Displaying 20 results from an estimated 100 matches similar to: "cforest - keep.forest = false option?"
2011 Jul 20
0
cforest - keep.forest = false option? (fwd)
> ---------- Forwarded message ----------
> Date: Mon, 18 Jul 2011 10:17:00 -0700 (PDT)
> From: KHOFF <kuphoff at gmail.com>
> To: r-help at r-project.org
> Subject: [R] cforest - keep.forest = false option?
>
> Hi,
>
> I'm very new to R. I am most interested in the variable importance
> measures
> that result from randomForest, but many of my predictors
2010 Jun 10
2
Cforest and Random Forest memory use
Hi all,
I'm having great trouble working with the Cforest (from the party package)
and Random forest functions. Large data set seem to create very large model
objects which means I cannot work with the number of observations I need to,
despite running on a large 8GB 64-bit box. I would like the object to only
hold the trees themselves as I intend to export them out of R. Is there
anyway,
2004 Nov 11
1
Setting plots margin
I have a problem with plot for summary
s<-summary(response~ x1+x2+x3+x4+x5+x6+x7+
+ x8+ x9+x10)
> plot(s)
Error in plot.new() : Figure margins too large
I tried to set the margins to null with par(mai=c(0,0,0,0))
but keep getting the same error message....
What is wrong?
Thanks
Anne
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2013 Feb 14
1
party::cforest - predict?
What is the function call interface for predict in the package party for
cforest? I am looking at the documentation (the vignette) and ?cforest and
from the examples I see that one can call the function predict on a cforest
classifier. The method predict seems to be a method of the class
RandomForest objects of which are returned by cforest.
---------------------------
> cf.model =
2012 Apr 29
1
CForest Error Logical Subscript Too Long
Hi,
This is my code (my data is attached):
library(languageR)
library(rms)
library(party)
OLDDATA <- read.csv("/Users/Abigail/Documents/OldData250412.csv")
OLDDATA$YD <- factor(OLDDATA$YD, label=c("Yes", "No"))?
OLDDATA$ND <- factor(OLDDATA$ND, label=c("Yes", "No"))?
attach(OLDDATA)
defaults <- cbind(YD, ND)
set.seed(47)
data.controls
2012 Sep 13
0
cforest and cforest_unbiased for testing and training datasets
Greetings,
I am using cforest to predict age of fishes using several variables; as it
is rather difficult to age fishes I would like to show that a small subset
of fish (training dataset) can be aged, then using RF analysis, age can
accurately be predicted to the remaining individuals not in the subsample.
In cforest_unbiased the samples are drawn without replacement and so it
creates a default
2011 Feb 22
0
cforest() and missing values (party package)
Dear mailing list,
I am using the cforest() method from the party package to train a
randomForest with ten input parameters which sometimes contain "NA"s.
The predicted variable is a binary decision. Building the tree works
fine without warnings or error messages, but when using the predict()
statement for validation, I run in an error:
forest <- cforest(V31 ~ V1+V2+V3,
2010 Jul 27
1
Cforest mincriterion
Hi,
Could anyone help me understand how the mincriterion threshold works in
ctree and cforest of the party package? I've seen examples which state that
to satisfy the p < 0.05 condition before splitting I should use mincriterion
= 0.95 while the documentation suggests I should use mincriterion =
qnorm(0.95) which would obviously feed the function a different value.
Thanks in advance,
2011 Oct 06
0
Fwd: Re: Party extract BinaryTree from cforest?
> ---------- Forwarded message ----------
> Date: Wed, 5 Oct 2011 21:09:41 +0000
> From: Chris <christopher.a.hane at gmail.com>
> To: r-help at stat.math.ethz.ch
> Subject: Re: [R] Party extract BinaryTree from cforest?
