Poisson Derivation 2
From Qwiki
This derivation of the Poisson Distribution Pλ(n,T) is based on generating functions, but we really only need to know about Taylor series to make this work. This one is elegant but requires a little calculus. By a little logic, we can write

This is a logical statement, which states that the probability of n events in T + dT is just the sum of (the probability that n already occurred up to time T) times (the probability that n event occurs in the next dT) and (the probability that n − 1 events occurred up to time T) times (the probability that the nth event occurs in the next dT). This whole derivation relies only on that logical statement, which is why it's elegant. Since dT is infinitesimal, we may take the limit
to find a partial differential equation ![\frac{\partial }{\partial T} P_\lambda(n,T) = -\lambda\left[ P_\lambda(n,T) - P_\lambda(n-1,T)\right] .](/images/math/2/0/1/201a103228b6a7c32712ecb4edfb79db.png)

evolves with T, let's try the same trick on G.





to find 

References
Nicholas G. van Kampen, Stochastic processes in physics and chemistry, Elsevier Science Pub. Co., Amsterdam.
Crispin W. Gardiner, Handbook of stochastic methods for physics, chemistry and the natural sciences, 2nd ed., Springer-Verlag.

