Displaying 20 results from an estimated 9000 matches similar to: "useR! Thanks"
2007 Jun 20
4
finding roots of multivariate equation
Hello,
I want to find the roots of an equation in two variables. I am aware of the
uniroot function, which can do this for a function with a single variable (as I
understand it...) but cannot find a function that does this for an equation
with more than one variable. I am looking for something implementing similar
to a Newton-Raphson algorithm.
Thanks.
--
Bill Shipley
North American Editor for
2006 Nov 29
2
How to solve differential equations with a delay (time lag)?
Hi,
I would like to solve a system of coupled ordinary differential equations,
where there is a delay (time lag) term. I would like to use the "lsoda"
function "odesolve" package. However, I am not sure how to specify the
delay term using the syntax allowed by odesolve.
Here is an example of the kind of problem that I am trying to solve:
> library(odesolve)
2009 Oct 15
4
Generating a stochastic matrix with a specified second dominant eigenvalue
Hi,
Given a positive integer N, and a real number \lambda such that 0 < \lambda
< 1, I would like to generate an N by N stochastic matrix (a matrix with
all the rows summing to 1), such that it has the second largest eigenvalue
equal to \lambda (Note: the dominant eigenvalue of a stochastic matrix is
1).
I don't care what the other eigenvalues are. The second eigenvalue is
2007 Feb 01
3
Need help writing a faster code
Hi,
I apologize for this repeat posting, which I first posted yesterday. I would
appreciate any hints on solving this problem:
I have two matrices A (m x 2) and B (n x 2), where m and n are large
integers (on the order of 10^4). I am looking for an efficient way to
create another matrix, W (m x n), which can be defined as follows:
for (i in 1:m){
for (j in 1:n) {
W[i,j] <-
2008 Apr 09
4
Skipping specified rows in scan or read.table
Hi,
I have a data file, certain lines of which are character fields. I would
like to skip these rows, and read the data file as a numeric data frame. I
know that I can skip lines at the beginning with read.table and scan, but is
there a way to skip a specified sequence of lines (e.g., 1, 2, 10, 11, 19,
20, 28, 29, etc.) ?
If I read the entire data file, and then delete the character
2006 Sep 29
2
X-axis labels in histograms drawn by the "truehist" function
Hi,
I have a simple problem that I would appreciate getting some tips. I am
using the "truehist" function within an "apply" call to plot multiple
histograms. I can't figure out how to get truehist to use the column names
of the matrix as the labels for the x-axis of the histograms.
Here is a simple example:
X <- matrix(runif(4000),ncol=4)
colnames(X)
2008 Mar 12
3
Types of quadrature
Dear R-users
I would like to integrate something like \int_k^\infty (1 - F(x)) dx, where F(.) is a cumulative distribution function. As mentioned in the "integrate" help-page: integrate(dnorm,0,20000) ## fails on many systems. This does not happen for an adaptive Simpson or Lobatto quadrature (cf. Matlab). Even though I am hardly familiar with numerical integration the implementation
2009 Apr 22
3
Help using spg optimization in BB package
i'm trying to use the BB package to minimize the sum of the squared
deviations for 2 vectors. The only thing am having trouble with is defining
the project constraint. I got the upper and lower bounds to work but i am
not sure how to create a constraint that the sum of x must be 1. Any help
would be greatly appreciated.
--
View this message in context:
2008 Mar 13
3
Use of ellipses ... in argument list of optim(), integrate(), etc.
Hi,
I have noticed that there is a change in the use of ellipses or . in R
versions 2.6.1 and later. In versions 2.5.1 and earlier, the . were always
at the end of the argument list, but in 2.6.1 they are placed after the main
arguments and before method control arguments. This results in the user
having to specify the exact (complete) names of the control arguments, i.e.
partial matching is
2006 Oct 27
2
Multivariate regression
Hi,
Suppose I have a multivariate response Y (n x k) obtained at a set of
predictors X (n x p). I would like to perform a linear regression taking
into consideration the covariance structure of Y within each unit - this
would be represented by a specified matrix V (k x k), assumed to be the same
across units. How do I use "lm" to do this?
One approach that I was thinking of
2006 Oct 27
3
R & gams
At office I have been introduced by another company to new, complex energy
forecasting models using gams as the basic software.
