For questions relating to generalized linear models. For the GLM math library, see [tag:glm-math].

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glmmPQL crashes on inclusion of corSpatial object

Link to data (1170 obs, 9 variables, .Rd file) Simply read it in using readRDS(file). I´m trying to setup a GLMM using the glmmPQL function from the MASS package including a random effects part and ...
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1answer
19 views

Generalized Linear Regression Model With Binary Exposure and Interaction Terms

I am running some fairly simple odds ratio analysis to investigate relationships of certain variable on injury outcomes. The exposure term (inj) is binary with 0 representing no injury and 1 meaning ...
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0answers
10 views

Could model.matrix “contrasts=FALSE” generate rank-deficient fit warning?

I am getting "In predict.lm(object, newdata, se.fit, scale = 1, type = ifelse(type == : "prediction from a rank-deficient fit may be misleading". I´ve seen predict.lm() in a loop. warning: ...
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0answers
72 views
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How to plot marginal effects (MEM) in R?

I have two logistic and two ordered logistic regression models: model <- glm(Y1 ~ X1+X2+X3+X4+X5, data = data, family = "binomial") #logistic modelInteraction <- glm(Y1 ~ X1+X2+X3+X4+X5+X1*X5, ...
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0answers
19 views

Meaning of the intercept, when there are several predictors including interactions

I need some help to understand the output from glm(), especially the meaning of the intercept. I am trying to model mass loss from 5 factors and all possible combinations of these factors. Species is ...
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2answers
29 views

How to obtain Poisson's distribution “lambda” from R glm() coefficients

My R-script produces glm() coeffs below. What is Poisson's lambda, then? It should be ~3.0 since that's what I used to create the distribution. Call: glm(formula = h_counts ~ ., family = poisson(link ...
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0answers
8 views

Generalized Linear Model for insurance

Does it make sense to use a Generalized Linear Model (GLM) for insurance modeling? My thinking is that it is a severely flawed model due to the assumption of your data belonging to the exponential ...
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0answers
12 views

What does “modeling shape, scale parameter of a distribution” refer to?

For eg. when we read "mean modeling", we can imagine it this way as taking the mean of all observations having 'X = x'. This was what half of glm is all about. However the remaining half which is ...
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1answer
15 views

How do you get R's null and residual deviance equivalents in Matlab fitglm?

In R, after fitting a glm you can get summary info containing the residual deviance and null deviance which tells you how good your model is compared to the model with just the intercept term, for the ...
0
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1answer
39 views

GLMER: Error: (maxstephalfit) PIRLS step-halvings failed to reduce deviance in pwrssUpdate

I am studying impact of various characteristics on court decission on specific offences. The dataset is pretty large (28928 observations with 86 level-2 units). I am looking at the decision whether to ...
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1answer
45 views

Errors in glmer : Error in eval(expr, envir, enclos) : cannot find valid starting > values: please specify some

I am trying to run a glmer model: This is the model I am traying to run md$count<-as.integer(md$count) Model1 <- glmer (count ~ distance_nest_tag + ep_nest + (1|tag_ID), ...
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2answers
31 views

Executor without H2O instance discovered, killing the cloud

I'm running Tweedie GLM using sparkling water for different sized data ie 20 MB, 400 MB, 2GB,25 GB. Code works fine for Sampling iteration 10. But I have to test for large sampling scenario.. ...
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0answers
24 views

How to use constructed formula with glm.mids

Working with a large number of variables and addressing them with constructed formula (via paste0()) using variables passed to functions. I have stumbled across a problem/bug I cannot figure out. ...
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0answers
14 views

How to make glm always use degrees

It seems, glm depreceted functions that uses degrees after GLM 0.9.5.1 release. Is there a way to make glm use degrees always ? I need this because I am very accustum to use degrees with perspective ...
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1answer
176 views

R glm() vector too large

I am trying to run a binary logistic regression in R on a very large set of data. I keep running into memory problems. I have tried many different packages to try to circumvent this issue, but am ...
2
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1answer
37 views

model.matrix(): why do I lose control of contrast in this case

Suppose we have a toy data frame: x <- data.frame(x1 = gl(3, 2, labels = letters[1:3]), x2 = gl(3, 2, labels = LETTERS[1:3])) I would like to construct a model matrix # x1b ...
2
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1answer
30 views

Compute cross-validation for GLMs with negative binomial response

I am interested in using cross validation (leave-one-out or K-folds) to test several different negative binomial GLMs that I have created. I am using the glm.nb() function from MASS to run negative ...
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2answers
7k views

Cross validation for glm() models

I'm trying to do a 10-fold cross validation for some glm models that I have built earlier in R. I'm a little confused about the cv.glm() function although I've read a lot of help files. When I provide ...
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0answers
24 views

How to find partial derivatives for a logistic regression model in R?

