Displaying 20 results from an estimated 5000 matches similar to: "Subject: Re ZINB by Newton Raphson??"
2010 Jun 21
1
ZINB by Newton Raphson??
Dear all..
I have a respon variable y. Predictor variable are x1, x2, x3, x4, x5
(1) What is the syntax to get paramater estimation of ZINB Model by Newton Raphson (not BFGS)
(2) What syntax to plot probability of observed & predicted of ZINB
Thx.
Regards
Krist.
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2010 Jun 21
0
Re ZINB by Newton Raphson??
Dear Mr.Zeileis & all.
(1) Thx for your reply. Yes, I am talk about the function zeroinfl() from the package "pscl". I want to use Newton Raphson to get parameter estimation ZINB, so I try this:
----------------------------------------------------------------------------------------------------------------------------------
> zinb <- zeroinfl(y
2011 Aug 10
3
Need help on Newton-Raphson optimization
Hi,
Is there available package on the optimization function using
Newton-Raphson method (iterative quadratic approximation)? I have been using
the 'optim' function in R and found it really unstable (it depends heavily
on the initial values and functional forms). If I have to code it by myself,
can I get some advice on how to start (any good reference or sample code)? I
really
2002 Apr 24
1
Newton-Raphson
Hi,
Is there a routine available in R for the Newton-Raphson method for
simulataneous equations in several unknowns?
Thanks
Robert
--
Robert J. Chandran
Department of Botany
3506 Miller Plant Sciences Building
University of Georgia
Athens, GA 30602
Phone: (706)-583-0943
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2004 Aug 26
1
gls: Newton-Raphson or EM?
Hello,
Does anyone know whether the gls function in the nlme library uses the Newton-Raphson or EM algorithm to find the restricted log-likelihood or maximum log-likelihood estimates?
Brendan Klick
bklick@jhsph.edu
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2004 Nov 19
2
glm with Newton Raphson
Hi,
Does anyone know if there is a function to find the maximum likelihood
estimates of glm using Newton Raphson metodology instead of using IWLS.
Thanks
Valeska Andreozzi
--------------------------------------------------------
Department of Epidemiology and Quantitative Methods
FIOCRUZ - National School of Public Health
Tel: (55) 21 2598 2872
Rio de Janeiro - Brazil
2005 Nov 16
2
Newton-Raphson
Dear all,
I want to solve a score function by using Newton-Raphson algorithm. Is there such a fucntion in R? I know there's one called optim, but it seems only doing minimizing or maximizing.
Thanks,
Jimmy
2011 Jun 02
1
newton raphson
Hi
I would like to use the newton raphson method to find the root if the
equation x^3-0.165*x+0.0003993 without using any readliy available program
in r but instead by writing my own code and loop. the problem is that i
really cant understand how to write the loop so that it keeps using the last
calcualted values. if anyone could help me or give me some tips i would
deeply appriciate it
thanks
2009 Mar 16
1
Uniroot and Newton-Raphson Anomaly
I have the following function for which I need to find the root of a:
f <- function(R,a,c,q) sum((1 - (1-R)^a)^(1/a)) - c * q
To give context for the problem, this is a psychometric issue where R is
a vector denoting the percentage of students scoring correct on test
item i in class j, c is the proportion correct on the test by student k,
and q is the number of items on the test in total.
I
using optimize with two unknowns, e.g. to parameterize a distribution with given confidence interval
2010 Oct 15
2
using optimize with two unknowns, e.g. to parameterize a distribution with given confidence interval
Hi,
I would like to write a function that finds parameters of a log-normal
distribution with a 1-alpha CI of (x_lcl, x_ucl):
However, I don't know how to optimize for the two unknown parameters.
Here is my unsuccessful attempt to find a lognormal distribution with
a 90%CI of 1,20:
prior <- function(x_lcl, x_ucl, alpha, mean, var) {
a <- (plnorm(x_lcl, mean, var) - (alpha/2))^2
b
2011 Aug 13
3
optimization problems
Dear R users
I am trying to use OPTIMX(OPTIM) for nonlinear optimization.
