Displaying 20 results from an estimated 4000 matches similar to: "About "STL" function"
2008 Sep 02
2
More help with stl?
I don't understand the output of stl. As a simple example:
y <- numeric(1:365)
y[250] = 1
stl <- stl(ts(y, frequency=7), s.window="periodic")
This returns without error but the results are puzzling to me. If you plot the results it is probably easiest to visualize what I mean.
plot(stl)
This shows the original data (a single spike at 250). A trend (which also shows a bump
2004 Jul 18
2
stl,package=stats
Greetings:
I'm using the time series decomposition routine "stl" from the package "stats".
But how do I get the results into a vector to work with them?
example:
data(AirPassengers)
m<-stl(AirPassengers,"per")
print(m)
This lists the output but can't figure out how to extract the individual series like seasonal, trend, irregular.
Thanks,
Bob
2001 May 11
1
output from STL
Hi All,
How do I can create a new vector, i.e. 'seasonal' or 'trend' from the
resultant seasonal or trend component of the Time.Series object produced by
STL, and how I could superpose in the same graphic, i.e. original data and
trend or seasonality?
Thanks in advance!
Antonio
Antonio Rodr?guez Verdugo
CICEM Agua del Pino
Huelva
Oceanography and Coastal Resources,
PhD Program,
2003 Oct 22
1
Help with STL function in R compared to S-Plus
I am trying to understand the nuances of STL (seasonal trend
decomposition with loess) based on William Cleveland's (and others?)
original development. I do not understand the specification or use of
"frequency components" or equivalent "low-pass filter" components in
the stl() function.
I have run the stl() function on a standard example data (co2) in both
S-Plus and
2010 Feb 07
2
predicting with stl() decomposition
Hi mailinglist members,
I’m actually working on a time series prediction and my current approach is
to decompose the series first into a trend, a seasonal component and a
remainder. Therefore I’m using the stl() function. But I’m wondering how to
get the single components in order to predict the particular fitted series’.
This code snippet illustrates my problem:
series <-
2011 May 18
1
Multiple plots on one device using stl
G'day,
I am looking at monthly reports, and have three series of monthly data from 2007 to 2009. I would like to show the season decomposition of these two series side by side on the one device, however using plot doesn't seem to respect any use of layout(matrix(1:3, ncol=3)) or par(mfcol=c(1,3)).
I'm guessing that this means that the plot(stl) perhaps uses them, but I can't find
2001 May 16
1
stl in library(ts)
I am running R 1.2.2 under Linux. When using the function stl in
the ts library, how can I save the seasonal component? What I
would like was something like:
library(ts)
data(nottem)
data.stl <- stl(nottem, "per")
x <- data.stl$sea
This what I get:
> x
NULL
I would, however, like to store in x the seasonal component.
Thanks in advance. Francisco.
--
Francisco
2008 Jul 22
1
rollmean and stl
I need to investigate how rollmean and the trend returned from stl differ.
I am trying to find out exactly what the trend part of stl is (I have just
started coding in R and do not know fortran). I need to extract this
because it will be used in further calculations, and it needs to be verified
to make sure that I am using the right process. I would like to use this
to remove the seasonal
2003 Jul 30
2
STL- TimeSeries Decomposition
Dear R Helpers,
Currently I'm working with the ts package of R and created a TimeSerie
from pixels extracted from satellite imagery(S10 NDVI data, 10 daily
composites). I'm trying to decompose this signal in different signals
(seasonal and trend).
When testing out the STL method is says => Only univariate timeseries
are allowed, but the current Timeserie I'm using is univariate!
2017 Jul 19
2
STL - time series seasonal decomposition sensitive to data points?
Hi all,
I am trying to analyse a time series data and want to make
trend-season decomposition using STL approach in R. However I found
the decomposition result seems to be sensitive to data points even
with the robust option.
