Statistics - PowerPoint PPT Presentation

1 / 35
About This Presentation
Title:

Statistics

Description:

Find the probability that at least 24 of the numbers belong to business phones ... and standard deviation of the number of business phone numbers in the sample ... – PowerPoint PPT presentation

Number of Views:27
Avg rating:3.0/5.0
Slides: 36
Provided by: sandyb2
Category:

less

Transcript and Presenter's Notes

Title: Statistics


1
Statistics Data Analysis
  • Course Number B01.1305
  • Course Section 31
  • Meeting Time Wednesday 6-850 pm

CLASS 4
2
Class 4 Outline
  • Brief review of last class
  • Questions on homework
  • Chapter 5 Special Distributions

3
Review of Last Class
  • Probability trees
  • Probability distribution functions
  • Expected value
  • Standard deviation

4
Chapter 5
  • Some Special Probability Distributions

5
Chapter Goals
  • Introduce some special, often used distributions
  • Understand methods for counting the number of
    sequences
  • Understand situations consisting of a specified
    number of distinct success/failure trials
  • Understanding random variables that follow a
    bell-shaped distribution

6
Counting Possible Outcomes
  • In order to calculate probabilities, we often
    need to count how many different ways there are
    to do some activity
  • For example, how many different outcomes are
    there from tossing a coin three times?
  • To help us to count accurately, we need to learn
    some counting rules
  • Multiplication Rule If there are m ways of
    doing one thing and n ways of doing another
    thing, there are m times n ways of doing both

7
Example
  • An auto dealer wants to advertise that for 20G
    you can buy either a convertible or 4-door car
    with your choice of either wire or solid wheel
    covers.
  • How many different arrangements of models and
    wheel covers can the dealer offer?

8
Counting Rules
  • Recall the classical interpretation of
    probabilityP(event) number of outcomes
    favoring event / total number of outcomes
  • Need methods for counting possible outcomes
    without the labor of listing entire sample space
  • Counting methods arise as answers to
  • How many sequences of k symbols can be formed
    from a set of r distinct symbols using each
    symbol no more than once?
  • How many subsets of k symbols can be formed from
    a set of r distinct symbols using each symbol no
    more than once?
  • Difference between a sequence and a subset is
    that order matters for a sequence, but not for a
    subset

9
Counting Rules (cont)
  • Create all k3 letter subsets and sequences of
    the r5 letters A, B, C, D and E
  • How many sequences are there?
  • How many subsets are there?

10
Counting Rules (cont)
11
Review Sequence and Subset
  • For a sequence, the order of the objects for each
    possible outcome is different
  • For a subset, order of the objects is not
    important

12
Example
  • A group of three electronic parts is to be
    assembled into a plug-in unit for a TV set
  • The parts can be assembled in any order
  • How many different ways can they be assembled?
  • There are eight machines but only three spaces on
    the machine shop floor.
  • How many different ways can eight machines be
    arranged in the three available spaces?
  • The paint department needs to assign color codes
    for 42 different parts. Three colors are to be
    used for each part. How many colors, taken three
    at a time would be adequate to color-code the 42
    parts?

13
Binomial Distribution
  • Percentages play a major role in business
  • When percentage is determined by counting the
    number of times something happens out of the
    total possibilities, the occurrences might
    following a binomial distribution
  • Examples
  • Number of defective products out of 10 items
  • Of 100 people interviewed, number who expressed
    intention to buy
  • Number of female employees in a group of 75
    people
  • Of all the stocks trades on the NYSE, the number
    that went up yesterday

14
Binomial Distribution (cont)
  • Each time the random experiment is run, either
    the event happens or it doesnt
  • The random variable X, defined as the number of
    occurrences of a particular event out of n trials
    has a binomial distribution if
  • For each of the n trials, the event always has
    the same probability ? of happening
  • The trials are independent of one another

15
Example Binomial Distribution
  • You are interested in the next n3 calls to a
    catalog order desk and know from experience that
    60 of calls will result in an order
  • What can we say about the number of calls that
    will result in an order?
  • Questions
  • Create a probability tree
  • Create a probability distribution table
  • What is the expected number of calls resulting in
    an order?
  • What is the standard deviation?

16
Binomial Distribution the Easy Way
Number of Occurrences, X Proportion or Percentage
Mean E(X) n ? E(p) ?
Standard Deviation ?X(n ?(1- ?))0.5 ?p(?(1- ?)/n)0.5
17
Finding Binomial Probabilities
18
Example Binomial Probabilities
  • How many of your n6 major customers will call
    tomorrow?
  • There is a 25 chance that each will call
  • Questions
  • How many do you expect to call?
  • What is the standard deviation?
  • What is the probability that exactly 2 call?
  • What is the probability that more than 4 call?

