mgcv (Mixed GAM Computation Vehicle) is a CRAN package for the R language, it contains routines for GAMs and other generalized ridge regression with multiple smoothing parameter selection by GCV, REML or UBRE/AIC. Also GAMMs.

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Estimate Specific Value in MGCV

I am attempting to run a GAM model and obtain a precise estimate, at a given value based on the recommendation from this thread for the package mgcv. When using the predict function, the results do ...
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161 views

Changing the units in a contour plot from vis.gam in mgcv

I'm fitting a model using the log of a variable, and I'd like to present my results in terms of that variable transformed. Here is a simple example: library(mgcv) N = seq(from=1,to=10,by=.01) a = ...
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Some arguments not working as intended in plotting a factor-smooth interaction in mgcv

I made a plot of a factor-smooth interaction constructed through s(... bs = "fs") in the mgcv package. It appears, however, that the xlim and main arguments (and a few other arguments) of plot.gam() ...
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Obtaining predictions from an mgcv::gam fit that contains a matrix “by” variable to a smooth

I just discovered that mgcv::s() permits one to supply a matrix to its by argument, permitting one to smooth a continuous variable with separate smooths for each of a combination of variables (and ...
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125 views

MGCV P-Spline Smoothing Parameter

I'm fitting a P-Spline to some data using the MGCV package and the gam() function. From what I understand gam() chooses the smoothing parameter - lambda - which appears in the penalised least squares ...
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How do I interact a tensor product with two different `by=var` variables?

An example: library(mgcv) N=1000 x1 = seq(1:N) x2 = log(x1) x3 = sqrt(x1) fac1 = ceiling(rnorm(N)*3) fac2 = ceiling(runif(N)*3) y = fac1*x2 + x1*x2 + x2 + x3*x2 + x2*(x1/x3)^(.8+fac2/10) + ...
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extract automatically generated knots mgcv package r

Is there any way of identifying the number and position of the knots when using gam in the mgcv package in r? So I have something like this: fit.add <- gam( rep.pos ~ 0 + factor(AY) + s(dur), ...
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How to implement this model selection algorithm in R?

I've got a complicated semi-parametric model that I'm fitting in R. I start with a model based on theory. Its got lots of interaction terms. I want to winnow it down: removing each interaction term ...
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43 views

Singular precision matrix warning in R

I'm running different model of this form: gamm(H_1_3~ s(wcomp.x.cum, bs='cr')+s(wcomp.y.cum, bs='cr')+s(h_AST, bs='cr'), na.action=na.omit,data=lag4_1DAY, method='REML', weights=vf) R ...
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predict.gam with new factor levels

I'm running a hurdle type analysis on species distribution data which involves two fitting steps. The first step is to model (m1) presence/absence data using all data with family=quasibinomial. The ...
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How can I reclaim memory used by mgcv?

I am having an issue where I run out of memory when running a large number of GAM fits using R package mgcv. I load the library and initialize some random data with the following script. ...
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Is it possible to include the product of two smooth terms in a mgcv gam model

I have had great success using gam to model seasonality for time series data. My latest model clearly shows a weekly pattern in addition to seasonal changes. While the weekly pattern itself is very ...
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113 views

Odd error: Error in PredictMat(object$smooth[[k]], data) : , `by' variable must be same dimension as smooth arguments

I'm getting an error in mgcv, and I can't figure out where it comes from. The setup is the following: I've got a fitted GAM object called "MI", and a vector of "prediction data" (with default values ...
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Do the binomial and non-zero models, when taking a deltaGAM approach, need to have the same variables?

I am developing a species distribution model using the deltaGAM approach, but need to know whether I need the same predictor variables in each model (the binomial model and the non-zero model). ...
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Main title of a plot of a random effect term in mgcv not responding to the “main” argument

Example: f = rep(1:10,100) y = f+rnorm(1000) library(mgcv) m = gam(y~s(as.factor(f),bs='re')) plot(m,main="whatever",select=1) why doesn't it use my main title???
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112 views

How to add a random intercept and random slope term to a GAMM model in R

I am trying to specify both a random intercept and random slope term in a GAMM model with one fixed effect. I have successfully fitted a model with a random intercept using the below code within the ...
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xlim not working in plot.gam in mgcv

The mgcv package in R lets you estimate smooth regressions on multiple variables. Here is an example: library(mgcv) set.seed(2) ## simulate some data... dat = gamSim(1,n=400,dist="normal",scale=2) ...
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44 views

Unable to perform anova of two models using mgcv package

so, as the title implies, I'm trying to compare two gams created with the mgcv package. My data contains missing values, so I've been careful to set na.action to na.exclude in order to be able to ...
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52 views

visreg2d - looping through variables in regression plot model

I am working on a data vizualization that shows the conditional value of a gam regression between two predictor variables and one outcome variable (one of the predictor is always the same). I working ...
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25 views

difference between smooth function s() for one variable and many variables in mgcv

Coming from medical background I have difficulties understanding the function of smoothing s() in these 2 line of codes: gam(Volume~s(Height,Girth,k=25), family=Gamma(link=log),data=trees) ...
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72 views

Finding a gradient function for a fitted nonparametric model to use in an optimizer

I've got a model, y=f(x,z,a). I want to optimize that model (eventually subject to constraints). Numerical optimizers in R are a lot faster when one has a gradient function. But I have fit my model ...
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152 views

constrain predictions within outer knots in mgcv::gam using R

I would like to fit a cubic spline using the gam function in mgcv package in R. Furthermore, I would like to constrain values outside of the training set (beyond the outer knots) to be equal to the ...
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225 views

Fitting a spline to messy curves

I have trade off curves generated from a simulation where the points are not entirely smooth. I'd like to fit a spline and calculate the max. Due to the jagged nature of the points, especially near ...