```
N=1000
alpha=0.1
zerosandones = rbinom(N, 1,alpha)
vector1=sample(c("raw","cooked"),1000,T,prob=c(0.12,.88))
vector1
densf=NULL
densft=NULL
for (i in (1:N))
{
if (zerosandones[i]==1 && vector1[i]=="raw") {densf[i] = 1}
else {if(zerosandones[i]==1 && vector1[i]=="cooked") {densft[i] <- rbinom(1, 1,alpha*0.2)}
else {if (zerosandones[i]==0 && vector1[i]=="raw") {densf[i]=0}
else {if (zerosandones[i]==0 && vector1[i]=="cooked") {densft[i]=0}}}}}
densft
densf
```

Hey folks,

I am new to R and building a Quantitative risk assessment model. Briefly over here the idea is that we generate a sample of a 1000 0s and 1s and each 0,1 has a raw/cooked associated. all 0s are dropped and we further analyse the 1s. So for example, if there is a one and its raw then the new densf should equal 1 otherwise 0. Similarly, if there is a one and its cooked then the new densft should equal 1 (simulated on the basis of a binomial rv with an alpha of 0.02 in the case above otherwise 0.

That said, that I m in need of some help as the "densf" and "densft" produce a bunch of `NaN`

values, place 0s and 1s at the wrong locations. Please help!