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Elementary Statistics

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Title: Elementary Statistics


1
Elementary Statistics
  • Chapter 7

2
Sample Space
  • A sample space is the set of all possible
    individual outcomes of a random process. The
    sample space is typically denoted by S and may be
    represented as a list, a tree diagram, an
    interval of values, a grid of possible values,
    and so on.

3
Lets Do It!
  • Pg. 338, 7.5

4
Event
  • An event is any subset of the sample space S. An
    event A is said to occur if any one of the
    outcomes in A occurs when the random process is
    performed once.

5
Lets Do It!
  • Pg. 390, 7.7

6
Set Notation
  • Union A or B
  • Intersection A and B
  • Complement not A

7
Disjoint
  • Two events A and B are disjoint or mutually
    exclusive if they have no outcomes in common.
    Thus, if one of the events occurs, the other
    cannot occur.

8
Basic Probability Rules
  • Any probability is always a numerical value
    between 0 and 1. The probability is 0 if the
    event cannot occur. The probability is 1 if the
    event is a sure thing. 0P(A)1.
  • If we add up the probabilities of each of the
    individual outcomes in the sample space, the
    total probability must be equal to one P(S)1.
  • 3. The probability that an event occurs is 1
    minus the probability that the event does not
    occur. P(A)1-P(Ac).

9
Lets Do It!
  • Pg. 396, 7.11

10
The Addition Rule
  • The probability that either the event A or the
    event B occurs is the sum of their individual
    probabilities minus the probability of their
    intersection.
  • P(A or B) P(A) P(B) - P(A and B)

11
The Addition Rule
  • If the two events A and B do not have any
    outcomes in common (disjoint), then the
    probability that one or the other occurs is
    simply the sum of their individual probabilities.
  • P(A or B) P(A) P(B)

12
Conditional Probability
  • The Conditional probability of the event A
    occurring, given that event B has occurred, is
    given by

13
Conditional Probability
  • We could rewrite this rule and have an expression
    for calculating an intersection, called the
    multiplication rule.

14
Independent Events
  • Two events A and B are independent if P(AB)
    P(A)
  • If two events A and B are independent, then

15
Lets Do It!
  • Pg. 404, 7.16

16
Lets Do It!
  • Pg. 413, 7.17

17
Lets Do It!
  • Pg. 419, 7.19

18
Random Variable
  • A random variable is an uncertain numerical
    quantity whose value depends on the outcome of a
    random experiment. We can think of a random
    variable as a rule that assigns one (and only
    one) numerical value to each point of the sample
    space.

19
Discrete vs Continuous RVs
  • A discrete random variable can assume at most a
    finite or infinite but countable number of
    distinct values. A continuous random variable
    can assume any value in an interval or collection
    of intervals.

20
Probability Distribution
  • The probability distribution of a discrete random
    variable X is a table or rule that assigns a
    probability to each of the possible values of the
    random variable X. The values of a discrete
    probability distribution must be between 0 and 1
    and must add up to 1.

21
Lets Do It!
  • Pg. 426, 7.20

22
Expected Value
  • If X is a discrete random variable taking on the
    values x1, x2,,xk, with probabilities p1,
    p2,,pk, then the mean or expected value of X is
    given by

23
Variance of X
  • If X is a discrete random variable taking on the
    values x1, x2,,xk, with probabilities p1,
    p2,,pk, then the variance of X is given by

24
Standard Deviation of X
  • And the standard deviation of X is given by

25
A Particular Discrete Distribution, The Binomial
Distribution
  • A population with a binomial distribution is a
    discrete population with a particular set of
    assumptions.

26
Combinations
  • n choose x represents the number of ways of
    selecting x items (without replacement) from a
    set of n distinguishable items when the order of
    the selection is not important and is given by

27
Binomial Distribution
  • A binomial random variable is the total number of
    successes in n independent trials with the
    following properties
  • Each experiment consists of n identical trials.
  • Each trial has two possible outcomes
    (success/failure).
  • The trials are independent

28
Binomial Distribution
  • A binomial random variable is the total number of
    successes in n independent trials with the
    following properties
  • The probability of success p, remains the same
    for each trial. The probability of a failure is
    q1-p.
  • The binomial random variable X is the number of
    successes in the n trials. X bin(n,p) and can
    take on values
  • 0, 1, 2, , n

29
Binomial Distribution
  • Mean
  • Variance
  • Standard deviation

30
Continuous Random Variables
  • The probability distribution of a continuous
    random variable X is a curve such that the area
    under the curve over an interval is equal to the
    probability that the random variable X is in the
    interval. The values of a continuous probability
    distribution must be at least 0 and the total
    area under the curve must be 1.

31
Mean of a Continuous RV
  • The mean or expected value of a continuous random
    variable X is the point at which the probability
    density function would balance.
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