Properties of Expectation

  • Proposition: If then

Expectation of Sums of RV

  • X and Y have joint probability mass function (discrete RV) p(x,y)
  • X and Y have joint probability density function (continuous RV) f(x,y)
  • BSKT:
    • cdf: cumulative distribution function: probability that a random variable (continuous or discrete) take on value certain value
  • for random var X and Y
  • If is finite for all (expectation of all is sum of expectation of each )
  • The sample mean:
    • is sequence of independent + identically distributed RV
    • distribution function F, expected value
    • sample mean:
    • Expectation:
  • Expectation of a binomial random variable
    • X is binomial random variable, parameters and
    • , where
    • is Bernoulli RV (see Bernoulli from lec 06), with

Covariance, Variance of Sums, and Correlations

  • BSKT: Expectation calculation
    • DRV:
    • CRV:
  • X and Y independent just like product rule, for functions h and g
  • Covariance: give info on relationship btw random vars
    • If X and Y independent ; the converse is not true
  • Covariance proposition:
    • cov is equal to itself
    • cov is equal to var of x
    • cov of sum = sum of cov
  • If
  • If are pairwise independent ( and independent for )
    • var of sum = sum of var
  • Sample variance, variance of sample mean, expectation of sample variance
    • is sequence of independent + identically distributed RV, expected value , variance , sample mean
  • Variance of Binomial RV, para n and p
    • , where are independent Bernoulli RV, such that as for all
  • Correlation of 2 RV, :
    • Correlation coefficient: measure of degree of linearity btw X, Y
      • or high linearity btw X and Y
      • absent linearity
      • uncorrelated
      • : Y increases when X increases
      • : Y decreases when X increases
  • Conditional Expectation
    • DRV: , for all y such that
    • CRV: , where
    • BSKT:
      • integrate w.r.t
      • integrate w.r.t
    • Conditional expectation satisfy properties of ordinary expectation
    • Computing Expectations by Conditioning
      • If Y is DRV:
      • If Y is CRV, density :
  • Computing Probabilities by Conditioning
    • A: arbitrary event; Indicator random variable X by , for RV Y
    • DRV Y:
    • CRV Y:
  • Conditional Variance: