Displaying 20 results from an estimated 61 matches for "logsplin".
Did you mean:
logspline
2000 Dec 18
0
R 1.2.0 : logspline does not install from install.packages(). Missing #include | library ? (PR#775)
Full_Name: Emmanuel Charpentier
Version: 1.2.0
OS: Linux 2.2.18 (Debian 2.2)
Submission from: (NULL) (193.251.31.31)
When trying "mass" installation of available packages, the package logspline
does not compile, at least when installed through
install.packages("logspline").
It seems that it is a small bug, such a missing #include <math.h> or -libm
linking switch ?
installation output follows (screen copy) :
> install.packages("logspline")
--20:39:02-- htt...
2000 Dec 19
1
packages installation failed on Linux
Hi all,
I've successfully compiled R-1.2 on a Linux box (Mandrake 7.1). However,
when I installed packages from sources, I run into problems with the
packages logspline and tseries. The error messages are as follows. Can
anyone help? The compiler is gcc 2.95.3, if that helps.
Andy
================================================
Installing source package `logspline' ...
libs
gcc -I/usr/local/lib/R/include -I/usr/local/include -mieee-fp
-D__NO_MATH_INLIN...
1998 Jun 24
0
R-beta: Packages: KernSmooth logspline ppr rpart tree
The following are now on CRAN:
KernSmooth: version 2.2 of the code for Wand & Jones book on kernel smoothing.
logspline: spline fits to log denisites, with automatic choice of smoothing.
ppr: projection pursuit regression.
rpart: recursive partitioning (CART-like)
VR: Venables & Ripley libraries 5.3pl021 for 0.62.1
and in the devel section
tree: a clone of tree, prune.tree, cv....
1998 Jun 24
0
R-beta: Packages: KernSmooth logspline ppr rpart tree
The following are now on CRAN:
KernSmooth: version 2.2 of the code for Wand & Jones book on kernel smoothing.
logspline: spline fits to log denisites, with automatic choice of smoothing.
ppr: projection pursuit regression.
rpart: recursive partitioning (CART-like)
VR: Venables & Ripley libraries 5.3pl021 for 0.62.1
and in the devel section
tree: a clone of tree, prune.tree, cv....
2007 May 31
1
R keeps crashing when executing 'rlogspline'
Dear List,
I have a simple model as follows:
x <- rnorm(500)
library(logspline)
fit <- logspline(x)
n <- 1000000
y <- replicate(n, sum(rlogspline(rpois(1,10), fit))) # last line
The problem I keep getting is R crashes when doing the last line. It
seems to be fine if n is small, but not if n is 1000000. The message
I keep getting is:
"R for Windows GUI front...
2012 Jan 27
4
percentage from density()
Hi folks,
I know that density function will give a estimated density for a give
dataset. Now from that I want to have a percentage estimation for a
certain range. For examle:
> y = density(c(-20,rep(0,98),20))
> plot(y, xlim=c(-4,4))
Now if I want to know the percentage of data lying in (-20,2). Basically
it should be the area of the curve from -20 to 2. Anybody knows a simple
2011 Dec 06
2
To Try or to TryCatch, I have tried to long
So after about 4 hours struggling with Try and TryCatch I am throwing in the
towel. I have a more complicated function that used logspline through
iterative distributions and at some point the logspline doesnt function
correctly for some subsets but is fine with others so I need to be able to
identify when the error occurs and stop curtailing the distribution and I
think this Try or TryCatch should do the trick but I think I am missi...
2010 Jan 27
1
returning a list of functions
Hi interested readers,
I have a function that creates several functions within a loop and I would like
them to be returned for further use as follows:
Main.Function(df,...){
# df is a multivariate data
funcList<-list(NULL)
for (i in 1:ncol(df)){
temp<-logspline(df[,i],...) # logspline density estimate
funcList[[i]]<-function(x){expression(temp,x)}
}
return(funcList)
}
I have tried this, unfortunately can't figure out why all the functions
returned are identical.
Any help towards this will be much appreciated. Thanks.
2012 Mar 09
1
nonparametric densities for bounded distributions
Can anyone recommend a good nonparametric density approach for data bounded
(say between 0 and 1)?
For example, using the basic Gaussian density approach doesn't generate a
very realistic shape (nor should it):
> set.seed(1)
> dat <- rbeta(100, 1, 2)
> plot(density(dat))
(note the area outside of 0/1)
The data I have may be bimodal or have other odd properties (e.g. point
mass
2006 Jun 07
4
Density Estimation
Dear R-list,
I have made a simple kernel density estimation by
x <- c(2,1,3,2,3,0,4,5,10,11,12,11,10)
kde <- density(x,n=100)
Now I would like to know the estimated probability that a
new observation falls into the interval 0<x<3.
