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The irregFunData
class represents functional data that is sampled
irregularly on one-dimensional domains. The two slots represent the
observation points (x-values) and the observed function values (y-values).
# S4 method for list,list
irregFunData(argvals, X)# S4 method for irregFunData
show(object)
# S4 method for irregFunData
names(x)
# S4 method for irregFunData
names(x) <- value
# S4 method for irregFunData
str(object, ...)
# S4 method for irregFunData
summary(object, ...)
A list of numerics, corresponding to the observation points for each realization
A list of numerics, corresponding to the observed functions
An irregFunData
object.
The irregFunData
object.
The names to be given to the irregFunData
curves.
Other parameters passed to summary
.
irregFunData
: Constructor for irregular functional data
objects.
show
: Print basic information about the irregFunData
object
in the console. The default console output for irregFunData
objects.
names
: Get the names of the irregFunData
object.
names<-
: Set the names of the irregFunData
object.
str
: A str
method for irregFunData
objects, giving a compact overview of the structure.
summary
: A summary
method for irregFunData
objects.
argvals
A list of numerics, representing the observation grid
X
A list of numerics, representing the values of each observation
Currently, the class is implemented only for functional
data on one-dimensional domains
Irregular functional data are realizations of a random process '>funData
class, each object of the irregFunData
class has two slots; the argvals
slot represents the observation
points and the X
slot represents the observed data. In contrast to the
regularly sampled data, both slots are defined as lists of vectors, where
each entry corresponds to one observed function:
X[[i]]
contains the corresponding observed
data
Generic functions for the irregFunData
class include a print method,
plotting and basic
arithmetics. Further methods for irregFunData
:
dimSupp
, nObs
: Informations about the support
dimensions and the number of observations,
getArgvals
,
extractObs
: Getting/setting slot values (instead of accessing
them directly via irregObject@argvals, irregObject@X
) and extracting
single observations or data on a subset of the domain,
integrate
, norm
: Integrate all observations over
their domain or calculating the
An irregFunData
object can be coerced to a funData
object using
as.funData(irregObject)
. The regular functional data object is defined
on the union of all observation grids of the irregular object. The value of
the new object is marked as missing (NA
) for observation points that
are in the union, but not in the original observation grid.
# NOT RUN {
# Construct an irregular functional data object
i1 <- irregFunData(argvals = list(1:5, 2:4), X = list(2:6, 3:5))
# Display in the console
i1
# Summarize
summary(i1)
# A more realistic object
argvals <- seq(0,2*pi, 0.01)
ind <- replicate(11, sort(sample(1:length(argvals), sample(5:10,1)))) # sample observation points
argvalsIrreg <- lapply(ind, function(i){argvals[i]})
i2 <- irregFunData(argvals = argvalsIrreg, X = mapply(function(x, a){a * sin(x)},
x = argvalsIrreg, a = seq(0.75, 1.25, by = 0.05)))
# Display/summary gives basic information
i2
summary(i2)
# Use the plot function to get an impression of the data
plot(i2)
# }
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