I've used R's glm function (with family = binomial) and predict() to create a predictive logistic regression for a data set with 4 input variables. Now I want to generate partial derivatives (partial ...
2
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1answer
82 views

Using lm(), nls() (and glm()?) to estimate population growth rate in Malthusian growth model

My question is related to estimating the population growth rate in Malthusian growth model. As a toy example, consider a toy dataset df: structure(list(x= c(0L, 24L, 48L, 72L, 96L, 120L, 144L, 168L ),...
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1answer
61 views

What does predict.glm(, type=“terms”) actually do?

I am confused with the way predict.glm function in R works. According to the help, The "terms" option returns a matrix giving the fitted values of each term in the model formula on the linear ...
3
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1answer
106 views

logLik.lm(): Why does R use (p + 1) instead of p for degree of freedom?

I am trying to understand the results from AIC/BIC in R. For some reason R adds 1 to the number of parameters to be estimated. Hence R uses a different formula than 2 * p - 2 * logLik (in Gaussian ...
2
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2answers
32 views

Exclude more than one columns when build logistic regression model using glm

For example my model has this code g = glm(Vote ~., -ID, data=train, family=binomial) So, -ID is excluding ID columns. What do I do if I want to exclude a few more columns? I tried g = glm(Vote ~.,...
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1answer
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predict() error: what can I do if one variable exists in training data but not in prediction data?

I have a training data set with the below variables str(PairsTrain) 'data.frame': 1495698 obs. of 4 variables: $ itemID_1 : int 1 4 8 12 15 19 20 20 22 26 ... $...
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1answer
84 views

Producing logistic curve for my logistic regression model

I want to write the code for plotting my logistic regression model, i.e., the "S"-shape logistic curve. How could that be done please as I have have two independent covariates? I'm attaching my data ...
0
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1answer
44 views

References in logistic regression in R [duplicate]

Lets say that I have a data frame where we have an information about substance level (A, B, C, D) and information about disease status (yes/no). In order to check how Level of substance is related ...
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2answers
329 views

How can I estimate variable influence of the factors in my model rather than just factor levels?

I created a regression model And i want to estimate an influence analysis for each factor. Meaning take the square Wald-estimation (z-value) for a specific factor and divide it by sum of squares of ...
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3answers
1k views

Model runs with glm but not bigglm

I was trying to run a logistic regression on 320,000 rows of data (6 variables). Stepwise model selection on a sample of the data (10000) gives a rather complex model with 5 interaction terms: Y~X1+ ...
0
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1answer
26 views

predicted probability using logistic regression in R equals 1

I have a simple glm model looks as: glm.fit=glm(Retention2~Email+Pay.method, data=train, family = binomial) All DV and IVs are categorical variables with two levels. The outcome of the glm is: ...
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0answers
15 views

Questionable Beta Regression Results [migrated]

The goal of this regression is to determine whether the amount of leaf disk that an insect consumed varied by what tree the leaf material came from. I'll acknowledge upfront that my coding is rarely ...
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1answer
29 views

glmer VS JAGS: different results in intercept-only hierarchical model

JAGS I have an intercept-only logistic model in JAGS, defined as follows: model{ for(i in 1:Ny){ y[i] ~ dbern(mu[s[i]]) } for(j in 1:Ns){ mu[j] <- ilogit(b0[j]) b0[j] ~ dnorm(0, sigma)...
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3answers
2k views

predict() with arbitrary coefficients in r

I've got some coefficients for a logit model set by a non-r user. I'd like to import those coefficients into r and generate some goodness of fit estimates on the same dataset (ROC and confusion matrix)...
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0answers
16 views

R slot for object of class “dgCMatrix”

I am trying to run a MCMCgrm analysis that will run a glm with a relatedness matrix. I am running into an unknown error that I have no idea how to debug. Error in .local(x, ...) : no slot of ...
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0answers
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How to get rid of “error in dropcols” running BMA in R?

