Displaying 20 results from an estimated 53 matches for "0.0015".
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0.001
2007 Sep 18
0
[LLVMdev] 2.1 Pre-Release Available (testers needed)
On Fri, Sep 14, 2007 at 11:42:18PM -0700, Tanya Lattner wrote:
> The 2.1 pre-release (version 1) is available for testing:
> http://llvm.org/prereleases/2.1/version1/
>
> [...]
>
> 2) Download llvm-2.1, llvm-test-2.1, and the llvm-gcc4.0 source.
> Compile everything. Run "make check" and the full llvm-test suite
> (make TEST=nightly report).
>
> Send
2012 Oct 13
1
hep on arithmetic covariance conversion to log-covariance
Dear All,
is there a function in R that would help me convert a covariance matrix built based on arithmetic returns to a covariance matrix from log-returns?
As an example of the means and covariance from arithmetic:
mu <-c(0.094,0.006,1.337,1.046,0.263)
sigma
2008 Jan 28
0
[LLVMdev] 2.2 Prerelease available for testing
Target: FreeBSD 7.0-RC1 on amd64.
autoconf says:
configure:2122: checking build system type
configure:2140: result: x86_64-unknown-freebsd7.0
[...]
configure:2721: gcc -v >&5
Using built-in specs.
Target: amd64-undermydesk-freebsd
Configured with: FreeBSD/amd64 system compiler
Thread model: posix
gcc version 4.2.1 20070719 [FreeBSD]
[...]
objdir != srcdir, for both llvm and gcc.
Release
2006 May 01
1
Problem with optim()
I am having a problem with optim() using the "L-BFGS-B" method. When I
set the lower limit for the third parameter equal to zero I get an
error message:
> low.lim.3 <- 0
> phi_opt <- optim(phi_, model_lik, NULL, method = "L-BFGS-B", lower=c(0.2, -100, low.lim.3, 0), upper= c(10, 100, 10, 10), control = list(maxit = 1000, parscale = c(0.2, u1, 0.002, 0.002), trace =
2008 Jan 24
6
[LLVMdev] 2.2 Prerelease available for testing
LLVMers,
The 2.2 prerelease is now available for testing:
http://llvm.org/prereleases/2.2/
If anyone can help test this release, I ask that you do the following:
1) Build llvm and llvm-gcc (or use a binary). You may build release
(default) or debug. You may pick llvm-gcc-4.0, llvm-gcc-4.2, or both.
2) Run 'make check'.
3) In llvm-test, run 'make TEST=nightly report'.
4) When
2012 Aug 22
1
Error in if (n > 0)
I've searched the Web with Google and do not find what might cause this
particular error from an invocation of cenboxplot:
cenboxplot(cu.t$quant, cu.t$ceneq1, cu.t$era, range=1.5, main='Total
Recoverable Copper', ylab='Concentration (mg/L)', xlab='Time Period')
Error in if (n > 0) (1L:n - a)/(n + 1 - 2 * a) else numeric() :
argument is of length zero
I do
2011 Nov 24
2
Question on density values obtained from kde2d() from package MASS
Hello,
I am a little bit confused regarding the density values obtained from the function kde2d() from the package MASS because the are not in the intervall [0,1] as I would expect them to be. Here is an example:
x <- c(0.0036,0.0088,0.0042,0.0022,-0.0013,0.0007,0.0028,-0.0028,0.0019,0.0026,-0.0029,-0.0081,-0.0024,0.0090,0.0088,0.0038,0.0022,0.0068,0.0089,-0.0015,-0.0062,0.0066)
y <-
2009 Feb 08
0
Initial values of the parameters of a garch-Model
Dear all,
I'm using R 2.8.1 under Windows Vista on a dual core 2,4 GhZ with 4 GB
of RAM.
I'm trying to reproduce a result out of "Analysis of Financial Time
Series" by Ruey Tsay.
In R I'm using the fGarch library.
After fitting a ar(3)-garch(1,1)-model
> model<-garchFit(~arma(3,0)+garch(1,1), analyse)
I'm saving the results via
> result<-model
2007 Sep 15
22
[LLVMdev] 2.1 Pre-Release Available (testers needed)
LLVMers,
The 2.1 pre-release (version 1) is available for testing:
http://llvm.org/prereleases/2.1/version1/
I'm looking for members of the LLVM community to test the 2.1
release. There are 2 ways you can help:
1) Download llvm-2.1, llvm-test-2.1, and the appropriate llvm-gcc4.0
binary. Run "make check" and the full llvm-test suite (make
TEST=nightly report).
