# Adding Values In a Stochastic Simulation using R

Here I've managed to extract extract time in discrete form such as 1,2,3...,50 from each simulation with help of the users. But, since there is no value for interval 20-21 and more, is there any coding such that I can add the value inside myself? Because, if there is no reading for that time interval, that means the readings are same until the next interval. The coding I used as below:

``````library(GillespieSSA)
parms <- c(beta=0.591,sigma=1/8,gamma=1/7)
x0 <- c(S=50,E=0,I=1,R=0)
a <- c("beta*S*I","sigma*E","gamma*I")
nu <- matrix(c(-1,0,0, 1,-1,0, 0,1,-1, 0,0,1),nrow=4,byrow=TRUE)
set.seed(12345)
out <- lapply(X=1:1,FUN=function(x)
ssa(x0,a,nu,parms,tf=50)\$data)
out a<-as.data.frame(out)
idx <- diff(ceiling(a\$V1)) == 1 a[idx,]
``````
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``````## change ==1 to >0
idx <- diff(ceiling(a\$V1)) > 0

## get discrete time series
discrete.data <- a[idx,]

## get the last time step value
end.time <- ceiling(tail(discrete.data\$V1,1))

## create an empty data frame with all time steps
new.df <- data.frame(t=0:end.time, S=0, E=0, I=0, R=0)

## replace only those time steps that have valid values
new.df[new.df\$t %in% ceiling(discrete.data\$V1),2:5] <- discrete.data[,2:5]
``````

If necessary missing values can be replace by `NA`, depends on how you want to handle them.

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