Displaying 20 results from an estimated 44 matches for "fannie".
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annie
2005 May 30
2
"FANNY" function in R package "cluster"
Dear All,
I am attempting to use the FANNY fuzzy clustering function in R
(Kaufman & Rousseeuw, 1990), found in the "cluster" package. I have
run into a variety of difficulties; the two most crucial difficulties
are enumerated below.
1. Where is the 'm' parameter in FANNY?
In _Finding Groups in Data: An Introduction to Cluster Analysis_
(1990) by Kaufman & Rousseeuw,
2006 May 03
2
cannot use fanny in package cluster (PR#8830)
Full_Name: Guan-Hua Huang
Version: 2.0.1
OS: Linux
Submission from: (NULL) (140.113.114.123)
I install the package cluster by using install.packages("cluster"). After
install it, it runs fine for function clara, but it does not work for function
fanny. I did the following things:
library(cluster)
set.seed(21)
x <- rbind(cbind(rnorm(10, 0, 0.5), rnorm(10, 0, 0.5)),
2006 May 03
1
cannot use fanny in package cluster
Dear All,
My R version: 2.0.1 ; OS using: Linux. I install the package cluster by
using install.packages("cluster"). After install it, it runs fine for
function clara, but it does not work for function fanny. I did the following
things:
library(cluster)
set.seed(21)
x <- rbind(cbind(rnorm(10, 0, 0.5), rnorm(10, 0, 0.5)),cbind(rnorm(15, 5,
0.5), rnorm(15, 5, 0.5)),cbind(rnorm(
2007 Jun 28
2
restructuring matrix
Hi all,
let's say I have matrix
People Desc Value
Mary Height 50
Mary Weight 100
Fanny Height 60
Fanny Height 200
Is there a quick way to form the following matrix?
People Height Weight
Mary 50 100
Fanny 60 200
(Assuming I don't know the length of people/desc and let's say these are
characters matrix.. I tried
2009 Jun 17
1
Predict Fanny Membership
Hello List,
My question is an elementary one. I have run a fuzzy kmeans cluster using
FANNY to group freshwater fish assemblages. I then went in the field to
validate that classification and have retrieved new assemblage data for a
new suite of streams. Therefore I would like to use Predict to determine how
well the original clustering fits the new data. However I have not figured
out a
2005 May 13
2
cluster results using fanny
Hi,
I am using fanny and I have estrange results. I am wondering if
someone out there can help me understand why this happens.
First of all in most of my tries, it gives me a result in which each
object has equal membership in all clusters. I have read that that
means "the clustering is entirely fuzzy". Looking at the graphics it
is really difficult to understand how objects with so
2013 Oct 11
40
[Bug 70388] New: [NV34] failed to idle channel 0xcccc0000
https://bugs.freedesktop.org/show_bug.cgi?id=70388
Priority: medium
Bug ID: 70388
Assignee: nouveau at lists.freedesktop.org
Summary: [NV34] failed to idle channel 0xcccc0000
Severity: critical
Classification: Unclassified
OS: Linux (All)
Reporter: rosti.bsd at gmail.com
Hardware: x86 (IA32)
2003 Feb 28
1
Pam and Fanny vector length problems
I have "small" problem ...
with the cluster library each time I try to use
the "agnes","pam","fanny" functions with more than 20000 elements
I get the following error:
>Error in vector("double", length) : negative length vectors are not allowed
>In addition: Warning message:
>NAs introduced by coercion
But with the clara
2003 Apr 23
1
Technical problem
Hello,
Instead of receiving only one message when somebody send a question or a
answer,
I receive 2 messages with exactly the same contents inside.
Is it the same for you?
Thank you,
Fanny
--------------------------
Fanny AZIZA
École Nationale Vétérinaire d'Alfort
Mail: faziza@vet-alfort.fr
Tél. 01 43 96 70 33
[[alternate HTML version deleted]]
2007 Mar 29
2
Fanny Clustering
? stato filtrato un testo allegato il cui set di caratteri non era
indicato...
