
Last chance! 50% off unlimited learning
Sale ends in
Applies linear filtering to a univariate time series or to each series separately of a multivariate time series.
filter(x, filter, method = c("convolution", "recursive"),
sides = 2, circular = FALSE, init)
a univariate or multivariate time series.
a vector of filter coefficients in reverse time order (as for AR or MA coefficients).
Either "convolution"
or "recursive"
(and
can be abbreviated). If "convolution"
a moving average is
used: if "recursive"
an autoregression is used.
for convolution filters only. If sides = 1
the
filter coefficients are for past values only; if sides = 2
they are centred around lag 0. In this case the length of the
filter should be odd, but if it is even, more of the filter
is forward in time than backward.
for convolution filters only. If TRUE
, wrap
the filter around the ends of the series, otherwise assume
external values are missing (NA
).
for recursive filters only. Specifies the initial values of the time series just prior to the start value, in reverse time order. The default is a set of zeros.
A time series object.
Missing values are allowed in x
but not in filter
(where they would lead to missing values everywhere in the output).
Note that there is an implied coefficient 1 at lag 0 in the
recursive filter, which gives
The convolution filter is
where o
is the offset: see sides
for how it is determined.
# NOT RUN {
x <- 1:100
filter(x, rep(1, 3))
filter(x, rep(1, 3), sides = 1)
filter(x, rep(1, 3), sides = 1, circular = TRUE)
filter(presidents, rep(1, 3))
# }
Run the code above in your browser using DataLab