Displaying 20 results from an estimated 3000 matches similar to: "How to calculate p-value for Kolmogorov Smirnov test statistics?"
2011 Apr 27
3
Kolmogorov-Smirnov test
Hi,
I have a problem with Kolmogorov-Smirnov test fit. I try fit distribution to
my data. Actualy I create two test:
- # First Kolmogorov-Smirnov Tests fit
- # Second Kolmogorov-Smirnov Tests fit
see below. This two test return difrent result and i don't know which is
properly. Which result is properly? The first test return lower D = 0.0234
and lower p-value = 0.00304. The lower 'D'
2011 Jul 29
1
How to interpret Kolmogorov-Smirnov stats
Hi,
Interpretation problem ! so what i did is by using the:
>fit1 <- fitdist(vectNorm,"beta")
Warning messages:
1: In dbeta(x, shape1, shape2, log) : NaNs produced
2: In dbeta(x, shape1, shape2, log) : NaNs produced
3: In dbeta(x, shape1, shape2, log) : NaNs produced
4: In dbeta(x, shape1, shape2, log) : NaNs produced
5: In dbeta(x, shape1, shape2, log) : NaNs produced
6: In
2009 Apr 29
2
Kolmogorov-Smirnov test
I got a distribution function and a empirical distribution function. How do I
make to Kolmogorov-Smirnov test in R.
Lets call the empirical distribution function >Fn on [0,1]
and the distribution function >F on [0,1]
ks.test( )
thanks for the help
--
View this message in context: http://www.nabble.com/Kolmogorov-Smirnov-test-tp23296096p23296096.html
Sent
2011 Feb 19
3
Kolmogorov-smirnov test
Is the kolmogorov-smirnov test valid on both continuous and discrete data?
I don't think so, and the example below helped me understand why.
A suggestion on testing the discrete data would be appreciated.
Thanks,
a <- rnorm(1000, 10, 1);a # normal distribution a
b <- rnorm(1000, 12, 1.5);b # normal distribution b
c <- rnorm(1000, 8, 1);c # normal distribution c
d <- rnorm(1000,
2009 Oct 12
1
Kolmogorov smirnov test
Hi r-users,
I would like to use Kolmogorov smirnov test but in my observed data(xobs) there are ties. I got the warning message. My question is can I do something about it?
ks.test(xobs, xsyn)
Two-sample Kolmogorov-Smirnov test
data: xobs and xsyn
D = 0.0502, p-value = 0.924
alternative hypothesis: two-sided
Warning message:
In ks.test(xobs, xsyn) : cannot compute correct
2002 Jul 01
1
modified kolmogorov-smirnov
I'm trying to use modified Kolmogorov-Smirnov test with a Normal which I
don't know it's parameters. Somebody told me about the lilifor function in
R, but just can't find it.
Does anybody know how I can test with the modified Kolmogorov-Smirnov
test?
Porqu? usar una base de datos relacional cualquiera,
si pod?s usar PostgreSQL?
2004 Sep 09
1
kolmogorov-smirnov for discrete ordinal scale data
Hi,
I was wondering whether there is an implementation of the
Kolmogorov-Smirnov goodness of fit test for discrete, ordinal scale data
in R - I've only managed to find the test for continuous data.
Thanks!
Gila
2010 Jun 22
1
k-sample Kolmogorov-Smirnov test?
Hello,
I am curious if anyone has had any success with finding a R version of a
k-sample Kolmogorov-Smirnov test. Most of the references that I have able to
find on this are fairly old and I am wondering if this type of analysis has
fallen out of favour. If so, how do people tend to compare distributions
when they have more than two? Is it reasonable to pursue an adjusted p-value
method. That is,
2010 Aug 05
1
Kolmogorov-Smirnov test, which one to use?
Hi,
I have two sets of data, an observed data and generated data.
The generated data is obtained from the model where the parameters is estimated
from the observed data.
So I'm not sure which to use either
one-sample test
ks.test(x+2, "pgamma", 3, 2) # two-sided, exact
or
two-sample test
ks.test(x, x2, alternative="l")
If I use the one-sample test I need to
2005 Oct 07
1
permutational Kolmogorov-Smirnov p-value for paired data
Dear List,
I am new to R and find it very powerful. I would like to compute the
permutational p-value for paired data using Kolmogorov-Smirnov, but
the built-in ks.test does not have this option, unlike the t.test
which has a paired=TRUE flag. Has someone written a library or a
routine that does this? Alternatively, if someone could show me how to
do pair-wise permutations in R, then I can
2007 May 27
1
Parametric bootstrapped Kolmogorov-Smirnov GoF: what's wrong
Dear R-users,
I want to perform a One-Sample parametric bootstrapped Kolmogorov-Smirnov
GoF test (note package "Matching" provides "ks.boot" which is a 2-sample
non-parametric bootstrapped K-S version).