There is no error in my code but the results are so weird (see below).
When I ran via OPTIM, the results are that
Initial values are that theta0 = 0.6 1.6 0.6 1.6 0.7. (In fact true vales
are 0.5,1.0,0.8,1.2, 0.6.)
--------------------------------------------------------------------------------------------
>
2010 Sep 17
0
question on OPTIMX with installing and using
Dear R users
I have tried to install the optimx but met problems.
I have gone to the website you suggested:
https://r-forge.r-project.org/R/?group_id=395
and tried to install it with the following method:
install.packages("optimx", repos="http://R-Forge.R-project.org")
I have received the following information:
package 'numDeriv' successfully unpacked and MD5
2010 Nov 16
4
DBLEPR?
Ravi Varadhan and I have been looking at UCMINF to try to identify why it gives occasional
(but not reproducible) errors, seemingly on Windows only. There is some suspicion that its
use of DBLEPR for finessing the Fortran WRITE() statements may be to blame. While I can
find DBLEPR in Venables and Ripley, it doesn't get much mention after about 2000 in the
archives, though it is in the R FAQ
2010 Nov 16
4
DBLEPR?
Ravi Varadhan and I have been looking at UCMINF to try to identify why it gives occasional
(but not reproducible) errors, seemingly on Windows only. There is some suspicion that its
use of DBLEPR for finessing the Fortran WRITE() statements may be to blame. While I can
find DBLEPR in Venables and Ripley, it doesn't get much mention after about 2000 in the
archives, though it is in the R FAQ
2013 Oct 09
1
Version of L-BFGS-B used in optim etc
Hi.
I just noticed the paper by Morales and Nocedal
Remark on "Algorithm 778: L-BFGS-B: Fortran Subroutines for Large-Scale
Bound Constrained Optimization". TOMS 2011; 38(1): 7
http://www.ece.northwestern.edu/~morales/PSfiles/acm-remark.pdf
which describes a couple of improvements (speed and accuracy) to the
original Netlib code which AFAICT is that still used by optim()
via f2c.
2011 Aug 29
3
gradient function in OPTIMX
Dear R users
When I use OPTIM with BFGS, I've got a significant result without an error
message. However, when I use OPTIMX with BFGS( or spg), I've got the
following an error message.
----------------------------------------------------------------------------------------------------
> optimx(par=theta0, fn=obj.fy, gr=gr.fy, method="BFGS",
>
2010 Apr 12
1
zerinfl() vs. Stata's zinb
Hello,
I am working with zero inflated models for a current project and I am
getting wildly different results from R's zeroinfl(y ~ x, dist="negbin")
command and Stata's zinb command. Does anyone know why this may be? I find
it odd considering that zeroinfl(y ~ x, dist="poisson") gives identical to
output to Stata's zip function.
Thanks,
--david
[[alternative
2011 Jul 12
1
LOESS function Newton optimization
I have a question about running an optimization function on an existing LOESS
function defined in R. I have a very large dataset (1 million observations)
and have run a LOESS regression. Now, I want to run a Newton-Raphson
optimization to determine the point at which the slope change is the
greatest.
I am relatively new to R and have tried several permutations of the maxNR
and nlm functions with
2023 Aug 13
4
Noisy objective functions
While working on 'random walk' applications, I got interested in
optimizing noisy objective functions. As an (artificial) example, the
following is the Rosenbrock function, where Gaussian noise of standard
deviation `sd = 0.01` is added to the function value.
fn <- function(x)
(1+rnorm(1, sd=0.01)) * adagio::fnRosenbrock(x)
To smooth out the noise, define another
2012 Dec 10
1
Marginal effects of ZINB models
Dear all,
I am modeling the incidence of recreational anglers along a stretch of
coastline, and with a vary large proportion of zeros (>80%) have chosen to
use a zero inflated negative binomial (ZINB) distribution. I am using the
same variables for both parts of the model, can anyone help me with R code
to compute overall marginal effects of each variable?
My model is specified as follows: