Displaying 20 results from an estimated 3000 matches similar to: "Three-way ANOVA shows me two-way results"
2010 Nov 23
6
the first. from SAS in R
Is there any similar function in R to the first. in SAS?
What it dose is:
Lets say we have this table:
a b c
1 1 5
1 0 2
2 0 2
2 0 NA
2 9 2
3 1 3
and then I want do to do one thing the first time the number 1 appers in a
and something else the secund time 1 appers in a and so on.
so
something similar to:
if first.a {
a$d<-1
}else{
a$d<-0
}
This would give me
2008 Oct 01
3
"tapply versus by" in function with more than 1 arguments
Hi. I searched the list and didn't found nothing similar to this. I simplified my example like below:
#I need calculate correlation (for example) between 2 columns classified by a third one at a data.frame, like below:
#number of rows
nr = 10
#the third column is to enforce that I need correlation on two variables only
dataf =
2005 Oct 07
1
returning a modified fix()-ed dataframe
Dear all,
In order to ease the transition from SPSS to R for some of my colleagues, I am
trying to create a function which would show the variables and their labels
(if those exist), using function "label" in package Hmisc.
A toy example would be this:
my.data <- data.frame(age=c(24,35,28), gender=c("Male", "Female", "Male"))
require(Hmisc)
2010 Jul 22
1
Updating a Data Frame
Hi,
I have a global data-frame in my R script.
At some point in my script, I want to update certain columns of this
data-frame by calling in an update function.
The function looks like this:
# get events data. This populates a global event data frame in the R-script
events <- getEvents(con, eventsFilePath)
# events has columns eventid, timeStamp, isSynchronized, timeDiff; with
millions of
2011 Nov 15
2
Models with ordered and unordered factors
Hello;
I am having a problems with the interpretation of models using ordered or
unordered predictors.
I am running models in lmer but I will try to give a simplified example
data set using lm.
Both in the example and in my real data set I use a predictor variable
referring to 3 consecutive days of an experiment. It is a factor, and I
thought it would be more correct to consider it ordered.
Below
2006 Mar 07
3
glm automation
Hello,
I have two problems in automating multiple glm(s) operations.
The data file is tab delimited file with headers and two columns. like
"ABC" "EFG"
1 2
2 3
3 4
dat <- read.table("FILENAME", header=TRUE, sep="\t", na.strings="NA",
dec=".", strip.white=TRUE)
dataf <- read.table("FILENAME", header=FALSE,
2011 Jan 17
1
Using anova() with glmmPQL()
Dear R HELP,
ABOUT glmmPQL and the anova command. Here is an example of a repeated-measures ANOVA focussing on the way starling masses vary according to (i) roost situation and (ii) time (two time points only).
library(nlme);library(MASS)
2009 Aug 12
2
Symbolic references - passing variable names into functions
Hello All,
I am trying to write a function which would operate on columns of a
dataframe specified in parameters passed to that function.
f = function(dataf, col1 = "column1", col2 = "column2") {
dataf$col1 = dataf$col2 # just as an example
}
The above, of course, does not work as intended. In some languages one
can force evaluation of a variable, and then
2008 Dec 01
1
Help with lattice graphics
Hi,
I like the formatting and the appearance of lattice plots. But I have not succeeded in gettting the right format in my plots with the lattice package in one of my applications. In?the code shown below, I start by constructing a general data frame and show my attempts with the lattice package commands. After that, I use the graphics package and show the kind of plot that I want to get.
I would
2011 Mar 05
2
please help ! label selected data points in huge number of data points potentially as high as 50, 000 !
Dear All
I am reposting because I my problem is real issue and I have been working on
this. I know this might be simple to those who know it ! Anyway I need help
!
Let me clear my point. I have huge number of datapoints plotted using either
base plot function or xyplot in lattice (I have preference to use lattice).
name xvar p
1 M1 1 0.107983837
2 M2 11
2010 Aug 12
2
Append to csv without header
Hi,
I am writing a function that writes to a csv file for every call.
However, for the subsequent calls, I want to append the data to the existing
csv file without appending the column names again.
I tried searching in the previous posts, but I am stuck with different
errors.