I am running BMA. When running: glm.out.FT <- bic.glm(x, y, strict = FALSE, OR = 20, maxCol = 30, glm.family="gaussian", factor.type=FALSE) I get: Error in dropcols(leaps.x, y, glm.family, ...
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0answers
10 views

Is it possible to have glmulti consider only select intaractions in all subsets model selection?

I have been using the package glmulti to run an all subsets model selection procedure. I have a large data set and my global model contains 7 candidate predictors. The issue is that I would like to ...
3
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1answer
70 views

Why the auc is so different from logistic regression of sklearn and R

I use a same dataset to train logistic regression model both in R and python sklearn. The dataset is unbalanced. And I find that the auc is quite different. This is the code of python: model_logistic ...
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0answers
16 views

glmulti() with genetic algorithm runs indefinitely due to negative ICs?

I have roughly the same problem as in this thread glmulti runs indefinitely when using genetic algorithm with lme4. Problem is even after implementing the suggested solution (limiting the confsetsize ...
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1answer
59 views

Use of Colon Operator in R Formula

I am attempting to decipher a formula for glm such as the following: glm(formula = Correct ~ StudentID + Col20 + Col21 + Col22 + Col24 + Col27 + Col28 + Col20:Prior_ET_Col20 + Col21:...
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0answers
38 views

Hierarchical linear regression in PyMC3, converging issues

(This question is probably easier to understand if you have access to Kruschke's Doing Bayesian Data Analysis book, since I'm trying to build the model on p 493) Basically I'm trying to build this ...
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2answers
70 views

Evaluating the Fractional Logit Model - McFadden's Adjusted R^2

I am estimating a model where the dependent variable is a fraction (between 0 and 1). I used the commands in Stata 14.1 glm y x, link(logit) family(binomial) robust nolog as well as fracreg logit ...
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0answers
29 views

Overcoming complete separation using Boosted Regression Tree

I am attempting to fit and test a model using BRT analysis and I keep running into the error of complete separation. I have attempted multiple ways to overcome this issue to no avail. I utilized a ...
0
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2answers
44 views

regressing on functions with steps (Python/R)

As the title suggests I want to be able to perform a regression (not just a simple optimization) on the following (a non linear step function) either in R or in Python (the problem is crucial so I am ...
0
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1answer
37 views

Calculate AUC curve for responses in form cbind(Count_1, Count_0)

I trained a binomial model using glm(Xtrain, ytrain, formula='cbind(Response, n - Response) ~ features', family='binomial'), where ytrain is a response matrix with columns of counts (yes), counts (no)....
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46 views

Predict and plot interaction term without single effect

I have a problem in plotting an interaction and in using predict function. This is my final model: `mymodel <- glm(y ~ SITE + TREAT*HET, family= quasibinomial, data = PRESU)`. I want to plot ...
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0answers
19 views

Tweedie Confidence Intervals for predictions

I'm trying to compute confidence intervals for predictions from Tweedie GLM. I didn't find a way to do it in R, so trying to derive formula analytically. Maybe somebody has a ready formula? Parameters ...
0
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2answers
46 views

Remove intercept from GLM with multiple factor predictors

I am running a binomial logistic regression with a logit link function in R. My response is factorial [0/1] and I have two multilevel factorial predictors - let's call them a and b where a has 4 ...
1
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2answers
72 views

Fractional Response Regression in R

I am trying to model my data in which the response variable is between 0 and 1, so I have decided to use fractional response model in R. From my current understanding, the fractional response model ...
0
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1answer
74 views

OpenGL and Qt 5.5: glm::perspective doesnt work

I have made the following perspective matrix to isolate the problem to the glm perspective function: QMatrix4x4 proj (1.f, 0.f, 0.f, 0.f, 0.f, 1.f, 0.f, 0.f, 0.f, 0....
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0answers
155 views

Android ndk can't find <limits> included in glm.hpp

I would like to build the sample projects included in the gear vr framework using Android Studio on Windows 8. I imported the "simple-sample" project (GVRf\Sample\simple-sample) into Android Studio 1....
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2answers
1k views

Getting confint to work with the rms lrm object

I can't get the logistic regression from the rms package to work with confint(), here's an example: library(rms) data(mtcars) dd <- datadist(mtcars) options(datadist = "dd") fit <- lrm(am ~ ...