Nome: non disponibile
Url: https://stat.ethz.ch/pipermail/r-help/attachments/20070329/5d6b2e57/attachment.pl
2007 Jul 18
0
Ideal number of clusters using the Fanny algorithm
Hello,
Could someone please let me know the procedure for determining the 'best'
solution with regards to the number of clusters using the Fanny algorithm
for computing fuzzy clusters? The function requires a specification of the
number of clusters a priori, but I am interested in determining what number
of clusters would result in the ideal fit with the data. Any
help/advice/pointers to
2007 Oct 23
0
MPI implementations of fanny or cmeans
I've done a little digging, but I haven't been able to find an MPI or
snow (or any other distributed processing) implementation of fanny
(from cluster) or cmeans.
Is anyone aware of some implementations or addons which I've missed?
[I know of doi://10.1007/978-3-540-71351-7; but that's not for R]
Don Armstrong
[Currently not subscribed; M-F-T: set accordingly.]
--
Certainly
2004 May 24
0
AW: non-hierarchical non-exclusive clustering of large data sets
I think the "cmeans" method in library(e1071) works better for large data sets as "fanny".
(note,not for this data: fanny has also problems with standardized large data sets - here produce fanny the same memberships for all observations; cmeans works "correctly")
Matthias
> -----Urspr??ngliche Nachricht-----
> Von: Bhaskar S. Manda [mailto:bhaskar at
2002 Jan 28
1
Cluster package broken in 1.4.0?
Greetings,
I am reasonably experienced with R but I recently tried to
do some clustering using the "cluster" package, in order
to see if it would help.
I only tried this once with the 1.3.1 version and it worked
(I don't quite remember which method I used).
Now, I tried with the 1.4.0 version and no clustering function
seems to work with matrices that contain NAs, even
though
2004 Jun 29
1
PAM clustering: using my own dissimilarity matrix
Hello,
I would like to use my own dissimilarity matrix in a PAM clustering with
method "pam" (cluster package) instead of a dissimilarity matrix created
by daisy.
I read data from a file containing the dissimilarity values using
"read.csv". This creates a matrix (alternatively: an array or vector)
which is not accepted by "pam": A call
2006 Apr 05
1
"partitioning cluster function"
Hi All,
For the function "bclust"(e1071), the argument "base.method" is
explained as "must be the name of a partitioning cluster function
returning a list with the same components as the return value of
'kmeans'.
In my understanding, there are three partitioning cluster functions in
R, which are "clara, pam, fanny". Then I check each of them to
2006 Apr 07
1
fuzzy classification and dissimilarity matrix
Hello,
I want to make a fuzzy classification from a dissimilarity matrix
(calculated with daisy from package 'cluster'). I have tried to use
fanny (package cluster) but I have the same problems than described in a
previous message
(http://tolstoy.newcastle.edu.au/R/help/05/05/4546.html) i.e. it always
gives me two clusters in the results (even if k is different from 2)
with the same
2004 Sep 24
1
Cannot build cluster_1.9,6 under R 2.0.0 beta Sep 21
Doing the normal build process [1] for a first time with a R 2.0.0 snapshot
-- the Sep 21 version I uploaded to Debian's 'experimental' section two days
ago, ended in failure. The package in question is cluster 1.9.6 which should
be 2.0.0-ready.
The (partial) log follows:
-----------------------------------------------------------------------------
[...]
g77 -mieee-fp -fPIC -g -O2
2003 May 24
1
predicting fuzzy cluster membership
Dear all,
I'm trying to obtain a fuzzy clustering with fanny from the cluster package,
using a given set of data. That worked just fine.
I have another separate sample of data from the same problem. For each case in
this new sample I would like to know their membership coefficients with
respect to the clustering obtained with the first dataset. In effect I want
to have a kind of prediction
2003 Feb 09
3
Clustering partition and memory
Dear R-help list members
i would like to use R to produce clustering or partitioning of a dataset.
I am trying to use the functions:
- hierclust() of the package multiv
-pam(), agnes() and fanny() of the package cluster
But I cannot get any result because of lack of memory. Would you know any
clustering function not to greedy in memory?
I have tried to expand my memory limit with memory.limit()