Displaying 20 results from an estimated 5000 matches similar to: "question: corCAR1 in lme"
2011 Oct 05
2
gamm: problems with corCAR1()
Dear all,
I?m analyzing this dataset containing biodiversity indices, measured over
time (Week), and at various contaminant concentrations (Treatment). We have
two replicates (Replicate) per treatment.
I?m looking for the effects of time (Week) and contaminant concentration
(Treatment) on diversity indices (e.g. richness).
Initial analysis with GAM models showed temporal autocorrelation of
2006 Mar 04
1
replicated time series - lme?
Dear R-helpers,
I have a time series analysis problem in R:
I want to analyse the output of my simulation model which is proportional
cover of shrubs in a savanna plot for each of 500 successive years. I have
run the model (which includes stochasticity, especially in the initial
conditions) 17 times generating 17 time series of shrub cover.
I am interested in a possible periodicity of shrub
2010 Apr 17
2
interpreting acf plot
Hello,
I am attending a course in Computational Statistics at ETH and in one of the assignments I am asked to prove that a time series is not autocorrelated using the R function "acf".
I tried out the acf function with the given data, according to what I found here: http://landshape.org/enm/options-for-acf-in-r/ this test data does not look IID but rather shows some trends so how can I
2010 Apr 29
1
a question on autocorrelation acf
Hi R users,
where can I find the equations used by acf function to calculate
autocorrelation? I think I misunderstand acf. Doesn't acf use following
equation to calculate autocorrelation?
[image: R(\tau) = \frac{\operatorname{E}[(X_t - \mu)(X_{t+\tau} -
\mu)]}{\sigma^2}\, ,]
If it does, then the autocorrelation of a sine function should give a
cosine; however, the following code gives a
2011 Aug 25
1
Autocorrelation using acf
Dear R list
As suggested by Prof Brian Ripley, I have tried to read acf literature. The main problem is I am not the statistician and hence have some problem in understanding the concepts immediately. I came across one literature (http://www.stat.nus.edu.sg/~staxyc/REG32.pdf) on auto-correlation giving the methodology. As per that literature, the auto-correlation is arrived at as per following.
2010 Nov 07
1
When using ACF, receive error: no applicable method for 'ACF' applied to an object of class "c('double', 'numeric')"
I am guessing this is a very simple question, but this is only my second day
with R so it is all still a bit imposing.
I am trying to run an autocorrelation.
I imported a CSV file, which has one column labeled "logistic".
I ran the command:
ACF(data$logistic,maxLag=10)
However, I received the error:
Error in UseMethod("ACF") :
no applicable method for 'ACF'
2012 Jul 26
1
loop for, error: obj type 'closure' not subsetable
Hi everyone,
I've got the following problem:
I've got a matrix [1000,2] and two vectors. In very matrix row there is two
coefficients b0 and b1. The vectors are two variables x and y. I want to do
a loop to take b0 and b1 and with x and y calculate the residual of a linear
model and calculate the second order coefficient of autocorrelation. What I
did is :
rho<-function(mat, x,y){
2011 Aug 24
1
Autocorrelation using library(tseries)
Dear R list
I am trying to understand the auto-correlation concept. Auto-correlation is the self-correlation of random variable X with a certain time lag of say t.
The article "http://www.mit.tut.fi/MIT-3010/luentokalvot/lk10-11/MDA_lecture16_11.pdf" (Page no. 9 and 10) gives the methodology as under.
Suppose you have a time series observations as say
X =
2009 Aug 05
2
acf Significance
Hi List,
I'm trying to calculate the autocorrelation coefficients for a time
series using acf at various lags. This is working well, and I can get
the coefficients without any trouble. However, I don't seem to be able
to obtain the significance of these coefficients from the returned acf
object, largely because I don't know where I might find them.
It's clear that the acf
2005 Oct 10
1
acf.plot() question
When I run the "acf()" function using the "acf(ts.union(mdeaths,
fdeaths))" example, the "acf()" function calls the "acf.plot()"
function to generate this plot...
http://members.cox.net/ddebarr/images/acf_example.png
The plot in the lower right-hand corner is labeled "fdeaths & mdeaths",
but the negative lags appear to belong to "mdeaths
2011 Sep 16
3
question concerning the acf function
Hi everyone,
I've got a question concerning the function acf(.) in R for calculating the
autocorrelation in my data.
