Displaying 20 results from an estimated 70 matches for "corstrs".
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corstr
2009 Feb 09
1
gee with auto-regressive correlation structure (AR-M)
Dear all,
I need to fit a gee model with an auto-regressive correlation structure and I faced some problems.
I attach a simple example:
#######################################################
library(gee)
library(geepack)
# I SIMULATE DATA FROM POISSON DISTRIBUTION, 10 OBS FOR EACH OF 50 GROUPS
set.seed(1)
y <- rpois(500,50)
x <- rnorm(500)
id <- rep(1:50,each=10)
# EXAMPLES FOR
2007 Sep 05
1
Running geeglm unstructured corstr
? stato filtrato un testo allegato il cui set di caratteri non era
indicato...
Nome: non disponibile
Url: https://stat.ethz.ch/pipermail/r-help/attachments/20070905/6d1002c1/attachment.pl
2000 Mar 18
1
Corstr in the Gee (Generalized Estimation Equation) arguments?
Dear all:
Y=a+bX1+cX2
In the Gee (Generalized Estimation Equation) arguments:
The arument Corstr has sveral choices:
"independence" "fixed" "stat_M_dep" "non_stat_M_dep"
"exchangeable" "AR-M" "unstructured"
What does each term mean?
How do I choose among them?
How do I know the correlation structure of
2008 Sep 07
1
an error to call 'gee' function in R
Dear List:
I found an error when I called the 'gee' function. I cannot solve and explain it. There are no errors when I used the 'geeglm' function. Both functions fit the gee model. The project supervisor recommends me to use the 'gee' function. But I cannot explain to him why this error happens. Would you help me solve this problem? I appreciate your help.
In
2010 Jun 17
0
Modifyiing R working matrix within "gee" source code
...", "inverse", "probit",
"cloglog")
fams <- c("gaussian", "poisson", "binomial", "Gamma", "quasi")
varfuns <- c("constant", "mu", "mu(1-mu)", "mu^2")
corstrs <- c("independence", "fixed", "stat_M_dep", "non_stat_M_dep",
"exchangeable", "AR-M", "unstructured")
linkv <- as.integer(match(c(family$link), links, -1))
famv <- match(family$family, fams, -1)
if (f...
2008 Dec 08
0
gee niggles
I'm not sure if the gee package is still actively maintained, but I for one find it extremely useful. However, I've come across a few infelicities that I'm hoping could be resolved for future versions. Hope it's okay to list them all in one post! They are:
(1) AR(1) models don't fit when clustsize = 1 for any subject, even if some subjects have clustsize > 1.
(2) If the
2010 Apr 29
1
Generalized Estimating Equation (GEE): Why is Link = Identity?
Hi,
I'm running GEE using geepack.
I set corstr = "ar1" as below:
> m.ar <- geeglm(L ~ O + A,
+ data = firstgrouptxt, id = id,
+ family = binomial, corstr = "ar1")
> summary(m.ar)
Call:
geeglm(formula = L ~ O + A, family = binomial,
data = firstgrouptxt, id = id, corstr = "ar1")
Coefficients:
2012 Aug 29
1
spatial correlation in lme and huge correlation matrix (memory limit)
Hi,
I'm trying to introduce a (spatial) exponential correlation
structure (with range=200 and nugget.effet of 0.3) in a lme model of
this form: lme(ARBUS~YEAR, random=~1|IDSOUS).
The structure of the data is "IDSOUS" "XMIN" "YMAX" "YEAR" "ARBUS"
with 2 years of data and 5600 points for each year.
I do:
2004 Dec 29
0
GEE with own link function
Hello,
I want to fit a GEE with a user-defined link function.
For the user-defined link-function I still read
http://finzi.psych.upenn.edu/R/Rhelp01/archive/6555.html and
http://finzi.psych.upenn.edu/R/Rhelp02a/archive/25727.html.
Only for testing purposes I added a new link function
(corlogit) in make.link (as well as in binomial) with
exactly the same code as logit before using my code.
2011 Aug 29
1
defining "id" argument in geeglm
Hi all,
I am trying to do a generalized estimating equation (GEE) with the "geepack"
package and I am not 100% sure what exactly the "id" argument means. It
seems to be an important argument because results differ considerably
defining different clusters.
