Displaying 20 results from an estimated 400 matches similar to: "multivariate regression using R"
2008 Jun 22
1
two newbie questions
# I've tried to make this easy to paste into R, though it's probably
so simple you won't need to.
# I have some data (there are many more variables, but this is a
reasonable approximation of it)
# here's a fabricated data frame that is similar in form to mine:
my.df <- data.frame(replicate(10, round(rnorm(100, mean=3.5, sd=1))))
var.list <- c("dv1",
2006 May 18
2
Incomplete Output from lmer{lme4}
I'm still relatively new to R, so my apologies if this is covered
somewhere. I've been running some mixed-effect models in R using
lme{nlme}, but read in Faraway's recent book, Extending the Linear Model
with R, that lmer in package lme4 is a much improved version. I tried
using this approach, but the output for the fixed effects doesn't report
a p-value or the degrees of freedom
2020 Oct 05
1
Simultaneous Equation Model with Dichotomous Dependent Variables
Hello everyone!
I am currently working with a time series panel data set measuring six dependent variables:
4 of which are binary and 2 of which are count data.
I am interested in constructing a model to measure if the dependent variables influence one another.
For example: DV1~ DV2 + IV1+IV2+ Controls and DV2~ DV1 + IV1+ IV2+ Controls
(where IV stands for independent variable, not
2013 Jun 23
1
2SLS / TSLS / SEM non-linear
Dear all, I try to conduct a SEM / two stage least squares regression with
the following equations:
First: X ~ IV1 + IV2 * Y
Second: Y ~ a + b X
therein, IV1 and IV2 are the two instruments I would like to use. the
structure I would like to maintain as the model is derived from economic
theory. My problem here is that I have trouble solving the equations to get
the reduced form so I can run
2008 Sep 25
2
levelplot/heatmap question
Hello!
I have data containing a large number of probabilities (about 60) of nonzero
coefficients to predict 10 different independent variables (in 10 different
BMA models). i've arranged these probabilities in a matrix like so:
(IV1) (IV2) (IV3) ...
p(b0) p(b0) p(b0)
p(b1) p(b1) p(b1)
p(b2) p(b2) p(b2)
...
where p(b1) for independent variable 1 is p(b1 !=
2010 Oct 08
1
MANCOVA
Hi,
I have been using R to do multiple analyses of variance with two
covariates, but recently found that the results in SPSS were very
different. I have check several books and web resources and I think
that both methods are correct, but I am less familiar with R, so I was
hoping someone could offer some suggestions. Oddly simple ANOVA is the
same in SPSS and R. Including covariates improves the
2011 Apr 18
1
regression and lmer
Dear all,
I hope this is the right place to ask this question.
I am reviewing a research where the analyst(s) are using a linear
regression model. The dependent variable (DV) is a continuous measure.
The independent variables (IVs) are a mixture of linear and categorical
variables.
The
author investigates whether performance (DV - continuous linear) is a
function of age (continuous IV1 -
2013 Oct 09
1
mixed model MANOVA? does it even exist?
Hi,
Sorry to bother you again.
I would like to estimate the effect of several categorical factors (two
between subjects and one within subjects) on two continuous dependent
variables that probably covary, with subjects as a random effect. *I want
to control for the covariance between those two DVs when estimating the
effects of the categorical predictors** on those two DVs*. The thing is, i
2008 Jan 13
1
How to fit a Tobit model with observations censored at different values
Dear everyone:
I am a new user of R. I have a dataset with a dependent variable (DV) censored at different values. The dataset looks like,
conditions .....IDV1 IDV2 DV
1 2 4 89
1 6 6 75
1 4 5 0 ( DV<=70)
......
2 3 5 15
2 5 5 0
2009 Aug 19
2
lmer with random slopes for 2 or more first-level factors?
I have data from a design in which items are completely nested within
subjects. Subject is the only second-level factor, but I have
multiple first-level factors (IVs). Say there are 2 such independent
variables that I am interested in. What is the proper syntax to fit a
mixed-effects model with a by-subject random intercept, and by-subject
random slopes for both the 2 IVs?