I have been told by the company offering the models that gams is specialised
in dealing with huge, hevy-weight linear and non-linear modelling (see an
example in http://www.gams.com/modtype/index.htm) and they say it is almost
the only option for doing it.
I would
2008 Aug 27
5
Integrate a 1-variable function with 1 parameter (Jose L. Romero)
Hey fellas:
I would like to integrate the following function:
integrand <- function (x,t) {
exp(-2*t)*(2*t)^x/(10*factorial(x))
}
with respect to the t variable, from 0 to 10.
The variable x here works as a parameter: I would like to integrate the said function for each value of x in 0,1,..,44.
I have tried Vectorize to no avail.
Thanks in advance,
jose romero
2009 Jul 02
2
constrained optimisation in R.
i want to estimate parameters with maximum likelihood method with contraints (contant numbers).
for example
sum(Ai)=0 and sum(Bi)=0
i have done it without the constraints but i realised that i have to use the contraints.
Without constraints(just a part-not complete):
skellamreg_LL=function(parameters,z,design)
{
n=length(z);
mu=parameters[1];
H=parameters[2];
Apar=parameters[3:10];
2008 Apr 09
3
LSODA not accurate when RK4 is; what's going on?
I'm solving the differential equation dy/dx = xy-1 with y(0) = sqrt(pi/2).
This can be used in computing the tail of the normal distribution.
(The actual solution is y(x) = exp(x^2/2) * Integral_x_inf {exp(-t^2/2) dt}
= Integral_0_inf {exp (-xt - t^2/2) dt}. For large x, y ~ 1/x, starting
around x~2.)
I'm testing both lsoda and rk4 from the package odesolve.
rk4 is accurate using step
2008 Apr 02
3
Fwd: Re: Nonlinear equation
> > >From: robert-mcfadden w o2.pl
> > >Date: 2008/04/02 Wed AM 09:58:28 CDT
> > >To: r-help w r-project.org
> > >Subject: [R] Nonlinear equation
> >
> > hi: you need to give an example and details or
> > you won't get much response, if any.
Equation e.g. (A, B are known constants):
3log(gamma(x))-log(gamma(x)*gamma(2x))+(x-1)*A+B=0
2009 Feb 19
2
Source code for nlm()
Hi,
Where can I find the source code for nlm()? I dowloaded the R2.8.1.tar.gz
file and looked at all the .c and .f files, but couldn't find either nlm.c
or nlm.f
There is an nlm.r file, but that is not useful.
Thanks for any help,
Ravi.
----------------------------------------------------------------------------
-------
Ravi Varadhan, Ph.D.
Assistant Professor, The Center on Aging
2006 Jun 28
3
lme convergence
Dear R-Users,
Is it possible to get the covariance matrix from an lme model that did not converge ?
I am doing a simulation which entails fitting linear mixed models, using a "for loop".
Within each loop, i generate a new data set and analyze it using a mixed model. The loop stops When the "lme function" does not converge for a simulated dataset. I want to
2008 Mar 07
3
Numerical Integration in 1D
Dear UseRs,
I'm curious about the derivative of n!.
We know that Gamma(n+1)=n! So when on takes the derivative of
Gamma(n+1) we get Int(ln(x)*exp(-x)*x^n,x=0..Inf).
I've tried code like
> integrand<-function(x) {log(x)*exp(x)*x^n}
> integrate(integrand,lower=0,upper=Inf)
It seems that R doesn't like to integrate for any n, and I was
wondering if anyone knew a way around
2006 Nov 14
2
Matrix-vector multiplication without loops
Hi,
I am trying to do the following computation:
p <- rep(0, n)
coef <- runif(K+1)
U <- matrix(runif(n*(2*K+1)), n, 2*K+1)
for (i in 0:K){
for (j in 0:K){
p <- p + coef[i+1]* coef[j+1] * U[,i+j+1]
} }
I would appreciate any suggestions on how to perform this computation
efficiently without the "for" loops?
Thank
2008 Apr 23
1
BB - a new package for solving nonlinear system of equations and for optimization with simple constraints
Hi,
We (Paul Gilbert and I) have just released a new R package on CRAN called
"BB" (stands for Barzilai-Borwein) that provides functionality for solving
large-scale (and small-scale) nonlinear system of equations. Until now, R
didn't have any functionality for solving nonlinear systems. We hope that
this package fills that need.
We also have an implementation of the