Discrete Probability Distributions

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Presentation transcript:

Discrete Probability Distributions P(n) – Probability of observing the nth discrete value Normalization Mean or “expected value”

Binomial Distribution Probability of observing an event A occur vA times out of N trials, given the prob. of seeing it once is P(A). N= 60 N= 600 P(A)=1/6 P(A)=1/6 AME20213

Measuring Probability – Poisson Statistics “Counting” experiments. Uncertainty in Measured Probability Measured Probability N= 60 N= 600 P(A)=1/6 P(A)=1/6 “Statistical Convergence” AME20213

Measuring Probability – Poisson Statistics “Counting” experiments. AME20213