I can
2008 Nov 11
1
simulate data with binary outcome and correlated predictors
Hi,
I would like to simulate data with a binary outcome and a set of predictors that are correlated. I want to be able to fix the number of event (Y=1) vs. non-event (Y=0). Thus, I fix this and then simulate the predictors. I have 2 questions:
1. When the predictors are continuous, I can use mvrnorm(). However, if I have continuous, ordinal and binary predictors, I'm not sure how to simulate
2002 Jan 21
6
OpenSSH and OpenSSL snapshots
Hello,
In order to experiment with OpenCA, I have built an RPM for redhat 7.2
of a recent OpenSSL snapshot (the binary rpm on the OpenCA was built
with the different target directories and libraries. Unfortunately these
recent OpenSSL snapshots seems to break all OpenSSH tarballs and RPMs
that I have been able to find. None of them seem to compile
successfully, even the snapshots at
2009 Feb 10
2
Mixed ANCOVA with between-Ss covariate?
Hi all,
I have data from an experiment with 3 independent variables, 2 are
within and 1 is between. In addition to the dependent variable, I have
a covariate that is a single measure per subject. Below I provide an
example generated data set and my approach to implementing the ANCOVA.
However the output confuses me; why does the covariate only appear in
the first strata? Presumably it should
2011 Feb 03
2
how to read the "Sum Sq" - column from summary.aov()
Dear R-Users,
I have a trivial problem, but extensive googling and ??'ing did not solve it: I want to obtain the sums of squares from a summary.aov() object for later use. Example:
> DV <- rnorm(100)
> IV1 <- as.factor(rep(c("male", "female"), times = 50))
> IV2 <- as.factor(rep(c("young", "old"), times = 50))
>
>
2008 Aug 22
1
filtering out data
Greetings,
Apologies for such a simple question, but I have been trying to figure this out for a few days now (I'm quite new to R), have read manuals, list posts, etc., and not finding precisely what I need. I am accustomed to working in Stata, but I am currently working through the multilevel package right now. In Stata, I would include the statement "if model1 == 1" at the end
2009 Nov 06
2
Adjusting Yaxis (ylim) limits on a plotMeans(DV, IV1, IV2, error.bars="se")
Hello everyone,
I have tried to look for this everywhere and so far have no luck. I have a
plotMeans(DV, IV1, IV2, error.bars="se") graph that plots my data
(DV-continuous, IVs are factors, IV1 - two levels, IV2-four levels). I am
trying to increase a scale of my y-axis (to be consistent with my other
graphs), but unfortunately nothing works with "plotMeans" function, which
2015 Sep 03
2
[RFC] New pass: LoopExitValues
On Wed, Sep 2, 2015 at 5:36 AM, James Molloy <james at jamesmolloy.co.uk> wrote:
> Hi,
>
> Coremark really isn't a good enough test - have you run the LLVM test suite
> with this patch, and what were the performance differences?
For the test suite single source benches, the 235 tests improved
performance, 2 regressed and 705 were unchanged. That seems very
optimistic.
2012 May 19
3
anovas ss typeI vs typeIII
Hi all,
I have been struggling with ANOVAs on R. I am new to R, so I created a simple data frame, and I do some analyses on R just to learn R and then check them on SPSS to make sure that I am doing fine. Here is the problem that I've run into:
when we use the aov function, it uses SS Type I as default (on SPSS it is Type III). Then I used the Anova function under cars package using the
2015 Sep 01
2
[RFC] New pass: LoopExitValues
On Mon, Aug 31, 2015 at 5:52 PM, Jake VanAdrighem
<jvanadrighem at gmail.com> wrote:
> Do you have some specific performance measurements?
Averaging 4 runs of 10000 iterations each of Coremark on my X86_64
desktop showed:
-O2 performance: +2.9% faster with the L.E.V. pass
-Os size: 1.5% smaller with the L.E.V. pass
In the case of Coremark, the benefit comes mainly from the matrix
2010 Oct 29
1
Repeated Measures MANOVA
Hello all,
Is there an r function that exists that will perform repeated measures MANOVAs? For example, let's say I have 3 DVs, one between-subjects IV, and one within-subjects IV. Based on the documentation for the manova command, a function like that below is not appropriate because it cannot take Error arguments.
manova(cbind(DV1,DV2,DV3) ~ BetweenSubjectsIV * WithinSubjectsIV +