Poisson Statistics - MIT
Oct 09, 2019 · modeled event has a probability of success p. P(k;n;p) = n k p (1 p)n (2) A common example of a binomial process is coin tossing, in which we would assign k=# heads, n=# coin tosses, and p=50% (likelihood of landing heads for a fair coin). For plots of the shapes of this distribution and the Pois-son distribution, refer to Appendix A. I.3.
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