2) Download
2004 Dec 02
1
treatment contrasts and summary.lm
Dear list members,
I have a 2-factor ANOVA where the summary.lm output looks like this
(using treatment contrasts):
Value Std. Error t value Pr(>|t|)
(Intercept) 0.0389 0.0220 1.7695 0.0817
as.factor(Block)1 0.0156 0.0066 2.3597 0.0215
as.factor(Block)2 -0.0018 0.0037 -0.4857 0.6289
as.factor(Block)3 -0.0007 0.0026 -0.2812 0.7795
2007 Aug 12
1
Write values on y axe
Hi,
I have values on y axe from 0.0001 to 3.086. When I do plot I have writen
values: 0.001, 0.050,1.000 ..., but how I can write on graph the minimum
value and maximum value, with all decimals (I don't want to use the format
1e-0x)? I am using log scale.
For example, if I have the values:
0.0001
0.0015
0.0256
0.0236
....
0.0201
2.9668
3.0086
I need have each 'x' value put on y axe,
2005 Nov 27
1
the output of coxph
Dear All:
I have some questions about the output of coxph.
Below is the input and output:
----------------------------------------
> coxph(formula = Surv(futime, fustat) ~ age + rx + ecog.ps, data =
+ ovarian, x = TRUE)
Call:
coxph(formula = Surv(futime, fustat) ~ age + rx + ecog.ps, data =
ovarian, x = TRUE)
coef exp(coef) se(coef) z p
age 0.147 1.158
2010 May 11
1
kernel density to smooth plots
Hi r-sers,
I have a data of relative frequencies for the interval of 0-20, 20-40,...380-400. I would like the two data on the same graph using the same x-axis label. My question is how to get a smooth curve using kernel density code if it possible for this data.
> cbind(rel_obs,rel_gen)
rel_obs rel_gen
[1,] 0.000000000 0.0000
[2,] 0.092534175 0.0712
[3,] 0.105152471 0.1092
2005 Feb 03
1
If this is should be posted elsewhere, please advise
Hi,
I am puzzled by the relationship between the p-values asociated with the
coefficients of a univariate logistic regression involving categorical
variables and the p-value I get from Fisher's exact test of the
associated 2 x 2 contingency table.
(1) The 2-sided p-value for the table is ~ 0.0015, whereas the p-value
for the independent is 0.101 and the p-value for the intercept is
2020 Aug 17
2
qemu -display sdl,gl=on also eats CPU
I was testing Ilia's patches for ddx, and while they definitely helped for Xorg itself,
qemu still eats a lot of CPU if launched like this
qemu-system-x86_64 -cdrom ~/Downloads/ISO/slax-English-US-7.0.8-x86_64.iso -m 1G -display sdl,gl=on -enable-kvm
and left for few hours.
top - 07:38:01 up 18:05, 2 users, load average: 2,00, 1,89, 1,83
Tasks: 224 total, 3 running, 221 sleeping, 0
2008 Feb 03
0
[LLVMdev] 2.2 Prerelease available for testing
Target: FreeBSD 6.2-STABLE on i386
autoconf says:
configure:2122: checking build system type
configure:2140: result: i386-unknown-freebsd6.2
[...]
configure:2721: gcc -v >&5
Using built-in specs.
Configured with: FreeBSD/i386 system compiler
Thread model: posix
gcc version 3.4.6 [FreeBSD] 20060305
[...]
objdir != srcdir, for both llvm and gcc.
Release build.
llvm-gcc 4.2 from source.
2005 Oct 27
1
aov() and lme()
Sorry for reposting, but even after extensive search I still did not
find any answers.
using:
summary(aov(pointErrorAbs~noOfSegments*turnAngle+Error(subj/(noOfSegments+turnAngle)),
data=anovaAllData ))
with subj being a random factor and noOfSegments and turnAngle being
fixed factors, I get the following results:
----------------------------------------------
Error: subj
Df Sum
2009 Sep 22
1
odd (erroneous?) results from gls
A couple weeks ago I posted a message on this topic to r-help, the response
was that this seemed like odd behavior, and that I ought to post it to one
of the developer lists. I posted to r-sig-mixed-models, but didn't get any
response. So, with good intentions, I decided to try posting once more, but
to this more general list.
The goal is (1) FYI, to make you aware of this issue, in case it
2007 Dec 04
2
Learning to do randomized block design analysis
We just studied randomized block design analysis in my statistics class,
and I'm trying to learn how to do them in R. I'm trying to duplicate a
case study example from my textbook [1]:
> # Case Study 13.2.1, page 778
> cd <- c(8, 11, 9, 16, 24)
> dp <- c(2, 1, 12, 11, 19)
> lm <- c(-2, 0, 6, 2, 11)
> table <- data.frame(Block=LETTERS[1:5], "Score
2005 Aug 15
1
error in predict glm (new levels cause problems)
Dear R-helpers,
I try to perform glm's with negative binomial distributed data.
So I use the MASS library and the commands:
model_1 = glm.nb(response ~ y1 + y2 + ...+ yi, data = data.frame)
and
predict(model_1, newdata = data.frame)
So far, I think everything should be ok.
But when I want to perform a glm with a subset of the data,
I run into an error message as soon as I want to predict