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STATISTICAL INFERENCE PART V

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STATISTICAL INFERENCE PART V CONFIDENCE INTERVALS * ... So, the approximate 100(1 )% CI for : When the sample size n 30, t /2,n-1~N(0,1). – PowerPoint PPT presentation

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Title: STATISTICAL INFERENCE PART V


1
STATISTICAL INFERENCEPART V
  • CONFIDENCE INTERVALS

2
INTERVAL ESTIMATION
  • Point estimation of ? The inference is a guess
    of a single value as the value of ?. No accuracy
    associated with it.
  • Interval estimation for ? Specify an interval
    in which the unknown parameter, ?, is likely to
    lie. It contains measure of accuracy through
    variance.

3
INTERVAL ESTIMATION
  • An interval with random end points is called a
    random interval. E.g.,

is a random interval that contains the true value
of ? with probability 0.95.
4
Interpretation
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  • µ (unknown, but true value)

90 CI ? Expect 9 out of 10 intervals to cover
the true µ
5
INTERVAL ESTIMATION
  • An interval (l(x1,x2,,xn), u(x1,x2,,xn)) is
    called a 100? confidence interval (CI) for ? if
  • where 0lt?lt1.
  • The observed values l(x1,x2,,xn) is a lower
    confidence limit and u(x1,x2,,xn) is an upper
    confidence limit. The probability ? is called the
    confidence coefficient or the confidence level.

6
INTERVAL ESTIMATION
  • If Pr(l(x1,x2,,xn)??) ?, then l(x1,x2,,xn) is
    called a one-sided lower 100? confidence limit
    for ? .
  • If Pr(?? u(x1,x2,,xn)) ?, then u(x1,x2,,xn) is
    called a one-sided upper 100? confidence limit
    for ? .

7
METHODS OF FINDING PIVOTAL QUANTITIES
  • PIVOTAL QUANTITY METHOD
  • If Qq(x1,x2,,xn) is a r.v. that is a
    function of only X1,,Xn and ?, and if its
    distribution does not depend on ? or any other
    unknown parameter (nuisance parameters), then Q
    is called a pivotal quantity.

nuisance parameters parameters that are not of
direct interest
8
PIVOTAL QUANTITY METHOD
  • Theorem Let X1,X2,,Xn be a r.s. from a
    distribution with pdf f(x?) for ??? and assume
    that an MLE (or ss) of ? exists
  • If ? is a location parameter, then Q ?? is a
    pivotal quantity.
  • If ? is a scale parameter, then Q /? is a
    pivotal quantity.
  • If ?1 and ?2 are location and scale parameters
    respectively, then

are PQs for ?1 and ? 2.
9
Note
  • Example If ?1 and ?2 are location and scale
    parameters respectively, then
  • is NOT a pivotal quantity for ?1
  • because it is a function of ?2
  • A pivotal quantity for ?1 should be a function of
    only ?1 and Xs, and its distribution should be
    free of ?1 and ?2 .

10
Example
  • X1,,Xn be a r.s. from Exp(?). Then,
  • is SS for ?, and ? is a scale parameter.
  • S/? is a pivotal quantity.
  • So is 2S/?, and using this might be more
    convenient since this has a distribution of
    ?²(2n) which has tabulated percentiles.

11
CONSTRUCTION OF CI USING PIVOTAL QUANTITIES
  • If Q is a PQ for a parameter ? and if percentiles
    of Q say q1 and q2 are available such that
  • Prq1? Q ?q2?,
  • Then for an observed sample x1,x2,,xn a 100?
    confidence region for ? is the set of ??? that
    satisfy q1? q(x1,x2,,xn?)?q2.

12
EXAMPLE
  • Let X1,X2,,Xn be a r.s. of Exp(?), ?gt0. Find a
    100? CI for ? . Interpret the result.

13
EXAMPLE
  • Let X1,X2,,Xn be a r.s. of N(?,?2). Find a 100?
    CI for ? and ?2 . Interpret the results.

14
APPROXIMATE CI USING CLT
  • Let X1,X2,,Xn be a r.s.
  • By CLT,

Non-normal random sample
The approximate 100(1-?) random interval for µ
The approximate 100(1 -?) CI for µ
15
APPROXIMATE CI USING CLT
  • Usually, ? is unknown. So, the approximate
    100(1??) CI for ?

Non-normal random sample
  • When the sample size n 30, t?/2,n-1N(0,1).

16
Graphical Demonstration of the Confidence
Interval for m
1 - a
Lower confidence limit
Upper confidence limit
17
Inference About the Population Mean when ? is
Unknown
  • The Student t Distribution

18
Effect of the Degrees of Freedom on the t Density
Function

The degrees of freedom (a function of the
sample size) determines how spread the
distribution is compared to the normal
distribution.
19
Finding t-scores Under a t-Distribution (t-tables)

.05
t
1.812
20
EXAMPLE
  • A new breakfast cereal is test-marked for 1 month
    at stores of a large supermarket chain. The
    result for a sample of 16 stores indicate average
    sales of 1200 with a sample standard deviation
    of 180. Set up 99 confidence interval estimate
    of the true average sales of this new breakfast
    cereal. Assume normality.

21
ANSWER
  • 99 CI for ?
  • (1067.3985, 1332.6015)
  • With 99 confidence, the limits 1067.3985 and
    1332.6015 cover the true average sales of the new
    breakfast cereal.

22
Checking the required conditions
  • We need to check that the population is normally
    distributed, or at least not extremely nonnormal.
  • Look at the sample histograms, Q-Q plots
  • There are statistical methods to test for
    normality
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