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MATH408: Probability

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Title: MATH408: Probability


1
MATH408 Probability StatisticsSummer
1999WEEK 5
Dr. Srinivas R. Chakravarthy Professor of
Mathematics and Statistics Kettering
University (GMI Engineering Management
Institute) Flint, MI 48504-4898 Phone
810.762.7906 Email schakrav_at_kettering.edu Homepag
e www.kettering.edu/schakrav
2
Joint PDF
  • So far we saw one random variable at a time.
    However, in practice, we often see situations
    where more than one variable at a time need to be
    studied.
  • For example, tensile strength (X) and diameter(Y)
    of a beam are of interest.
  • Diameter (X) and thickness(Y) of an
    injection-molded disk are of interest.

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Joint PDF (Contd)X and Y are continuous
  • f(x,y) dx dy P( x lt X lt xdx, y lt Y lt ydy) is
    the probability that the random variables X will
    take values in (x, xdx) and Y will take values
    in (y,ydy).
  • f(x,y) ? 0 for all x and y and

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Measures of Joint PDF
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Independence
We say that two random variables X and Y are
independent if and only if P(X?A, Y?B)
P(X?A)P(Y?B) for all A and B.
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EXAMPLES
15
Groundwork for Inferential Statistics
  • Recall that, our primary concern is to make
    inference about the population under study.
  • Since we cannot study the entire population we
    rely on a subset of the population, called
    sample, to make inference.
  • We saw how to take samples.
  • Having taken the sample, how do we make inference
    on the population?

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Basic Concepts
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Figure 3-36 (a) Probability density function of a
pull-off force measurement in Example 3-33.
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Figure 3-36 (b) Probability density function of
the average of 8 pull-off force measurements
in Example 3-33.
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Figure 3-36 (c) Probability density Probability
density function function of the sample
variance of 8 pull-off force measurements in
Example 3-33.
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An important result
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Examples
22
Central Limit Theorem
  • One of the most celebrated results in Probability
    and Statistics
  • History of CLT is fascinating and should read
    The Life and Times of the Central Limit Theorem
    by William J. Adams
  • Has found applications in many areas of science
    and engineering.

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CLT (contd)
  • A great many random phenomena that arise in
    physical situations result from the combined
    actions of many individual ones.
  • Shot noise from electrons holes in a vacuum tube
    or transistor atmospheric noise, turbulence in a
    medium, thermal agitation of electrons in a
    conductor, ocean waves, fluctuations in stock
    market, etc.

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CLT (contd)
  • Historically, the CLT was born out of the
    investigations of the theory of errors involved
    in measurements, mainly in astronomy.
  • Abraham de Moivre (1667-1754) obtained the first
    version.
  • Gauss, in the context of fitting curves,
    developed the method of Least Squares, which lead
    to normal distribution.

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Examples
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HOMEWORK PROBLEMS
  • Sections 3.11 through 3.12
  • 109,111, 114-116-119, 121-123, 129-130

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Examples
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Tests of Hypotheses
  • Two types of hypotheses Null (H0)and alternative
    (H1)

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Basic Ideas in Tests of Hypotheses
  • Set up H0 and H1. For a one-sided case, make sure
    these are set correctly. Usually these are done
    such that type 1 error becomes costly error.
  • Choose appropriate test statistic. This is
    usually based on the UMV estimator of the
    parameter under study.
  • Set up the decision rule if ? P(type 1 error)
    is specified. If not, report a p-value.
  • Choose a random sample and make the decision.

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Setting up Ho and H1
  • Suppose that the manufacturer of airbags for
    automobiles claims that the mean time to inflate
    airbag is no more than 0.1 second.
  • Suppose that the costly error is to conclude
    erroneously that the mean time is lt 0.1.
  • How do we set up the hypotheses?

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ILLUSTRATIVE EXAMPLE
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Test on µ using normal
  • Sample size is large
  • Sample size is small, population is approximately
    normal with known ?.

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DNR Region
µ
CP_1
CP_2
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Computation of P(type 2 error)
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Example (page 142)
  • µ Mean propellant burning rate (in cm/s).
  • H0µ 50 vs H1µ ? 50.
  • Two-sided hypotheses.
  • A sample of n10 observations is used to test the
    hypotheses.
  • Suppose that we are given the decision rule.
  • Question 1 Compute P(type 1 error)
  • Question 2 Compute P(type 2 error when µ 52.

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DECISION RULE
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Calculation of P(type 1 error)
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Example
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Confidence Interval
  • Recall point estimate for the parameter under
    study.
  • For example, suppose that µ mean tensile
    strength of a piece of wire.
  • If a random sample of size 36 yielded a mean of
    242.4psi.
  • Can we attach any confidence to this value?
  • Answer No! What do we do?

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Confidence Interval (contd)
  • Given a parameter, say, , let denote its
    UMV estimator.
  • Given ?, 100(1- ? ) CI for is constructed
    using the sampling (probability) distribution of
    as follows.
  • Find L and U such that P(L lt lt U) 1- ?.
  • Note that L and U are functions of .
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