gausspr {kernlab} | R Documentation |
gausspr
is an implementation of Gaussian processes
for classification and regression.
## S4 method for signature 'formula': gausspr(x, data=NULL, ..., subset, na.action = na.omit, scaled = TRUE) ## S4 method for signature 'vector': gausspr(x,...) ## S4 method for signature 'matrix': gausspr(x, y, scaled = TRUE, type= NULL, kernel="rbfdot", kpar="automatic", var=1, tol=0.0005, cross=0, fit=TRUE, ... , subset, na.action = na.omit)
x |
a symbolic description of the model to be fit or a matrix or vector when a formula interface is not used. When not using a formula x is a matrix or vector containg the variables in the model |
data |
an optional data frame containing the variables in the model. By default the variables are taken from the environment which `gausspr' is called from. |
y |
a response vector with one label for each row/component of x . Can be either
a factor (for classification tasks) or a numeric vector (for
regression). |
type |
Type of problem. Either "classification" or "regression".
Depending on whether y is a factor or not, the default
setting for type is classification or regression ,
respectively, but can be overwritten by setting an explicit value. |
scaled |
A logical vector indicating the variables to be
scaled. If scaled is of length 1, the value is recycled as
many times as needed and all non-binary variables are scaled.
Per default, data are scaled internally (both x and y
variables) to zero mean and unit variance. The center and scale
values are returned and used for later predictions. |
kernel |
the kernel function used in training and predicting.
This parameter can be set to any function, of class kernel, which computes a dot product between two
vector arguments. kernlab provides the most popular kernel functions
which can be used by setting the kernel parameter to the following
strings:
|
kpar |
the list of hyper-parameters (kernel parameters).
This is a list which contains the parameters to be used with the
kernel function. Valid parameters for existing kernels are :
Hyper-parameters for user defined kernels can be passed through the kpar parameter as well. |
var |
the initial noise variance, (only for regression) (default : 0.001) |
tol |
tolerance of termination criterion (default: 0.001) |
fit |
indicates whether the fitted values should be computed and included in the model or not (default: 'TRUE') |
cross |
if a integer value k>0 is specified, a k-fold cross validation on the training data is performed to assess the quality of the model: the Mean Squared Error for regression |
subset |
An index vector specifying the cases to be used in the training sample. (NOTE: If given, this argument must be named.) |
na.action |
A function to specify the action to be taken if NA s are
found. The default action is na.omit , which leads to
rejection of cases with missing values on any required variable. An
alternative is na.fail , which causes an error if NA
cases are found. (NOTE: If given, this argument must be named.) |
... |
additional parameters |
A Gaussian process is specified by a mean and a covariance function.
The mean is a function of x (which is often the zero function), and
the covariance
is a function C(x,x') which expresses the expected covariance between the
value of the function y at the points x and x'.
The actual function y(x) in any data modelling problem is assumed to be
a single sample from this Gaussian distribution.
Laplace approximation is used for the parameter estimation in gaussian
processes for classification.
The predict function can return class probabilities for
classification problems by setting the type
parameter to "probabilities".
An S4 object of class "gausspr" containing the fitted model along with information. Accessor functions can be used to access the slots of the object which include :
alpha |
The resulting model parameters |
error |
Training error (if fit == TRUE) |
Alexandros Karatzoglou
alexandros.karatzoglou@ci.tuwien.ac.at
C. K. I. Williams and D. Barber
Bayesian classification with Gaussian processes.
IEEE Transactions on Pattern Analysis and Machine Intelligence, 20(12):1342-1351, 1998
http://www.dai.ed.ac.uk/homes/ckiw/postscript/pami_final.ps.gz
predict.gausspr
, rvm
, ksvm
, gausspr-class
, lssvm
# train model data(iris) test <- gausspr(Species~.,data=iris,var=2) test alpha(test) # predict on the training set predict(test,iris[,-5]) # class probabilities predict(test, iris[,-5], type="probabilities") # create regression data x <- seq(-20,20,0.1) y <- sin(x)/x + rnorm(401,sd=0.03) # regression with gaussian processes foo <- gausspr(x, y) foo # predict and plot ytest <- predict(foo, x) plot(x, y, type ="l") lines(x, ytest, col="red")