# Binned maximum likelihood estimate using R?

I've seen many tutorial examples of unbinned maximum likelihood estimates being done using R. However, as of now I have yet to be able to find any examples of binned maximum likelihood estimates in R. While I can certainly try a different software, I am still interested to see whether it can be easily implemented in R.

As an example, say I am measuring the decay of some radioactive isotopes, and I have been provided with the number of events over 250 time bins, each of duration $\Delta t$. The number of events in each bin can be modelled by Poisson statistics with expected number for each bin being $$\bar{N}_{bin} = \Delta t N_0\lambda e^{-\lambda t_{bin}}$$ so the log of the binned maximum likelihood function is given by $$\sum_{bin} \left( N_{bin} \ln(\bar{N}_{bin}) - \bar{N}_{bin} -\ln(N_{bin}!) \right)$$ The parameters I want to estimate are $\lambda$ and $N_0$.

So again my question is whether this can be done relatively straightforward using R. Thanks!

-

## migrated from stats.stackexchange.comSep 11 at 14:15

This question came from our site for statisticians, data analysts, data miners and data visualization experts.