I am trying to use bootstrapping to derive errors around my parameter estimate for the fixed effects in the following model. It is simply estimating the number of times an animal might cross a road based on the road's distance from a stream.

When I run the nlme model it does converge and all is well. I have tried several different methods to do the bootstrapping but have been unsuccessful. I have tried both using the boot package and simply developing a bit of code that resamples my data and drops the parameter estimates into new vectors.

Below is my attempt at the later and the resulting error messages. Any help would be greatly appreciated.

```
bv <- numeric(100)
cv <- numeric(100)
for(i in 1:100){
ss <- sample(1:130, replace=T)
y <- nwfcross[ss]
x <- nwfdist[ss]
modelb <- nlme(y~a*exp(-b*x), fixed=a+b~1,
random=a+b~1|nwfid, start=c(a=300,b=0.016))
bv[i] <- coef(modelb)[1]
cv[i] <- coef(modelb)[2]
}
Error in nlme.formula(y ~ a * exp(-b * x), fixed = a + b ~ 1, random = a + :
Maximum number of iterations reached without convergence
In addition: There were 50 or more warnings (use warnings() to see the first 50)
```

Warning messages:

```
1: Singular precision matrix in level -1, block 1
2: Singular precision matrix in level -1, block 1
3: Singular precision matrix in level -1, block 1….
```

`nwfcross`

- see stackoverflow.com/q/5963269/203420 for tips. – csgillespie Jan 9 '12 at 17:08`P(chicken crosses road) = 1`

– Richie Cotton Jan 9 '12 at 17:30`newfid`

s in the bootstrap samples. You should probably be bootstrapping on the`newfid`

s anyway as you're treating that as a random effect; however if you do that, you'll need to make sure that repeated instances of a`newfid`

are treated as new individuals. You should probably read up on bootstrapping with random effects; there may be more details you need to think about than I've mentioned here. – Aaron Jan 9 '12 at 17:47