I have a table with daily returns of several stocks over time and I would
like to calculate the autocorrelation for all the series (not only for one
time series). How can I do this?
After that I want to apply an autoregressive model based on the estimated
lag in the
2008 Nov 20
1
different ACF results
Dear all,
I have one Model (M3) fitted using the lme package, and I have
checked the correlation structure of within-group errors using
plot(ACF (M3,maxLag=10),alpha=0.05)
But now I am not sure how to interpret this plot for the empirical
autocorrelation function.
The problem is that I am used to see/interpret diagrams in which all
the autocorrelation Lags, except lag-1, are inside the
2009 May 20
1
stationarity tests
How can I make sure the residual signal, after subtracting the trend extracted through some technique, is actually trend-free ?
I would greatly appreciate any suggestion about some Stationarity tests.
I'd like to make sure I have got the difference between ACF and PACF right.
In the following I am citing some definitions. I would appreciate your thoughts.
ACF(k) estimates the correlation
2004 Mar 09
2
corARMA and ACF in nlme
Hi R-sters,
Just wondering what I might be doing wrong. I'm trying to fit a multiple
linear regression model, and being ever mindful about the possibilities of
autocorrelation in the errors (it's a time series), the errors appear to
follow an AR1 process (ar(ts(glsfit$residuals)) selected order 1). So,
when I go back and try to do the simultaneous regression and error fit with
gls,
2006 Aug 18
3
Query: how to modify the plot of acf
I need to modify the graph of the autocorrelation. I tried to do it through plot.acf but with no success.
1. I would like to get rid of the lag zero
2. I would like to have numbers on the x-axis only at lags 12, 24, 36, 48, 60, ...
Could anybody help me in this?
Any help will be appreciated
Thank you for your attention
Stefano
[[alternative HTML version deleted]]
2010 Apr 14
1
creating a new corClass for lme()
Hi,
I have been using the function lme() of the package nlme to model grouped
data that is auto-correlated in time and in space (the data was collected on
different days via a moving monitor). I am aware that I can use the
correlation classes corCAR1 and corExp (among other options) to model the
temporal and spatial components of the auto-correlation. However, as far as
I can tell, I can only
2012 Feb 14
1
Strange plotting error
Hi there,
I am trying to compute the autocorrelation in a dataset using R's acf
function. ACF automatically plots the results. This works well except in
some cases xlim doesnt work
data <- rnorm(2000,0,1)
acf(data,xlim=c(1,10)) # works - the plot starts at 1
acf(data,lag=100,xlim=c(1,100)) # this does not work and the plot still
starts at 0
Is there another way to specify the xlim or
2008 Aug 06
1
using acf() for multiple columns
Hi everyone,
I'm trying to use the acf() function to calculate the autocorrelation of
each column in a matrix. The trouble is that I can only seem to get the
function to work if I extract the data in the column into a separate matrix
and then apply the acf() function to this column.
I have something like this: acf(mat,lag.max=10,na.action=na.pass)
...but I would really like to apply the
2007 Nov 12
2
graphical parameters and acf
Hi,
I'm plotting 5 autocorrelation plots on one page. Using
par(mfrow=c(3,2)) everything comes out fine. However, for
each plot, it prints a title on top of each plot that says
Series followed by the variable name used in the plot. I
want to suppress those titles, but I also want a general
figure title on the bottom of the page. I've looked at the
Murrell book as well as the acf
2008 Jan 17
1
acf lag1 value
Hi R,
I have doubt.
>x= c(4,5,6,3,2,4,5)
>acf(x,plot=F,lag.max=1)
Autocorrelations of series 'x', by lag
0 1
1.000 0.182
But if I actually calculate the autocorrelation at lag1 I get,
>cor(x[-1],x[-length(x)])
[1] 0.1921538
Even in excel I get 0.1921538 value. So, I want to know what the 'acf'
function is calculating here....