Displaying 20 results from an estimated 1000 matches similar to: "deleting/removing previous warning message in loop"
2006 Apr 11
1
gaussian family change suggestion
Hi,
Currently the `gaussian' family's initialization code signals an error if
any response data are zero or negative and a log link is used. Given that
zero or negative response data are perfectly legitimate under the GLM
fitted using `gaussian("log")', this seems a bit unsatisfactory. Might
it be worth changing it?
The current offending code from `gaussian' is:
2006 Nov 12
2
segfault 'memory not mapped', dual core problem?
I encountered a segfault running glm() and wonder if it could have
something to do with the way memory is handled in a dual core system
(which I just set up). I'm running R-base-2.4.0-1, installed from the
SuSE 10.1 x86_64 rpm (obtained from CRAN). (My processor is an AMD
Athlon 64 x2 4800+).
The error and traceback are
*** caught segfault ***
address 0x8001326f2b, cause 'memory not
2002 Feb 27
1
Bug in glm.fit? (PR#1331)
G'day all,
I had a look at the GLM code of R (1.4.1) and I believe that there are
problems with the function "glm.fit" that may bite in rare
circumstances. Note, I have no data set with which I ran into
trouble. This report is solely based on having a look at the code.
Below I append a listing of the glm.fit function as produced by my
system. I have added line numbers so that I
2009 Dec 17
2
segfault in glm.fit (PR#14154)
Bug summary:
glm() causes a segfault if the argument 'data'
is a data frame with more than 16384 rows.
Bug demonstration:
-------input ---------------
N <- 16400
df <- data.frame(x=runif(N, min=1,max=2),y=rpois(N, 2))
glm(y ~ x, family=poisson, data=df)
------ output ---------------
*** caught segfault ***
address (nil),
2010 Jul 22
1
GLM Starting Values
Hello,
Suppose one is interested in fitting a GLM with a log link to binomial data. How does R choose starting values for the estimation procedure? Assuming I don't supply them.
Thanks,
Tyler
2008 Oct 19
1
MCMClogit: using weights
Hi everyone: I am just wondering how can I use weights with MCMClogit function (in MCMCpack package). For example, in case of glm function as given below, there is weights option in the arguments. Aparently there is no option of using weights in MCMClogit.
glm(formula, family = gaussian, data, weights, subset,
na.action, start = NULL, etastart, mustart,
offset, control =
2003 Jan 21
1
Starting values for glm fits
I'm fitting some small data sets using a binomial glm with complementary
log-log link. In some ill-conditioned cases I am getting convergence
failures. I know how to adjust maxit and epsilon, but that doesn't seem
to help.
In fact I know some very good starting values for my fits, but I can't
see how to get them in to glm(). How may I do this?
--
Dr Murray Jorgensen
2010 Mar 08
1
error_hier.part
Hi everyone,
BEGINNER question:
I get the error below when running hier.part. Probably i´m doing
something wrong.
Error in glm.fit(x = X, y = Y, weights = weights, start = start, etastart =
etastart, :
object 'fit' not found
In addition: Warning messages:
1: In glm.fit(x = X, y = Y, weights = weights, start = start, etastart =
etastart, :
no observations informative at iteration 1
2008 May 12
4
Several questions about MCMClogit
Hello everybody,
I'm new to MCMClogit. I'm trying to use MCMClogit to fit a logistic
regression model but I got some warnings I can't understand.
