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DCT2063 CHAPTER THREE PROBABILITY

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Title: DCT2063 CHAPTER THREE PROBABILITY


1
DCT2063CHAPTER THREEPROBABILITY
2
Content
  • 3.1 Basic Idea and Consideration
  • 3.2 Conditional Probability
  • 3.3 Independent Event
  • 3.4 Bayes Theorem

3
OBJECTIVES
  • After completing this chapter, you should be able
    to
  • Understand the basic concepts and basic laws of
    probability
  • Find the probability of an event
  • Solve the probability problems
  • Understand conditional and independent events
  • Find the probability of conditional and
    independents events
  • Understand and use the Bayes Theorem to solve
    probability problems

4
3.1 Basic Idea Consideration
  • Probability as a general concept can be defined
    as the chance of an event occurring. In addition
    to being used in games of chance, probability is
    used in the fields of insurance, investments, and
    weather forecasting, and in various areas.
  • Rules such as the fundamental counting rule,
    combination rule and permutation rules allow us
    to count the number of ways in which events can
    occur.
  • Counting rules and probability rules can be used
    together to solve a wide variety of problems.

5
Basic Concepts
  • A probability experiment is a chance process that
    leads to well-defined results called outcomes.
  • An outcome is the result of a single trial of a
    probability experiment.
  • A sample space is the set of all possible
    outcomes of a probability experiment.
  • An event consists of a subset or collection of
    outcomes from the sample space.
  • A simple event is an individual outcome from the
    sample space

6
Basic Concepts (contd.)
  • Venn diagrams are used to represent probabilities
    pictorially.
  • Equally likely events are events that have the
    same probability of occurring.

S
P(A)
7
Basic Concepts (contd.)
  • Combining Events

Union - is the set of outcomes that
belong either to A or B
Intersection - is the set of
outcomes that belong to
both A and B
Complement - is the set of outcomes that do
not belong to A
8
Basic Concepts (contd.)
  • Mutually Exclusive Events
  • The events A and B are said to be
  • mutually exclusive event if they have
  • no outcomes in common
  • A collection of events
  • is said to be mutually exclusive
  • if no two of them have
  • any outcome in common.

9
Axioms of Probability
  • Let S be a sample then
  • For any event A,
  • If A and B are mutually exclusive events, then
  • More generally, if
    are mutually exclusive, then
  • For any event A,
  • If S is a sample space containing N equally
    likely outcomes,
  • and if A is an event containing k outcomes,
    then
  • Let A and B be any events, then

10
3 Basic types of Probability
  • Classical probability
  • Empirical or frequency probability
  • Subjective probability

11
Classical Probability
  • Classical probability uses sample spaces to
    determine the numerical probability that an event
    will happen.
  • Classical probability assumes that all outcomes
    in the sample space are equally likely to occur
  • For any experiment and any event of A, thus the
    probability that the event A occurs,
    is given by

12
Example
  • If a family has 3 children, find the probability
    that all the children are boys.
  • When a single die is rolled, find the probability
    of getting a 9.
  • When a single die is rolled, what is the
    probability of getting a number less than 7?
  • If the probability that a person lives in an
    industrialized country of the world is 1/5, find
    the probability that a person does not live in an
    industrial company.

13
Empirical Probability
  • Empirical probability relies on actual experience
    to determine the likelihood of outcomes.
  • Given a frequency distribution, the probability
    of an event being in a given class is

14
Example
  • Hospital records indicated that maternity
    patients stayed in the hospital for the number of
    days shown in the distribution
  • Number of days stayed Frequency
  • 3
    15
  • 4
    32
  • 5
    56
  • 6
    19
  • 7
    5

  • 127
  • Find these probabilities.
  • A patient stayed exactly 5 days
  • A patients stayed less than 6 days
  • A patient stayed at most 4 days
  • A patient stayed at least 5 days

15
Solves problems involving linear inequalities
  • At least, minimum of, no less than
  • At most, maximum of, no more than
  • Is greater than, more than
  • Is less than, smaller than

16
Subjective Probability
  • Subjective probability uses a probability value
    based on an educated guess or estimate, employing
    opinions and inexact information.
  • In subjective probability, a person or group
    makes an educated guess at the chance that an
    event will occur. This guess is based on the
    persons experience and evaluation of a solution.

17
Examples
  • A seismology might say there is an 80
    probability that an earthquake will occur in a
    certain area
  • A doctor might say that on the basis of his
    diagnosis, there is a 30 chance the patient will
    survive in an operation.

18
3.2 Conditional Probability
Motivation 100 applicants for a post of lecturer
in KUKTEM are categorized through their gender
and experience.
19
Formula for Conditional Probability
  • The probability that the second event B occurs
    given that the first event A has occurred can be
    found dividing the probability that both events
    occurred by the probability that the first event
    has occurred. The formula is

20
Example 1
Given
Find i.
ii.
iii.
iv.
21
Examples
  • When a dice was thrown, the score was an odd
    number. What is the probability that it was a
    prime number?
  • A box contains black chips and white chips. A
    person selects 2 chips without replacement. If
    the probability of selecting a black chip and a
    white chip is 15/56 and the probability of
    selecting a black chip on the first draw is 3/8,
    find the probability of selecting the white chip
    on the second draw, given that the first chip
    selected was a black chip

22
Tree Diagram
P(BA ) , AB
B
P(A)
A
B
P(BA) , AB
P(BA ) , AB
B
A
P(A)
P(BA ) , AB
B
23
Example
  • We have 10 pieces of candy in a dish. We know
    that 5 pieces is red, 3 are green, and 2 are
    yellow. If we choose 2 pieces at random without
    looking, whats the probability that both are
    green?

24
Example
Event X and Y are such that
By drawing a tree diagram, find i.
ii.
25
3.4 Independent Event
26
Examples
27
Examples
28
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29
3.4 Bayes Theorem
30
Example 1
  • The proportion of people in a given community who
    have a certain disease is 0.005. A test is
    available to diagnose the disease. If a person
    has the disease, the probability that the test
    will produce a positive signal is 0.99. If a
    person does not have the disease, the probability
    that the test will produce a positive signal is
    0.01 If a person tests positive, what is the
    probability that the person actually has the
    disease?

31
Example 2
A record for a failed emission test is chosen at
random. Given, A1 Small engine car
A2 Medium engine car
A3 Large engine car
B failed emission test within 2 years
What is the probability that it is failed for a
car with a small engine?
32
Conclusion
  • Probability is the basis of inferential
    statistics
  • Predictions are based on probability
  • Hypothesis are tested by using probability

33
Thank You
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