Displaying 20 results from an estimated 6000 matches similar to: "GAM and interpolation?"
2008 Apr 09
1
mgcv::predict.gam lpmatrix for prediction outside of R
This is in regards to the suggested use of type="lpmatrix" in the
documentation for mgcv::predict.gam. Could one not get the same result more
simply by using type="terms" and interpolating each term directly? What is
the advantage of the lpmatrix approach for prediction outside R? Thanks.
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2008 Apr 06
0
mgcv::gam prediction using lpmatrix
The documentation for predict.gam in library mgcv gives an example of using
an "lpmatrix" to do approximate prediction via interpolation. However, the
code is specific to the example wrt the number of smooth terms, df's for
each,etc. (which is entirely appropriate for an example)
Has anyone generalized this to directly generate code from a gam object (eg
SAS or C code)? I wanted to
2013 Mar 23
1
Time trends with GAM
Hi all,
I am using GAM to model time trends in a logistic regression. Yet I would
like to extract the the fitted spline from it to add it to another model,
that cannot be fitted in GAM or GAMM.
Thus I have 2 questions:
1) How can I fit a smoother over time so that I force one knot to be at a
particular location while letting the model to find the other knots?
2) how can I extract the matrix
2011 Aug 10
0
GAM Prediction
I'm looking for the best way to do the following:
run a set of GAM models, and then make predictions with new data.
My problem is the size of the gam model object, I would like to strip it
down to the bare minimum of information needed to apply the model to new
data. For example, if this were a linear model, I would just keep the
betas. If this were an ordinary spline fit, I think I
2010 Jan 26
1
AIC for comparing GLM(M) with (GAM(M)
Hello
I'm analyzing a dichotomous dependent variable (dv) with more than 100
measurements (within-subjects variable: hours24) per subject and more
than 100 subjects. The high number of measurements allows me to model
more complex temporal trends.
I would like to compare different models using GLM, GLMM, GAM and
GAMM, basically do demonstrate the added value of GAMs/GAMMs relative
to
2009 Nov 21
1
3-D Plotting of predictions from GAM/GAMM object
Hello all,
Thank you for the previous assistance I received from this listserve!
My current question is: How can I create an appropriate matrix of
values from a GAM (actually a GAMM) to make a 3-D plot? This model is
fit as a tensor product spline of two predictors and I have used it to
make specific predictions by calling:
2010 May 13
1
GAM, GAMM and numerical integration, help please
I am trying to apply methods used by Chaloupka & Limpus (1997) (
http://www.int-res.com/articles/meps/146/m146p001.pdf) to my own turtle
growth data.
I am having trouble with two things...
1) After the GAM is fit, the residuals are skewed.
>m1 <- gam(growth~s(mean.size,
bs="cr")+s(year,bs="cr",k=7)+s(cohort,bs="cr")+s(age,bs="cr"),
data=grow,
2012 Mar 29
0
multiple plots in vis.gam()
Hi,
I'm working with gamm models of this sort:
gm<- gamm(Z~te(x,y),data=DATA,random=list(Group=~1))
gm1<-gamm(Z~te(x,y,by=Factor)+Factor,data=DATA,random=list(Group=~1))
with a dataset of about 70000 rows and 110 levels for Group
if I use plot(gm1$gam), I obtain 3 different surface plots, one for each level of my factor but I would like to create more complex contour plots for those 3
2003 Jun 07
0
problem with predict() for gam() models
I run the following code in R 1.6.2 on Windows:
xxx <- rnorm(100)
yyy <- .5 * rnorm(100) + sqrt(1-.5^2) * rnorm(100)
ord <- order(xxx)
xxx <- xxx[ord] # for
yyy <- yyy[ord] # convenience in reading printout
rm(ord)
reg.gam <- gam(yyy ~ s(xxx, k=8))
f <- function(x, reg.gam, target.y) {
cat("inside f() called by optimize():\n")
cat("arg x=", x,
2016 Apr 11
0
Intro GAM and GAMM course: Singapore
There are 4 remaining seats on the following statistics course:
Course: Introduction to GAM and GAMM with R
When: 30 May-3 June 2016
Where: Tropical Marine Science Institute, National University of
Singapore, Singapore
Course website: http://highstat.com/statscourse.htm
Course flyer: http://highstat.com/Courses/Flyers/Flyer2016_05Singapore.pdf
--
Dr. Alain F. Zuur
First author of:
1.
