Poisson Models for Count Data
distribution if you consider the distribution of the number of successes in a very large number of Bernoulli trials with a small probability of success in each trial. Speci cally, if Y ˘B(n;ˇ) then the distribution of Y as n!1 and ˇ!0 with = nˇremaining xed approaches a …
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