I have a data set of counts (poisson distribution): numbers of butterfly
species counted every month during a period of
2003 May 11
2
gee
I am trying to use gee() to calculate the robust standard errors for a
logit model. My dataset (zol) has 195019 observations; winner, racebl,
raceas, racehi are all binary variables. ID is saved as a vector of
length 195019 with alternating 0's and 1's. I get the following error
message. I also tried the same command with corstr set to "independence"
and got the same
2009 Apr 22
1
Gee with nested desgin
Dear all,
Is it possible to incorporate a nested design in GEE? I have
measurements on trees that where measured in two years. The trees are
nested in plots. Each plot contains 24 trees. The number of plots is 72.
Hence we would expect 2 * 24 * 72 = 3456 data points. A few are missing,
so we end up wih 3431 data points.
This is what I have tried until now.
#assuming independence between trees
2011 Jul 18
1
Missing values and geeglm
Dear all
I am struggling with how to deal with missing values using geeglm. I know
that geeglm only works with complete datasets, but I cannot seem to get the
na.omit function to work. For example
assuming DataMiss contains 3 columns, each of which has missing
observations, and an id column with no missing info then identifies the
clusters.
Outcome: 2 level integer
Predictor: numeric variable
2011 Mar 23
0
p and wald values intra-groups geeglm: geepack
*H*i,
I am trying to fit a GEE model with *geeglm* function. The model is the
following:
Modelo<-geeglm(sqrt ~Tra+ Mes, id=Lugar , data=datos,
family=gaussian(identity), corstr="independence")
*Tra( is a experimental treatment, 2 levels)*, *Mes* (is the month of take
data, 4 levels) and *Lugar* (is the site of study, 3 levels) are categorical
variables and *sqrt* (sqrt of Total
2008 Sep 09
2
naive variance in GEE
Hi,
The standard error from logistic regression is slightly different
from the naive SE from GEE under independence working correlation structure.
Shouldn't they be identical? Anyone has insight about this?
Thanks,
Qiong
a<-rbinom(1000,1)
b<-rbinom(1000,2,0.1)
c<-rbinom(1000,10,0.5)
summary(gee(a~b, id=c,family="binomial",corstr="independence"))$coef
2010 Jun 22
1
Generalised Estimating Equations on approx normal outcome with limited range
Dear R users
I am analysing data from a group of twins and their siblings. The measures
that we are interested in are all correlated within families, with the
correlations being stronger between twins than between non-twin siblings.
The measures are all calculated from survey answers and by definition have
limited ranges (e.g. -5 to +5), though within the range they are
approximately normally
2008 Oct 29
2
call works with gee and yags, but not geepack
I have included data at the bottom of this email. It can be read in by
highlighting the data and then using this command: dat <-
read.table("clipboard", header = TRUE,sep="\t")
I can obtain solutions with both of these:
library(gee)
fit.gee<-gee(score ~ chem + time, id=id,
family=gaussian,corstr="exchangeable",data=dat)
and
library(yags)
fit.yags <-
2011 Apr 07
1
Quasipoisson with geeglm
Dear all,
I am trying to use the GEE methodology to fit a trend for the number of butterflies observed at several sites. In total, there are 66 sites, and 19 years for which observations might be available. However, only 326 observations are available (instead of 1254). For the time being, I ignore the large number of missing values, and the fact that GEE is only valid under MCAR. When I run the
2003 Oct 24
1
gee and geepack: different results?
Hi, I downloaded both gee and geepack, and I am trying to understand the
differences between the two libraries.
I used the same data and estimated the same model, with a correlation
structure autoregressive of order 1. Surprisingly for me, I found very
different results. Coefficients are slightly different in value but
sometimes opposite in sign.
Moreover, the estimate of rho (correlation
2010 Jun 08
1
GEE: estimate of predictor with high time dependency
Hi,
I'm analyzing my data using GEE, which looks like below:
> interact <- geeglm(L ~ O + A + O:A,
+ data = data1, id = id,
+ family = binomial, corstr = "ar1")
> summary(interact)
Call:
geeglm(formula = lateral ~ ontask + attachment + ontask:attachment,
family = binomial, data = firstgroupnowalking, id = id, corstr = "ar1")
Coefficients: