Moving Average
On 26-Feb-09 13:54:51, David Winsemius wrote:
I saw Gabor's reply but have a clarification to request. You say you want to remove low frequency components but then you request smoothing functions. The term "smoothing" implies removal of high-frequency components of a series.
If you produce a smoothed series, your result of course contains
the low-frequency comsponents, with the high-frequency components
removed.
But if you then subtract that from the original series, your result
contains the high-frequency components, with the low-frequency
compinents removed.
Moving-average is one way of smoothing (but can introduce periodic
components which were not there to start with).
Filtering a time-series is a very open-ended activity! In many
cases a useful start is exploration of the spectral properties
of the series, for which R has several functions. 'spectrum()'
in the stats package (loaded bvy default) is one basic function.
help.search("time series") will throw up a lot of functions.
You might want to look at package 'ltsa' (linear time series
analysis).
Alternatively, if yuou already have good information about the
frequency-structure of the series, or (for instance) know that
it has a will-defined seasonal component, then you could embark
on designing a transfer function specifically tuned to the job.
Have a look at RSiteSearch("{transfer function}")
Hoping this helps,
Ted.
If smoothing really is your goal then additional R resource would be smooth.spline, loess (or lowess), ksmooth, or using smoothing terms in regressions. Venables and Ripley have quite a few worked examples of such in MASS. -- David Winsemius On Feb 26, 2009, at 7:07 AM, <mauede at alice.it> wrote:
I am looking for some help at removing low-frequency components from
a signal, through Moving Average on a sliding window.
I understand thiis is a smoothing procedure that I never done in my
life before .. sigh.
I searched R archives and found "rollmean", "MovingAverages {TTR}",
"SymmetricMA".
None of the above mantioned functions seems to accept the smoothing
polynomial order and the sliding window with as input parameters.
Maybe I am missing something.
I wonder whether there is some building blocks in R if not even a
function which does it all (I do not expect that much,though).
Even some literature references and/or tutorials are very welcome.
Thank you so much,
Maura
tutti i telefonini TIM!
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