I'm attempting to bootstrap a ZIP estimation while resampling from within specific populations. Each of the populations (clusters) are fundamentally different in some way, so I would like to proportionally represent them in the bootstrapping. The strata command will do that.

I sometimes encounter the following error:

Error in solve.default(as.matrix(fit$hessian)) : system is computationally singular: reciprocal condition number = 2.02001e-16

Here's a way to replicate the problem, and it should only take about a minute or so to run, depending on your computer:

```
#Load dependencies
library(AER)
library(boot)
library(pscl)
library(sampling)
#generate some fake data.q. Seed will be used to make it replicatable.
set.seed(1)
x1<-rpois(1000,1)
set.seed(1)
x2<-rnorm(1000,0,1)
set.seed(1)
e<-round(runif(1000,0,1)) #this should add some disruptions and prevent any multicolinearity.
pop<-rep(1:10,length.out=1000) #there are 10 populations
y<-x1*abs(floor(x2*sqrt(pop)))+e #the populations each impact the y variable somewhat differently
fake_data<-as.data.frame(cbind(y,x1,x2,pop))
fake_data$pop<-factor(pop) #they are not actually simple scalars.
#Run zip proccess, confirm it works. I understand it's not a matching model.
system.time(zip<-zeroinfl(y ~ x1+x2+pop | x1+x2+pop, data=fake_data))
#storing estimates to speed up bootstrapping phase. General technique from http://www.ats.ucla.edu/stat/r/dae/zipoisson.htm
count_hold<-as.data.frame(dput(coef(zip, "count")))
count_short<-c(count_hold[,1])
zero_hold<-as.data.frame(dput(coef(zip, "zero")))
zero_short<-c(zero_hold[,1])
#bootstrapping
f <- function(fake_data, i) {
zip_boot<- zeroinfl(y ~ x1+x2+pop | x1+x2+pop, data=fake_data[i,], start=list(count=count_short, zero=zero_short))
return(coef(zip_boot))
} #defines function for R to repeat in bootstrapping phase.
set.seed(1)
system.time(res <- boot(fake_data, f, R =50, strata=fake_data$pop)) #adjust the number of cpus to match your computer.
```

There ought to be enough samples, considering that I have 900+ degrees of freedom, and at least 100 samples in each population to grab my resampling estimates from.

My questions: 1)What did I do that is causing this multicolinarity?

`Error in solve.default(as.matrix(fit$hessian)) : system is computationally singular: reciprocal condition number = 1.09524e-35`

. – Peyton Jun 1 '13 at 20:40