a model with zero components is
also used (in addition to the above).
The \(R^2\) values returned by "R2"
are calculated as \(1
- SSE/SST\), where \(SST\) is the (corrected) total sum of squares
of the response, and \(SSE\) is the sum of squared errors for either
the fitted values (i.e., the residual sum of squares), test set
predictions or cross-validated predictions (i.e., the \(PRESS\)).
For estimate = "train"
, this is equivalent to the squared
correlation between the fitted values and the response. For
estimate = "train"
, the estimate is often called the prediction
\(R^2\).
mvrValstats
is a utility function that calculates the
statistics needed by MSEP
and R2
. It is not intended to
be used interactively. It accepts the same arguments as MSEP
and R2
. However, the estimate
argument must be
specified explicitly: no partial matching and no automatic choice is
made. The function simply calculates the types of estimates it knows,
and leaves the other untouched.
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.
# NOT RUN {
data(oliveoil)
mod <- plsr(sensory ~ chemical, ncomp = 4, data = oliveoil, validation = "LOO")
RMSEP(mod)
# }
# NOT RUN {
plot(R2(mod))
# }
Run the code above in your browser using DataLab