How can I integrate over the corresponding interval?
In several R-packages for kernel density estimation I did
not found a corresponding function. I
2011 Apr 28
4
how to generate a normal distribution with mean=1, min=0.2, max=0.8
Dear all,
This is a simple probability problem. I want to know, How to generate a
normal distribution with mean=1, min=0.2 and max=0.8?
I know how the generate a normal distribution of mean = 1 and sd = 1 and
with 500 data point.
rnorm(n=500, m=1, sd=1)
But, I am confusing with how to generate a normal distribution with expected
min and max. I expect to hear your directions.
Thanks in
2001 Jul 12
0
density estimation from interval-censored data
I am aware of the nice R package "logspline", which does smooth
density estimation from interval-censored data (that is, values that
are known to lie in a specified interval rather than known exactly).
Function logspline.fit uses a maximum penalized likelihood method,
with the penalty related to the number of knots used in a cubic...
2012 May 17
1
oldlogspline probabilities
I using oldlogspline (from logspline package) to model data distributions, and having a problem.
My data are search area sizes. They are based on circular search radii from random points to the nearest edge of the nearest grass tussock. Search area sizes are distributed from 0 (the random point intercepts a tussock)...
2007 Apr 02
3
Random number from density()
Hello,
I'm writing some genetic simulations in R where I would like to place
genes along a chromosome proportional to the density of markers in a
given region. For example, a chromosome can be presented as a list of
marker locations:
Chr1<-c(0, 6.5, 17.5, 26.2, 30.5, 36.4, 44.8, 45.7, 47.8, 48.7, 49.2,
50.9, 52.9, 54.5, 56.5, 58.9, 61.2, 64.1)
Where the numbers refer to the locations of
2001 Oct 11
2
Where's MVA?
...xed SuppDists VR XML acepack adapt akima ash bindata blighty boot bootstrap bqtl car cclust cfa chron cluster cmprsk coda conf.design cramer date diamonds dse e1071 ellipse event.chart exactRankTests fastICA fdim fields foreign fracdiff gafit gee geoR gld gregmisc gss ineq leaps lgtdl lmtest locfit logspline lokern lpridge maptree maxstat mclust mda meanscore mgcv mlbench muhaz multiv mvnmle mvtnorm netCDF nlme nlrq norm odesolve oz panel pcurve permax pinktoe pixmap polymars polynom princurve pspline quadprog quantreg rmeta rpart rpvm scatterplot3d sem sgeostat sm sma sn sna splancs sptests spweights...
2003 Jan 13
2
density estimation
I've been trying to figure this out for a while, but my knowledge of R is obviously still too limited.
The context is as follows: I have some time series, and I would like to estimate their densities, and then use the actual densities in a monte carlo simulation. Now, I can easily estimate the density using density(); I can write a random number generator to fit an arbitrary density
2009 Nov 05
5
Density estimate with bounds
Dear R users,
I would like to show the estimated density of a (0, 1) uniformly distributed
random variable. The density curve, however, goes beyond 0 and 1 because of the
kernel smoothing.
Example:
x = runif(10000)
plot(density(x))
Is there a way to estimate the density curve strictly within (0, 1) and still
use some sort of smoothing?
Any help would be greatly appreciated.
Best regards,
2012 Jun 27
2
density function
Hello,
I need density function so that I can find expected value (using
integration). I use density():
f= density(data)
but f isn't a function and I can't get values and integrate it
This is very urget, so please help.
Greetings
Peter
--
View this message in context: http://r.789695.n4.nabble.com/density-function-tp4634563.html
Sent from the R help mailing list archive at Nabble.com.
2012 Jul 11
2
Computing inverse cdf (quantile function) from a KDE
Hello,
I wanted to know if there is a simple way of getting the inverse cdf for a
KDE estimate of a density (using the ks or KernSmooth packages) in R ?
The method I'm using now is to perform a numerical integration of the pdf
to get the cdf and then doing a search for the desired probablity value,
which is highly inefficient and very slow.
Thanks,
-fj
[[alternative HTML version deleted]]
2010 Jul 26
12
how to generate a random data from a empirical distribition
hi, this is more a statistical question than a R question. but I do want to
know how to implement this in R.
I have 10,000 data points. Is there any way to generate a empirical
probablity distribution from it (the problem is that I do not know what
exactly this distribution follows, normal, beta?). My ultimate goal is to
generate addition 20,000 data point from this empirical distribution created