2010 May 17
0
GAM vs. GAMM, how to model increasing error variance?
I fit a GAM to turtle growth data using mgcv:
>m1 <- gam(growth~s(mean.size,
bs="cr")+s(year,bs="cr",k=7)+s(cohort,bs="cr")+s(age,bs="cr"), data=grow,
family=quasi(link="identity"))
The errors are skewed (and seem to be correlated with age) (code and plots
here:
2008 Nov 15
1
GAMs and GAMMS with correlated acoustic data
Greetings
This is a long email.
I'm struggling with a data set comprising 2,278 hydroacoustic estimates of
fish biomass density made along line transects in two lakes (lakes
Michigan and Huron, three years in each lake). The data represent
lakewide surveys in each year and each data point represents the estimate
for a horizontal interval 1 km in length.
I'm interested in comparing
2012 Aug 22
2
AIC for GAM models
Dear all,
I am analysing growth data - response variable - using GAM and GAMM models,
and 4 covariates: mean size, mean capture year, growth interval, having
tumors vs. not
The models work fine, and fit the data well, however when I try to compare
models using AIC I cannot get an AIC value.
This is the code for the gam model:
2010 Aug 04
2
more questions on gam/gamm(mgcv)...
Hi R-users,
I'm using R 2.11.1, mgcv 1.6-2 to fit a generalized additive mixed model.
I'm new to this package...and just got more and more problems...
1. Can I include correlation and/or random effect into gam( ) also? or only
gamm( ) could be used?
2. I want to estimate the smoothing function s(x) under each level of
treatment. i.e. different s(x) in each level of treatment. shall I
2012 May 03
1
conducting GAM-GEE within gamm4?
Dear R-help users,
I am trying to analyze some visual transect data of organisms to generate a
habitat distribution model. Once organisms are sighted, they are followed
as point data is collected at a given time interval. Because of the
autocorrelation among these "follows," I wish to utilize a GAM-GEE approach
similar to that of Pirotta et al. 2011, using packages 'yags' and
2013 Jul 08
1
error in "predict.gam" used with "bam"
Hello everyone.
I am doing a logistic gam (package mgcv) on a pretty large dataframe
(130.000 cases with 100 variables).
Because of that, the gam is fitted on a random subset of 10000. Now when I
want to predict the values for the rest of the data, I get the following
error:
> gam.basis_alleakti.1.pr=predict(gam.basis_alleakti.1,
+
2008 Oct 13
0
gamm() and predict()
Dear All,
I have a query relating to the use of the ?predict? and ?gamm? functions. I am dealing with large (approx. 5000) sets of presence/absence data, which I am trying to model as a function of different of environmental covariates. Ideally my models should include individual and colony as random factors. I have been trying to fit binomial models using the gamm function to achieve this. For
2008 Oct 01
1
Simon Wood GAMsetup
Dear Simon, Thank you for your quick reply!
I used to perform the GAMsetup in the following manner:
GAMsetup sintax:
x.summer: vector used for construct the spline
knots<-14
N<-length(x.summer)
x<-array(x.summer,dim=c(1,N))
G<-list(m=1,n=N,nsdf=0,df=knots+1,dim=1,s.type=0,by=0,by.exists=FALSE,p.order=0,x=x,n.knots=knots,fit.method="mgcv")
H<-GAMsetup(G)
with the
2010 Aug 05
2
compare gam fits
Hi folks,
I originally tried R-SIG-Mixed-Models for this one
(https://stat.ethz.ch/pipermail/r-sig-mixed-models/2010q3/004170.html),
but I think that the final steps to a solution aren't mixed-model
specific, so I thought I'd ask my final questions here.
I used gamm4 to fit a generalized additive mixed model to data from a
AxBxC design, where A is a random effect (human participants in
2012 Jun 11
0
gamm (mgcv) interaction with linear term
Hello,
I am trying to fit a gamm (package mgcv) model with a smooth term, a linear term, and an interaction between the two. The reason I am using gamm rather than gam is that there are repeated measures in time (which is the smooth term x1), so I am including an AR1 autocorrelation term. The model I have so far ended up with is of the type
gamm(y ~ s(x1) + s(x1, by=x2), correlation =