So I wrote this code:
---[R Code] ---
ks.test.bootnp <- function( x, dist, ..., alternative=c("two.sided", "less",
"greater"), B = 1000 )
{
2005 Nov 22
1
Kolmogorov-Smirnov test help
Hi
I am conducting 2-sample Kolmogorov Smirnov tests for my Masters project to
determine if two independant tree populations have the same size-class
distribution or not. The trees have been placed into size-class categories
based on their basal diameters. Once I started running the stats on my data,
I got confused with the results. Just to show an example of what I was
testing I ran stats
2012 May 26
1
Kolmogorov-Smirnov test and the plot of max distance between two ecdf curves
Hi all,
given this example
#start
a<-c(0,70,50,100,70,650,1300,6900,1780,4930,1120,700,190,940,
760,100,300,36270,5610,249680,1760,4040,164890,17230,75140,1870,22380,5890,2430)
length(a)
b<-c(0,0,10,30,50,440,1000,140,70,90,60,60,20,90,180,30,90,
3220,490,20790,290,740,5350,940,3910,0,640,850,260)
length(b)
out<-ks.test(log10(a+1),log10(b+1))
# max distance D
2002 Jun 23
1
Kolmogorov-Smirnov tests: overflow
Dear All,
I've got a problem with ks.test. I've two realy large vectors, that I'd
like to test, but I get an overflow, and the p-value cannot be
calculated:
> length(genomesv)
[1] 390025
> length(scopv)
[1] 140002
> ks.test(genomesv, scopv)
Two-sample Kolmogorov-Smirnov test
data: genomesv and scopv
D = 0.2081, p-value = NA
alternative hypothesis: two.sided
2006 Apr 28
1
Checking Goodness of Fit With Kolmogorov-Smirnov
Hi,
I'm using the power.law.fit function from the igraph package to fit a
power law distribution to some data. This function returns the power
law exponent as it's only result. I would like to have some sort of
goodness-of-fit and/or error estimate of the exponent returned. This
paper:
http://www.edpsciences.org/articles/epjb/pdf/2004/18/b04111.pdf
suggests using the
2006 Feb 03
2
Problems with ks.test
Hi everybody,
while performing ks.test for a standard exponential distribution on samples
of dimension 2500, generated everytime as new, i had this strange behaviour:
>data<-rexp(2500,0.4)
>ks.test(data,"pexp",0.4)
One-sample Kolmogorov-Smirnov test
data: data
D = 0.0147, p-value = 0.6549
alternative hypothesis: two.sided
>data<-rexp(2500,0.4)
2004 Jun 17
0
2D Kolmogorov-Smirnov test: solution
Hi - A little while ago I posted a question about the implementation of
a two-dimensional analog of the Kolmogorov-Smirnov test in R[1][2]. As
there isn't one, as far as I know, people might be interested in a very
fast C++ implementation called MUAC which is available as a function
and as a standalone program from
http://www.acooke.org/jara/muac/index.html. Apparently the code is
2006 Jun 16
0
The qurey about kolmogorov-smirnov test & adding the trendline to graph
I am hereby forwarding the data & method use to calculate the
Kolmogorov-Smirnov goodness of fit test made manually by me in R
launguage which deffers with the actual inbuilt formula as shown below.
Further I have plot the graph in R. In that graph how to add trendline
(i.e. straight line passing through maximum points in plot) to a Plot.
R script is as follows please run this script to see
2003 May 15
2
kolmogorov-smirnov
Hello,
I got a rather simple question: Can I find somewhere in R the
significance values for a Kolmogorov distribution (I know the degrees
of freedom and I have already the maximum deviation). ks.test is not
really doing what I want. All I need is the values, like one can get
the values for a chi-squared distribution by 'qchisq(0.05, 375)'.
tnx,
Kurt.
2010 Nov 11
2
Kolmogorov Smirnov Test
I'm using ks.test (mydata, dnorm) on my data. I know some of my
different variable samples (mydata1, mydata2, etc) must be normally
distributed but the p value is always < 2.0^-16 (the 2.0 can change
but not the exponent).
I want to test mydata against a normal distribution. What could I be
doing wrong?
I tried instead using rnorm to create a normal distribution: y = rnorm