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Inference

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Title: Inference


1
Inference
  • Mary M. Whiteside, Ph.D.
  • Nonparametric Statistics

2
Two Sides of Inference
  • Parametric
  • Interval estimation, xbar
  • Hypothesis testing, m0
  • Nonparametric
  • Interval estimates, EDF
  • Hypothesis testing, P(XltY) gt P(XgtY)

3
Meaning of Nonparametric
  • Not about parameters
  • Methods for non-normal distributions
  • Methods for ordinal data
  • Data Scales
  • Nominal, categorical, qualitative
  • Ordinal
  • Interval
  • Ratio - natural zero

4
Random Sample - Type 1
  • Random sample from a finite population
  • Simple
  • Stratified
  • Cluster
  • Inferences are about the finite population
  • Audit comprised of a sample from a population of
    invoices
  • Public opinion polls
  • QC samples of delivered goods

5
Random Sample - Type 2
  • Observations of (iid) random variables
  • Inferences are about the probability
    distributions of the random variables
  • Weekly average miles per gallon for your new
    Lexus
  • Chi square tests of independence in medical
    treatment offered men and women
  • Effect of female literacy on infant mortality
    worldwide

6
Transition from data sets to distributions
  • All random variables, by definition, have
    probability functions (pmf or pdf) and cumulative
    probability distributions
  • Random variables defined on a random sample (Type
    1 or 2) are called statistics with probability
    distributions that are called sampling
    distributions

7
Sampling Distributions
  • Statistics support both sides of inference
  • Estimators - random variables used to create
    interval estimates
  • Test statistics - random variables used to test
    hypotheses

8
Consider Xbar - a parametric statistic
  • Type I sample - subset of invoices where X
    sales tax paid on an invoice randomly selected
    from a finite population
  • Xbar is the average sales tax of n randomly
    selected invoices
  • Xbar is an estimator of m, the average sales tax
    paid for the population of invoices (with
    standard deviation s)
  • Xbar is a test statistic for testing hypotheses
  • H0 m m0
  • Xbar is a random variable with sampling
    distribution asymptotically normal as n increases
    with mean m and standard deviation s?n

9
Consider Xbar - a parametric statistic
  • Type 2 sample - the complete set of miles per
    gallon observations made by you since buying your
    Lexus where X mpg for your Lexus in a given
    week
  • Xbar is the average mpg for n observations of X
  • Xbar is an estimator of the expected value (mX)
    of the RV X
  • Xbar is a test statistic for testing hypotheses
  • H0 m m0
  • Xbar is a random variable with sampling
    distribution asymptotically normal as n increases
    with mean mX and standard deviation sX/ ?n

10
X in the Type 1 sample
  • If X from a Type 1 sample is regarded as a random
    variable, then it has the discrete uniform
    distribution
  • Prob X x 1/N for all x in the population
    (where the N values of x are assumed to be unique)

11
Order statistics of rank k - a nonparametric
statistic
  • the kth order statistic is the kth smallest
    observation
  • the first order statistic is the smallest
    observation in a sample
  • the nth order statistic is the largest
  • Large body of literature on sampling
    distributions of order statistics

12
Estimation
  • Definitions
  • EDF
  • pth sample quantile
  • sample mean, variance, and standard deviation
  • unbiased estimators (S2 and s2)

13
Intervals for parameter estimation
  • (point estimate - rstandard error of the
    estimator, point estimate qstandard error of
    the point estimate) where r is the a/2 quantile
    and q is the (1-a/2) quantile from the sampling
    distribution of the estimator
  • r equals -q in symmetric distributions with mean
    0 (z /- 1.96 or t /-2.02581)
  • r does not equal -q in skewed distributions such
    as Chi squared and F

14
Sampling distribution of the estimator
  • Parametric procedures - Assumed normal or normal
    based from the Central Limit Theorem and sample
    size
  • Xbar is approximately normal if n is large
  • Xbar is t if X is normal and s is unknown
  • Xbars distribution is unknown if Xs
    distribution is unknown and n is small

15
Sampling distribution of the estimator
  • Nonparametric distribution-free procedures I.e.
    the sampling distribution of the statistic
    (estimator or test statistic) is free from the
    distribution of X
  • rank order statistics
  • bootstrapped distributions - a/2 and 1-a/2
    quantiles

16
Parametric vs nonparametric sampling distributions
  • Exact distributions with approximate models
  • Exact distributions with exact models (but
    usually small samples)
  • or
  • Asymptotic distributions with exact models
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