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• Displaying data & lying with statistics • Summarizing data – Measures of location & dispersion • Probability – Binomial, Poisson, & Normal distributions • Functions of Random Variables – e.g., mean & variance of a portfolio • Estimation / Statistical inference – Making educated guesses about population parameters – Saying how confident you are in those guesses Population Sample All conceivable units of interest µ = Mean s² = Variance s = Standard deviation N = Size (Number of Units) Parameters A part of the population X s² s n = Mean = Variance = Standard deviation = Size (Number of Units) Statistics Population x1, x2, ..., xN Random sample of size n Parameters m = Population mean s = standard deviation Sample X X is a random variable. It has mean m X and standard deviation s X . The Central Limit Theorem* For a random sample of size n taken from a population with mean m and standard deviation s: • X is a Normal random variable • mX = m, i.e. E(X) = E(X) • sX = s/ n * Applies if n 30. Holds for any distribution of X. An Illustration of the derivation of 95% confidence intervals. m s m - 1.96 n -3 95% -2 0 1.96 m 1.96 2 s n 3 X Z 95% Confidence Intervals From the diagram, we can write: s s P m - 1.96 X m 1.96 0.95 n n Algebra s s P X - 1.96 m X 1.96 0.95 n n 100(1-a)% m - Za 2 s n m 0 Za/2 m Za 2 s n X Z 100(1-a)% Confidence Intervals From the diagram, we can write: s s P m - Za 2 X m Za 2 1- a n n Algebra s s P X - Za 2 m X Za 2 1- a n n 95% Confidence Interval Width as a Function of Sample Size s 15000 Interval Width = 2E 7000 6000 5000 4000 3000 2000 1000 0 0 2000 4000 6000 Sample Size 8000 10000