Here is what I am doing (dataF is a data-frame):-
outputFilePath <- paste(getwd(), "/",
2005 Feb 20
2
matrix operations
In R, I'm imported a data frame of 2,321,123 by 4 called "dataF".
I converted the data frame "dataF" to a matrix
dataM <- as.matrix(dataF)
Does R have an efficient routine to treat the special elements that
contain "inf" in them. For example, can you separate the rows that have
"inf" elements from the matrix into a separate matrix without
2004 Jun 24
3
The "median" function in R does not work properly.
Hi,
1.) The "median" function does not work well. Please refer to the data
below (same data is attached as txt-delimited). This is what I try to
do in R:
median ( dataf [2:9] )
I get warning: "needs numeric data"
2.) BUT if apply the median to a single vector:
median ( dataf [,2]] )
then it works:
3.) How come the "median"
2011 Mar 05
1
displaying label meeting condition (i.e. significant, i..e p value less than 005) in plot function
Dear R users,
Here is my problem:
# example data
name <- c(paste ("M", 1:1000, sep = ""))
xvar <- seq(1, 10000, 10)
set.seed(134)
p <- rnorm(1000, 0.15,0.05)
dataf <- data.frame(name,xvar, p)
plot (dataf$xvar,p)
abline(h=0.05)
# I can know which observation number is less than 0.05
which (dataf$p < 0.05)
[1] 12 20 80 269 272 338 366 368 397 403 432 453
2013 Jan 26
2
different legends in lattice panels
Hi listers,
I want to make lattice plots xyplots with the indication of legends
inside each panel with only the points and the lines actually ploted
inside each given panel according to the group(ing) factor.
The code below shows what I have achieved so far and I hope will make
clear what I want to have.
It seems to me that my solution is a very "dirty hack" and there
certainly is
2008 Sep 15
1
randomly sample within clustered data?
Dear useRs,
What is an efficient way to randomly sample from clustered data such
that I get equal representation from each cluster? For example, let's
say I want to randomly sample two cases from each cluster created by the
"id" variable in the following data frame:
> id<-c(rep("100", 4),rep("101", 3), rep("102", 6), rep("103",
2011 Mar 13
1
replace with quantile value for a large data frame...
Dear R-Experts
I am sure this might look simple question for experts, at least is problem
for me. I have a large data frame with over 1000 variables and each have
different distribution( i.e. have different quantile). I want to create a
new grouped data frame, where the new variables where the value falling in
first (<25%), second (25% to <50%), third (50% to <75%) and fourth quantiles
2011 Apr 18
1
covariance matrix: a erro and simple mixed model question, but id not know answer sorry
Dear list
I need your help: Execuse me for my limited R knowledge.
#example data set
set.seed (134)
lm=c(1:4)
block = c(rep(lm,6))
gen <- c(rep(1, 4), rep(2, 4), rep(3, 4), rep(4, 4),rep(5, 4),rep(6, 4))
X1 = c( rnorm (4, 10, 4), rnorm (4, 12, 6), rnorm (4, 10, 7),rnorm (4, 5, 2),
rnorm (4, 8, 4), rnorm (4,7, 2))
X2 = X1 + rnorm(length(X1), 0,3)
yvar <- c(X1, X2)
X <- c(rep( 1,
2006 Nov 18
1
deriv when one term is indexed
Hi,
I'm fitting a standard nonlinear model to the luminances measured
from the red, green and blue guns of a TV display, using nls.
The call is:
dd.nls <- nls(Lum ~ Blev + beta[Gun] * GL^gamm,
data = dd, start = st)
where st was initally estimated using optim()
st
$Blev
[1] -0.06551802
$beta
[1] 1.509686e-05 4.555250e-05 7.322720e-06
$gamm
[1] 2.511870
This works fine but I
2008 Jun 23
3
Getting only label column of a data frame
Hi,
How can I extract the label only from a given data frame.
Fore example from this data frame.
> print(dataf)
V1 V2 V3 V4 V5 V6 V7 V8 V9
11145 14.3 17.1 31.2 41.7 45.8 49.8 68.6 70.6 72.9
3545 10.2 15.6 20.9 23.2 31.4 31.7 36.2 48.4 51.9
8951 15.2 17.5 20.0 21.4 32.4