19
Example
  • Its been a terrible day for the capital markets
    with losers beating winners 4 to 1
  • You are evaluating a mutual fund comprised of 15
    randomly selected stocks and will assume a
    binomial distribution for the number of
    securities that lost value
  • Questions
  • What assumptions are being made?
  • What is the random variable?
  • How many securities do you expect to lose value?
  • What is the standard deviation of the random
    variable?
  • Find the probability that 8 securities lose value
  • What is the probability that 12 or more lose
    value?

20
The Normal Distribution
21
Normal Distribution
  • The normal distribution is sometimes called a
    Gaussian Distribution, after its inventor, C. F.
    Gauss (1777- 1855).
  • Well-known bell-shaped distribution
  • Mean and standard deviation determine center and
    spread of the distribution curve
  • The mathematical formula for the normal f (y) is
    given in HO, p. 157. We won't be needing this
    formula just tables of areas under the curve.
  • The empirical rule holds for all normal
    distributions
  • Probability of an event corresponds to area under
    the distribution curve

22
Standard Normal Distribution
  • Normal Distribution with ?0 and ?1
  • Letter Z is used to denote a random variable that
    follows a Standard Normal Distribution

23
Visualization
Symmetrical
Tail
Tail
Mean, Median and Mode
24
Characteristics
  • Bell-shaped with a single peak at the exact
    center of the distribution
  • Mean, median and mode are equal and located at
    the peak
  • Symmetrical about the mean
  • Falls off smoothly in both directions, but the
    curve never actually touches the X-axis

25
Why Its Important
  • Many psychological and educational variables are
    distributed approximately normally
  • Measures of reading ability, introversion, job
    satisfaction, and memory are among the many
    psychological variables approximately normally
    distributed
  • Although the distributions are only approximately
    normal, they are usually quite close.
  • It is easy for mathematical statisticians to work
    with
  • This means that many kinds of statistical tests
    can be derived for normal distributions
  • Almost all statistical tests discussed in this
    text assume normal distributions
  • These tests work very well even if the
    distribution is only approximately normally
    distributed.

26
More Visualizations
?3.1 years, Plant A
?3.9 years, Plant B
?5 years, Plant C
27
Z-score
  • Compute probabilities using tables or computer
  • Convert to z-score
  • Look up CUMULATIVE PROBABILITY ON TABLE

28
Determining Probabilities
29
LOOKUP Table
Standard Normal Lookup Table
30
Example
  • Sales forecasts are assumed to follow a normal
    distribution
  • Target, or expected value is 20M with a 3M
    standard deviation
  • What is the probability of sales lower than 15M?
  • What is the probability sales exceed 25M?
  • What is the probability sales are between 15M
    and 25M ??
  • What is the value of k such that the sales
    forecast exceeds k is 60 ?

31
Example
  • Benefits compensation costs for employees with a
    certain financial services firm are approximately
    normally distributed with a mean of 18,600 and
    standard deviation of 2,700.
  • Find the probability that an employee chosen at
    random has an benefits package that costs less
    than 15,000
  • Find the probability that an employee chosen at
    random has an benefits package that costs more
    than 21,000
  • What is the value of k such that the benefits
    compensation exceeds k is 95 ?

32
Example
  • A telephone-sales firm is considering purchasing
    a machine that randomly selects and automatically
    dials telephone numbers
  • The firm would be using the machine to call
    residences during the evening calls to business
    phones would be wasted.
  • The manufacturer of the machine claims that its
    programming reduces the business-phone rate to
    15
  • As a test, 100 phone numbers are to be selected
    at random from a very large set of possible
    numbers
  • Are the binomial assumptions satisfied?
  • Find the probability that at least 24 of the
    numbers belong to business phones
  • If in fact 24 of the 100 numbers turn out to be
    business phones, does that cast series doubt on
    the manufacturers claim?
  • Find the expected value and standard deviation of
    the number of business phone numbers in the
    sample

33
Example
  • Assumed the stock market closed at 8,000
    yesterday.
  • Today you expect the market to rise a mean of 1
    point, with a standard deviation of 34 points.
    Assume a normal distribution.
  • What is the probability the market goes down
    tomorrow?
  • What is the probability the market goes up more
    than 10 points tomorrow?
  • What is the probability the market goes up more
    than 40 points tomorrow?
  • What is the probability the market goes up more
    than 60 points tomorrow?
  • Find the probability that the market changes by
    more than 20 points in either direction.
  • What is the value of k such that the market close
    exceeds k is 75 ?

34
Using R
  • factorial(n) n!
  • dbinom(x, n, p) binomial probability
    distribution function
  • pbinom(x, n, p) binomial cumulative
    distribution function
  • pnorm(q, mean, sd) normal cumulative
    distribution function
  • qnorm(p, mean, sd) inverse CDF

35
Homework 4
  • Hildebrand/Ott
  • 5.2, page 141
  • 5.3, page 141
  • 5.9, page 150
  • 5.14, page 150
  • 5.32, page 163
  • 5.33, page 163
  • 5.34, page 163
  • Reading Chapter 6 (all) and 7 (all).
  • Verzani
  • 6.5
Write a Comment
User Comments (0)
About PowerShow.com