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INTRODUCTION to PROBABILITY

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Title: INTRODUCTION to PROBABILITY


1
INTRODUCTION to PROBABILITY
2
BASIC CONCEPTS of PROBABILITY
  • Experiment
  • Outcome
  • Sample Space
  • Discrete
  • Continuous
  • Event

3
Interpretations of Probability
  • Mathematical
  • Empirical
  • Subjective

4
MATHEMATICAL PROBABILITY
  • P(E)

5
PROPERTIES
  • 0 lt P(E) lt 1
  • P(E) 1 - P(E)
  • P(A or B) P(A) P(B)
  • for two events, A and B, that do not intersect

6
Example
  • A part is selected for testing. It could have
    been produced on any one of five cutting tools.
  • What is the probability that it was produced by
    the second tool?
  • What is the probability that it was produced by
    the second or third tool?
  • What is the probability that it was not produced
    by the second tool?

7
INDEPENDENT EVENTS
  • Events A and B are independent events if the
    occurrence of A does not affect the probability
    of the occurrence of B.
  • If A and B are independent
  • P(A and B) P(A)P(B)

8
Example
  • The probability that a lab specimen is
    contaminated is 0.05. Two samples are checked.
  • What is the probability that both are
    contaminated?
  • What is the probability that neither is
    contaminated?

9
DEPENDENT EVENTS
  • Events A and B are dependent events if they are
    not independent.
  • If A and B are independent
  • P(A and B) P(A)P(B/A)

10
Example
  • From a batch of 50 parts produced from a
    manufacturing run, two are selected at random
    without replacement?
  • What is the probability that the second part is
    defective given that the first part is defective?

11
MUTUALLY EXCLUSIVE EVENTS
  • Events A and B are mutually exclusive if they
    cannot occur concurrently.
  • If A and B are mutually exclusive,
  • P(A or B) P(A) P(B)

12
NON MUTUALLY EXCLUSIVE EVENTS
  • If A and B are not mutually exclusive,
  • P(A or B) P(A) P(B) - P(A and B)

13
Example
  • Disks of polycarbonate plastic from a supplier
    are analyzed for scratch resistance and shock
    resistance. For a disk selected at random, what
    is the probability that it is high in shock or
    scratch resistance?
  • Shock Resistance
  • high low
  • Scratch R high 80 9
  • low 6 5

14
RANDOM VARIABLES
  • Discrete
  • Continuous

15
DISCRETE RANDOM VARIABLES
  • Maps the outcomes of an experiment to real
    numbers
  • The outcomes of the experiment are countable.
  • Examples
  • Equipment Failures in a One Month Period
  • Number of Defective Castings

16
CONTINUOUS RANDOM VARIABLE
  • Possible outcomes of the experiment are
    represented by a continuous interval of numbers
  • Examples
  • force required to break a certain tensile
    specimen
  • volume of a container
  • dimensions of a part

17
Discrete RV Example
  • A part is selected for testing. It could have
    been produced on any one of five cutting tools.
    The experiment is to select one part.
  • Define a random variable for the experiment.
  • Construct the probability distribution.
  • Construct a cumulative probability distribution.

18
EXPECTED VALUE
  • Discrete Random Variable
  • E(X) X1P(X1) . XnP(Xn)

19
Example
  • At a carnival, a game consists of rolling a fair
    die. You must play 4 to play this game. You roll
    one fair die, and win the amount showing (e.g...
    if you roll a one, you win one dollar.) If you
    were to play this game many times, what would be
    your expected winnings? Is this a fair game?

20
CUMULATIVE PROBABILITY FUNCTIONS
  • For a discrete random variable X,
  • the cumulative function is
  • F(X) P(X lt x)
  • S f(z) for all z lt x

21
PROBABILITY HISTOGRAMS
22
Variance of a Discrete Probability Distribution
  • Var(X) Sx - E(X)2f(x)

23
SOME SPECIAL DISCRETE RVs
  • Binomial
  • Poisson
  • Geometric
  • Hypergeometric

24
BINOMIAL
  • X the number of successes in n independent
    Bernoulli trials of an experiment
  • f(x) nCxpx(1-p)n-x for x
    0,1,2.n
  • f(x) 0 otherwise

25
EXAMPLE
  • A manufacturer claims only 10 of his machines
    require repair within one year.
  • If 5 of 20 machines require repair, does this
    support or refute his claim??

26
POISSON DISTRIBUTION
  • X of success in an interval of time, space,
    distance
  • f(x) e-l lx/x! for x 0,1,2,...
  • f(x) 0 otherwise

27
EXAMPLES
  • Examples of the Poisson
  • number of messages arriving for routing through a
    switching center in a communications network
  • number of imperfections in a bolt of cloth
  • number of arrivals at a retail outlet

28
EXAMPLE of POISSON
  • The inspection of tin plates produced by a
    continuous electrolytic process. Assume that the
    number of imperfections spotted per minute is
    0.2.
  • Find the probability of no more than one
    imperfection in a minute.
  • Find the probability of one imperfection in 3
    minutes.

29
GEOMETRIC DISTRIBUTION
  • X of trials until the first success
  • f(x) px(1-p)n-x for x
    0,1,2.n
  • f(x) 0 otherwise

30
Example of Geometric
  • The probability that a measuring device will show
    excessive drift is 0.05. A series of devices is
    tested. What is the probability that the 6th
    device will show excessive drift?
  • Find the probability of the 1st drift on the 6th
    trail.
  • P(X1) (0.05)(0.95)5 0.039
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