>
> I found an internal workaround to this to support printing and plot type
> simple,
>
> tt<-party:::prettytree(cf at ensemble[[1]],
2012 Oct 11
0
Error with cForest
All --
I have been trying to work with the 'Party' package using R v2.15.1 and have cobbled together a (somewhat) functioning code from examples on the web. I need to run a series of unbiased, conditional, cForest tests on several subsets of data which I have made into a loop. The results ideally will be saved to an output file in matrix form. The two questions regarding the script in
2017 Nov 18
0
Using cforest on a hierarchically structured dataset
Hi,
I am facing a hierarchically structured dataset, and I am not sure of
the right way to analyses it with cforest, if their is one.
- - BACKGROUND & PROBLEM
We are analyzing the behavior of some social birds facing different
temperature conditions.
The behaviors of the birds were recorder during many sessions of 2 hours.
Conditional RF (cforest) are quite useful for this analysis
2010 Mar 16
0
Ensembles in cforest
Dear List,
I'm trying to find a way to extract the individual conditional inference
trees from cforest ( a modelling function in the party package) in a
manner analogous to
getTree in randomForest and I'm struggling. I can see that the
information is held within the ensemble list, but haven't been able to
work out how this sequence
of nested lists is structured or if any of the items
2007 Dec 31
0
proximity on prediction in cforest
Hello there,
How to get the proximity matrix of new data in party package? Thanks.
Joseph
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2007 Dec 08
0
help for segmented package
Hi,
I am trying to find m breakpoints of a linear regression model. I
used the segmented package. It works fine for small number of
predicators and breakpoints.(3 r.v. 3 points). However, my model has
14 variables it even would not work even for just one breakpoints!.
The error message is always estimated breakpoints are out of range.
Since my problem is time related problem. So I
2012 Aug 23
0
party package: ctree - survival data - extracting statistics/predictors
Dear R users,
I am trying to apply the analysis processed in a paper, on the data I'm working with.
The data is: 80 patients for which I have survival data (time - days, and event - binary), and microarray expression data for 200 genes (predictor continuous variables).
My data matrix "data.test" has ncol: 202 and nrow: 80.
What I want to do is:
- run recursive partitioning on
2011 Sep 03
2
ROCR package question for evaluating two regression models
Hello All,
I have used logistic regression glm in R and I am evaluating two models both learned with glm but with different predictors. model1 <- glm (Y ~ x4+ x5+ x6+ x7, data = dat, family = binomial(link=logit))model2 <- glm (Y~ x1 + x2 +x3 , data = dat, family = binomial(link=logit))
and I would like to compare these two models based on the prediction that I get from each model:
pred1 =
2011 Jun 16
1
Fwd: varimp_in_party_package
>
> Hello everyone,
>
> I use the following command lines to get important variable from training
> dataset.
>
>
> data.controls <- cforest_unbiased(ntree=500, mtry=3)
> data.cforest <- cforest(V1~.,data=rawinput,controls=data.controls)
> data.cforest.varimp <- varimp(data.cforest, conditional = TRUE)
>
> I got error: "Error in
2012 Dec 11
2
VarimpAUC in Party Package
Greetings! I'm trying to use function varimpAUC in the party package (party_1.0-3 released September 26th of this year). Unfortunately, I get the following error message:
> data.cforest.varimp <- varimpAUC(data.cforest, conditional = TRUE)
Error: could not find function "varimpAUC"
Was this function NOT included in the Windows binary I downloaded and installed? Could someone
2011 Oct 14
1
Party package: varimp(..., conditional=TRUE) error: term 1 would require 9e+12 columns
I would like to build a forest of regression trees to see how well some
covariates predict a response variable and to examine the importance of the
covariates. I have a small number of covariates (8) and large number of
records (27368). The response and all of the covariates are continuous
variables.
A cursory examination of the covariates does not suggest they are correlated
in a simple fashion
2011 Oct 17
0
Party package: varimp(..., conditional=TRUE) error: term 1 would require 9e+12 columns (fwd)
>
> I would like to build a forest of regression trees to see how well some
> covariates predict a response variable and to examine the importance of
> the
> covariates. I have a small number of covariates (8) and large number of
> records (27368). The response and all of the covariates are continuous
> variables.
>
> A cursory examination of the covariates does not