More specifically, suppose I have a few years of monthly data. Using
stl, I got a decomposition T1 + S1 + R1. Then I deleted the most
recent two or three data points, the
2010 Jul 09
1
stl function
Hi all,
I'm working on decomposition and comparison of several time series. I'm
interested in extracting the trend components for each time series using the
stl function and overlaying them on one another.
I'm not sure how to plot the trend function alone and to do the overlay
using some kind of loop. If anyone has any insight that would be great!
thanks,
Katie
--
View this
2005 Dec 07
2
Change labels of x-axes in Plot of stl() function?
Hi all,
How can the label of the x-axes in the plot() of a stl.object be adapted?
e.g.,
When plotting: plot(stl(nottem, "per"))
In the labels of the x-axes is “time”. How can this be changed to e.g.,
“Time (dekade) “?
It does not work with xlab or others anymore…
Thanks,
Jan
_______________________________________________________________________
Ir. Jan Verbesselt
Research
2012 Apr 02
0
STL decomposition of time series with multiple seasonalities
Hi all,
I have a time series that contains double seasonal components (48 and 336) and I would like to decompose the series into the following time series components (trend, seasonal component 1, seasonal component 2 and irregular component). As far as I know, the STL procedure for decomposing a series in R only allows one seasonal component, so I have tried decomposing the series twice. First,
2008 Feb 26
0
adjusting monthplot() towards a seasonal diagnostic plot for stl()
Hi all,
I would like to adjust the monthplot() of an stl() so that for a
time-series with freq=12 (months):
a) the curve on the panel for the k-th month graphs the seasonal values
minus their monthly mean values
b) add to the fig. the values of the k-th month of the seasonal +
remainder, also minus their monthly mean values
which corresponds to the 'seasonal diagnostic plot as described by
2009 Oct 16
0
Problem with the stl function
Hi there,
My name is Renan X. Cortes, student of Statistics, from south of Brazil, and I'd
like to ask you a few questions about decomposition of time series.
In R, when I fit the decomposition using the "stl" function, an
object is returned when ask the summary of the fit, called STL.seasonal (%),
STL.trend (%) and STL.remainder (%).
Once the decomposition is additive,
2011 May 27
1
continuous time AR(1)
Dear R helpers,
I would like to model temporal trend of biological remains in sediment cores.
All samples are temporally auto-correlated and I would like to take this effect
into account.
Initially I thought that I could use AR(1) or ARIMA functions but these
functions only work with regular temporal intervals between samples.
Hence I would like to use a continuous time AR(1) that allow
2011 Mar 11
0
Seasonality in STL Decomposition
I having issues with interpreting the results of STL decomposition. The
following is the data used as well as the decompsed seasonality, trend and
the remainder components. It is a weekly data.
The original data doesn't appear to be seasonal. But there seems to be a
periodic peak in the seasonal component. Can some one please let me know how
to interpret the seasonality plot in this???
Also,
2017 Aug 23
0
bugs in documentation of stats::stl
Dear list, R-core,
The documentation of stats::stl explicitly refers to the paper by
Cleveland[1] to explain the parameters. However, the description is
confusing, with two descriptions seeming to refer to the same parameter in
the paper.
s.window: [...] the loess window for seasonal extraction, which should be
odd and at least 7, according to Cleveland et al
--> The phrase 'odd and at
2013 Apr 18
3
Linux distribution with gcc 4.8 and AddressSanitizer ?
Dear R developers,
I've got an information from Prof. Ripley regarding a bug found with
AdressSanitizer in one of our packages. It is now fixed, thank you for
this information.
Now, I would like to run AddressSanitizer myself before submitting the
patched package to CRAN.
Is there a recommendation of a suitable Linux distribution with gcc 4.8,
ideally an ISO image or (even better) a
2001 Mar 15
1
supressing linefeed at end of file
Hello,
I want to do simulations with an external simulation model. For this
purpose I wrote a R-script which makes the pre- and post-processing of
the data (generate scenarios, analyze results).
The R-script writes the input file for the simulation with e.g.
write(x, file="test.dat", ncolumns=10)
The problem is, however, that this command (and even constructions with
cat) will add a