7

I am conducting a log binomial regression in R. I want to control for covariates in the model (age and BMI- both continuous variables) whereas the dependent variable is Outcome(Yes or No) and independent variable is Group (1 or 2).

fit<-glm(Outcome~Group, data=data.1, family=binomial(link="log"))

and it works fine.

When I try putting age in the model, it still works fine. However, when I put BMI in the model, it gives me the following:

Error: no valid set of coefficients has been found: please supply starting values

I have been tried different combination of starting values such as:

fit<-glm(Outcome~Group+Age+BMI, data=data.1, family=binomial(link="log"), start=c(0,0,0,0) or even start=(1,4) or start =4 but it still gives me the error.

It also says:

Error in glm.fit(x = c(1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1,  : 
  length of 'start' should equal 4 and correspond to initial coefs for c("(Intercept)", "group1", "age", "bmi")

.

Any help on this will be much appreciated!

Edited: adding reproducible example.

N=50
data.1=data.frame(Outcome=sample(c(0,0,1),N, rep=T),Age=runif(N,8,58),BMI=rnorm(N,25,6),
                  Group=rep(c(0,1),length.out=N))
data.1$Group<-as.factor(data.1$Group)
fit<-glm(Outcome~Group, data=data.1, family=binomial(link="log"))
coefini=coef(glm(Outcome~Group+Age+BMI, data=data.1,family =binomial(link = "logit") ))
fit<-glm(Outcome~Group+Age+BMI, data=data.1, family=binomial(link="log"),start=coefini)
5
  • 1
    What is the typeof(data.1$BMI)? Jul 10, 2015 at 14:07
  • Why are you using a log link instead of a logit?
    – AdmiralWen
    Jul 10, 2015 at 14:18
  • typeof(data,1$BMI) is double.
    – Tina
    Jul 10, 2015 at 14:23
  • 2
    I am using a log link instead of logit because I want the relative risk estimate and not the odds ratio. Is that the right way to go?
    – Tina
    Jul 10, 2015 at 14:24
  • Look at the comments of this post stats.stackexchange.com/questions/8661/…, it appears that the OR is the better way to model.
    – Robert
    Jul 12, 2015 at 3:29

1 Answer 1

9

After some trial and error, using set.seed(123):

coefini=coef(glm(Outcome~Group+Age, data=data.1,family =binomial(link = "log") ))
fit2<-glm(Outcome~Group+Age+BMI, data=data.1, family=binomial(link="log"),start=c(coefini,0))

summary(fit2)

Call:
glm(formula = Outcome ~ Group + Age + BMI, family = binomial(link = "log"), 
    data = data.1, start = c(coefini, 0))

Deviance Residuals: 
    Min       1Q   Median       3Q      Max  
-1.2457  -0.9699  -0.7725   1.2737   1.6799  

Coefficients:
              Estimate Std. Error z value Pr(>|z|)
(Intercept) -1.5816964  1.0616813  -1.490    0.136
Group1       0.4987848  0.3958399   1.260    0.208
Age          0.0091428  0.0138985   0.658    0.511
BMI         -0.0005498  0.0331120  -0.017    0.987

(Dispersion parameter for binomial family taken to be 1)

    Null deviance: 65.342  on 49  degrees of freedom
Residual deviance: 63.456  on 46  degrees of freedom
AIC: 71.456

Number of Fisher Scoring iterations: 3
2
  • 1
    Thank you both for this question and answer! I had been trying to use R to test associations with a binomial outcome variable with a log link function and also kept getting that "no valid set..." error. It looks like this solution works for me too.
    – John
    Jun 3, 2016 at 18:04
  • Upvoted both. I don't think it'll let me upvote again. :)
    – John
    Jun 3, 2016 at 19:06

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.