Displaying 20 results from an estimated 1000 matches similar to: "mlogit is not an S4 object error"
2012 Oct 01
2
mlogit and model-based recursive partitioning
Hello:
Has anyone tried to model-based recursive partition (using mob from package
party; thanks Achim and colleagues) a data set based on a multinomial logit
model (using mlogit from package mlogit; thanks Yves)?
I attempted to do so, but there are at least two reasons why I could not.
First, in mob I am not quite sure that a model of class StatModel exists for
mlogit models. Second, as
2010 Feb 10
0
mlogit: Error reported using sample dataset
I've been working on a multinomial logit model, trying to predict
vegetation types as a function of total phosphorus. Previous responses to
my postings have pointed me to the mlogit package. I'm now trying to work
examples and my data using this package.
data("Fishing", package = "mlogit")
Fish <- mlogit.data(Fishing, varying = c(4:11), shape = "wide",
2012 Apr 19
1
mlogit learning error
I am learning five mlogits as follows
v1.model<-mlogit(v1~1|v2+v3+v4+v5, data=mlogit.v1.data, reflevel="1")
v2.model<-mlogit(v2~1|v1+v3+v4+v5, data=mlogit.v2.data, reflevel="1")
v3.model<-mlogit(v3~1|v1+v2+v4+v5, data=mlogit.v3.data, reflevel="1")
v4.model<-mlogit(v4~1|v1+v2+v3+v5, data=mlogit.v4.data, reflevel="1")
2010 Mar 07
3
mlogit
I am trying to follow this example for multinomial logistic regression
http://www.ats.ucla.edu/stat/r/dae/mlogit.htm
However, I cannot get it to work properly.
This is the output I get, and I get an error when I try to use the mlogit
function. Any ideas as to why this happens?
> mydata <- read.csv(url("http://www.ats.ucla.edu/stat/r/dae/mlogit.csv"))
> attach(mydata)
>
2010 Jun 03
1
mlogit and weights
Hello,
I can't figure out why using and not using weights in mlogit yields
identical results. My motivation is for the case when an
"observation" or "individual" represents a number of individuals. For
example,
library(mlogit)
library(AER)
data("TravelMode", package = "AER")
TM <- mlogit.data(TravelMode, choice = "choice", shape =
2011 Mar 13
2
Problem implementing 'waldtest' when using 'mlogit' package
Hi all,
I have been working through the examples in one of the vignettes associated with the 'mlogit' package, 'Kenneth Train's exercises using the mlogit package for R.' In spite of using the code unchanged, as well as the data used in the examples, I have been unable to run a Wald test to test two models.
Specifically, I have run the following command, where mc and mi2 are
2010 Feb 14
1
mlogit function cut off formular
I'm trying to fit a multinominal logistic model using package mlogit. I have
15 independent variables. The code looks like this:
m<-mlogit(score~0|f1+f2+f3+f4+f5+f6+f7+f8+f9+f10+f11+f12+f13+f14+f15, data,
reflevel="1")
And it gives the following error message:
Error in parse(text = x) :
unexpected ')' in "score ~ 0 + alt:(f1 + f2 + f3 + f4 + f5 + f6 + f7 + f8
+ f9
2016 Apr 01
1
reduced set of alternatives in package mlogit
Hi Jose,
You're referring to your response variable when you're saying it's missing
some of the choices, right? Are your response choices ever known or do they
just occur with extremely low frequency? Either way, I think the mlogit
package would be inappropriate for you. I imagine you would have much
better luck using MCMCpack or writing a model with rstan or something
Bayesian.
2011 Jun 20
1
Stepwise model comparisons for mlogit
I am trying to perform a backwards stepwise variable selection with an mlogit model. The usual functions, step(), drop1(), and dropterm() do not work for mlogit models.
Update() works but I am only able to use it manually, i.e. I have to type in each variable I wish to remove by hand on a separate line.
My goal is to write some code that will systematically remove a certain set of variables
2011 Jun 22
1
mlogit model that contains both individual-specific parameters and universal parameters
Hello,
I am pretty new to mlogit, and still trying to figure out what models to use.I have a data set of N individuals, each of which faces I alternatives. The utility function of individual n, for choice i is:
u(i,n) = alpha(i) * x1(i,n) + beta * x2(i,n)
where alpha(i) is the individual specific parameter, and beta is shared among all individuals. I don't really know how to set this up
2011 Feb 28
4
mlogit.data
I am trying to estimate multinomial logit models off of a .csv table in
IDCASE IDALT format where I have
ROWS HHID PERID CASE ALTNUM NUMALTS CHOSEN IVTT OVTT TVTT COST DIST
WKZONE HMZONE RSPOPDEN RSEMPDEN WKPOPDEN....
