predict.pvs {klaR} | R Documentation |
predict method for pvs objects
Description
Prediction of class membership and posterior probabilities using pairwise variable selection.
Usage
## S3 method for class 'pvs'
predict(object, newdata, quick = FALSE, detail = FALSE, ...)
Arguments
object |
an object of class ‘ |
newdata |
a data frame or matrix containing new data. If not given the same datas as used for training the ‘ |
quick |
indicator (logical), whether a quick, but less accurate computation of posterior probabalities should be used or not. |
detail |
indicator (logical), whether the returned object includes additional information about the posterior probabilities for each date in each submodel. |
... |
Further arguments are passed to underlying |
Details
If “quick=FALSE
” the posterior probabilites for each case are computed using the pairwise coupling algorithm presented by Hastie, Tibshirani (1998).
If “quick=FALSE
” a much quicker solution is used, which leads to less accurate posterior probabalities.
In almost all cases it doesn't has a negative effect on the classification result.
Value
a list with components:
class |
the predicted classes |
posterior |
posterior probabilities for the classes |
details |
(only if “ |
Author(s)
Gero Szepannek, szepannek@statistik.tu-dortmund.de, Christian Neumann
References
Szepannek, G. and Weihs, C. (2006) Variable Selection for Classification of More than Two Classes Where the Data are Sparse. In From Data and Information Analysis to Kwnowledge Engineering., eds Spiliopolou, M., Kruse, R., Borgelt, C., Nuernberger, A. and Gaul, W. pp. 700-708. Springer, Heidelberg.
See Also
For more details and examples how to use this predict method, see pvs
.