My input data X is 32(tissue sample)*20(genes) matrix, each element in this
matrix corresponds to the expression value of one particular gene in one of
32 samples. And the Y presents the corresponding classes (0-non cancer,
1-cancer)
2005 Aug 05
1
question regarding logit regression using glm
I got the following warning messages when I did a
binomial logit regression using glm():
Warning messages:
1: Algorithm did not converge in: glm.fit(x = X, y =
Y, weights = weights, start = start, etastart =
etastart,
2: fitted probabilities numerically 0 or 1 occurred
in: glm.fit(x = X, y = Y, weights = weights, start =
start, etastart = etastart,
Can some one share your thoughts on how to
2010 Apr 26
2
Unexpected warnings from summary() on mcmc.list objects
I am trying to get summary statistics from WinBUGS/JAGS output in the
form of mcmc.list objects, using the summary() function. However, I
get odd warning messages:
Warning messages:
1: In glm.fit(x = X, y = Y, weights = weights, start = start, etastart
= etastart, :
algorithm did not converge
2: In glm.fit(x = X, y = Y, weights = weights, start = start, etastart
= etastart, :
algorithm did
2006 Aug 31
3
what's wrong with my simulation programs on logistic regression
Dear friends,
I'm doing a simulation on logistic regression model, but the programs can't
work well,please help me to correct it and give some suggestions.
My programs:
data<-matrix(rnorm(400),ncol=8) #sample size is 50
data<-data.frame(data)
names(data)<-c(paste("x",1:8,sep="")) #8 independent variables,x1-x8;
#logistic regression model is
2006 Jan 15
1
problems with glm
Dear R users,
I am having some problems with glm. The first is an error message "subscript out of bounds". The second is the fact that reasonable starting values are not accepted by the function.
To be more specific, here is an example:
> success <- c(13,12,11,14,14,11,13,11,12)
> failure <- c(0,0,0,0,0,0,0,2,2)
> predictor <- c(0,80*5^(0:7))
>
2006 Jan 31
1
warnings in glm (logistic regression)
Hello R users
I ran more than 100 logistic regression analyses. Some of the analyses gave
me this kind warning below.
###########################################################
Warning messages:
1: algorithm did not converge in: glm.fit(x = X, y = Y, weights = weights,
start = start, etastart = etastart, ...
2: fitted probabilities numerically 0 or 1 occurred in: glm.fit(x = X, y =
Y,
2005 Jun 16
1
logistic regression - using polys and products of features
Hi
I can get all my features by doing this:
> logistic.model = glm(similarity ~ ., family=binomial, data =
cData[3001:3800,])
I can get the product of all my features by this:
logistic.model = glm(similarity ~ . ^ 2, family=binomial, data =
cData[3001:3800,])
I don't seem to be able to get polys by doing this:
logistic.model = glm(similarity ~ poly(.,2), family=binomial, data
2005 Jan 28
3
GLM fitting
DeaR R-useRs,
I'm trying to fit a logist model with these data:
> dati
y x
1 1 37
2 1 35
3 1 33
4 1 40
5 1 45
6 1 41
7 1 42
8 0 20
9 0 21
10 0 25
11 0 27
12 0 29
13 0 18
I use glm(), having this output:
> g<-glm(y~x,family=binomial,data=dati)
Warning messages:
1: Algorithm did not converge in: glm.fit(x = X, y =
Y, weights = weights, start = start, etastart =
2005 Jul 02
2
Is it possible to use glm() with 30 observations?
I have a very simple problem. When using glm to fit
binary logistic regression model, sometimes I receive
the following warning:
Warning messages:
1: fitted probabilities numerically 0 or 1 occurred
in: glm.fit(x = X, y = Y, weights = weights, start =
start, etastart = etastart,
2: fitted probabilities numerically 0 or 1 occurred
in: glm.fit(x = X, y = Y, weights = weights, start =
start,
2008 Dec 24
1
Viewing code
How do you view the code for a built-in R command (i.e., if I want to see
what R is doing when I run a glm() statement)?
Regards,
Stephen
[[alternative HTML version deleted]]
2005 Jul 27
2
GAM weights
Dear all,
we are trying to model some data from rare plants so we always have less than 50
1x1 km presences, and the total area is about 550.000 square km. So we have a
real problem, when we perform a GAM, if we consider only the same amount of
absences than presences.
We have thought to use a greater number of absences but in this case we shoud
downweight them.
Does anybody know how to use the
2005 Oct 14
2
subset selection for glm
Hello:
Are there any libraries that will do a subset selection for glm's? I looked
through leaps, but seems like it is specifically for linear regressions.
Thank you.
-Dhiren