1 1 2 1 1 1 5 1 13.38 2.00 15.38 70.63 7.69
664 726 15.52 9.96 37.26
2 2 2 1 1 2 5 0 18.38 2.00
2017 Jul 27
2
Error in `[[<-.data.frame`(`*tmp*`, alt.name, value = integer(0)) with mlogit
Hi,
Please help about the error I am getting after the h1.dat<- line :
this line worked with much more independant variables and bigger data.
This time I want to work with just 2 variables cteD & cteTh.
What is wrong ?
> setwd("C:/Rstudio/Trot")
> library(mlogit)
> horse1.data<-read.csv("cte2.csv")
>
2016 Apr 01
0
reduced set of alternatives in package mlogit
-----Original Message-----
From: Bert Gunter [mailto:bgunter.4567 at gmail.com]
Sent: quinta-feira, 31 de mar?o de 2016 20:22
To: Jose Marcos Ferraro <jose.ferraro at LOGITeng.com>
Cc: r-help at r-project.org
Subject: Re: [R] reduced set of alternatives in package mlogit
code? example data? We can only guess based on your vague post.
"PLEASE do read the posting guide
2010 Aug 13
1
mlogit error
Hi,
I'm trying to fit a multinomial logistic regression to my data which
consists of 5 discrete variables (scales 1:10) and 1000 observations.
I get the following error:
Error in `row.names<-.data.frame`(`*tmp*`, value = c("NA.NA", "NA.NA", :
duplicate 'row.names' are not allowed
In addition: Warning message:
non-unique value when setting
2017 Jul 27
0
Error in `[[<-.data.frame`(`*tmp*`, alt.name, value = integer(0)) with mlogit
Looks like you need to pay attention to how you read in your data. In general, you should always execute one statement at a time until you know your script is working. All the errors after the first one are unhelpful to you or us.
If you actually pay attention to what is in your horse.data data frame after you have read it in, the columns did not get separated out. The "csv" in in
2012 Jul 30
1
length of variable in mlogit
Dear all,
does anybody have experience with building logits in Mlogit?
I want to test the use of a couple of alternative specific variables with a
generic regression coefficient. However, one of them simply does not work. R
says the length of this variable is different.
Problem: If I check the length of this special variable, I get a value,
which also other variables have ? and with those, the
2017 Jul 27
0
Error in `[[<-.data.frame`(`*tmp*`, alt.name, value = integer(0)) with mlogit
Hello,
Inline.
Em 27-07-2017 20:36, peter dalgaard escreveu:
>
>> On 27 Jul 2017, at 18:03 , Jeff Newmiller <jdnewmil at dcn.davis.ca.us> wrote:
>>
>> Looks like you need to pay attention to how you read in your data. In general, you should always execute one statement at a time until you know your script is working. All the errors after the first one are unhelpful
2011 Oct 17
1
Creation of mlogit models from text file
Hello all,
Has anyone tried to create an R mlogit model object from a text file? If yes, what would be the best way to do it? I already have models that have been estimated using other software and would like to use R to help me make predictions for new data.
Thank you!
Bhargava Sana
[[alternative HTML version deleted]]
2017 Jul 27
3
Error in `[[<-.data.frame`(`*tmp*`, alt.name, value = integer(0)) with mlogit
> On 27 Jul 2017, at 18:03 , Jeff Newmiller <jdnewmil at dcn.davis.ca.us> wrote:
>
> Looks like you need to pay attention to how you read in your data. In general, you should always execute one statement at a time until you know your script is working. All the errors after the first one are unhelpful to you or us.
>
> If you actually pay attention to what is in your
2010 Feb 05
2
glm models with more than one response
Hi everyone,
I am trying to construct a glm and am running into a couple of questions.
The data set I am using consists of 6 categories for the response and 6
independent predictors representing nutrient concentrations at sample point
locations. Ultimately I'd like to use the probabilities for each response
category in a simulation model such that these probabilities are used to
define a