Title: COMMONLY USED PROBABILITY DISTRIBUTION
1COMMONLY USED PROBABILITY DISTRIBUTION
2CONTENT
- 3.1 Binomial Distribution
- 3.2 Poisson Distribution
- 3.3 Normal Distribution
- 3.4 Central Limit Theorem
- 3.5 Normal Approximation to the Binomial
Distribution - 3.6 Normal Approximation to the Poisson
Distribution - 3.7 Normal Probability Plots
3OBJECTIVES
- At the end of this chapter, you should be able to
- Explain what a Binomial Distribution, identify
binomial experiments and compute binomial
probabilities - Explain what a Poisson Distribution, identify
Poisson experiments and compute Poisson
probabilities - Find the expected value (mean), variance, and
standard deviation of a binomial experiment and a
Poisson experiment . - Identify the properties of the normal
distribution. - Find the area under the standard normal
distribution, given various z values. - Find probabilities for a normally distributed
variable by transforming it into a standard
normal variable.
4OBJECTIVES, Cont
- At the end of this chapter, you should be able to
- Find specific data values for given percentages,
using the standard normal distribution - Use the central limit theorem to solve problems
involving sample means for large samples - Use the normal approximation to compute
probabilities for a Binomial variable. - Use the normal approximation to compute
probabilities for a Poisson variable. - Plot and interpret a Normal Probability Plot
53.1 Binomial Distribution
- A Binomial distribution results from a procedure
that meets all the following requirements - The procedure has a fixed number of trials ( the
same trial is repeated) - The trials must be independent
- Each trial must have outcomes classified into 2
relevant categories only (success failure) - The probability of success remains the same in
all trials
- Example toss a coin, Baby is born, True/false
question, product, etc ...
6Binomial Experiment or not ?
- An advertisement for Vantin claims a 77 end of
treatment clinical success rate for flu
sufferers. Vantin is given to 15 flu patients who
are later checked to see if the treatment was a
success. - A study showed that 83 of the patients receiving
liver transplants survived at least 3 years. The
files of 6 liver recipients were selected at
random to see if each patients was still alive. - In a study of frequent fliers (those who made at
least 3 domestic trips or one foreign trip per
year), it was found that 67 had an annual income
over RM35000. 12 frequent fliers are selected at
random and their income level is determined.
7Notation for the Binomial Distribution
Then, X has the Binomial distribution with
parameters n and p denoted by X Bin (n, p)
which read as X is Binomial distributed with
number of trials n and probability of success p
8Binomial Probability Formula
9Examples
- A fair coin is tossed 10 times. Let X be the
number of heads that appear. What is the
distribution of X? - A lot contains several thousand components. 10
of the components are defective. 7 components are
sampled from the lot. Let X represents the number
of defective components in the sample. What is
the distribution of X ?
10Solves 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, fewer than
11Examples
- Find the probability distribution of the random
variable X if X Bin (10, 0.4). - Find also P(X 5) and P(X lt 2).
- Then find the mean and variance for X.
- A fair die is rolled 8 times. Find the
probability that no more than 2 sixes comes up.
Then find the mean and variance for X.
12Examples
- A survey found that, one out of five Malaysians
say he or she has visited a doctor in any given
month. If 10 people are selected at random, find
the probability that exactly 3 will have visited
a doctor last month. - A survey found that 30 of teenage consumers
receive their spending money from part time jobs.
If 5 teenagers are selected at random, find the
probability that at least 3 of them will have
part time jobs.
13Solve Binomial problems by statistics table
- Use Cumulative Binomials Probabilities Table
- n number of trials
- p probability of success
- k number of successes in n trials X
- It give P (X k) for various values of n and p
- Example n 2 , p 0.3
- Then P (X 1) 0.9100
- Then P (X 1) P (X 1) - P (X 0) 0.9100
0.4900 0.4200 - Then P (X 1) 1 - P (X lt1) 1 - P (X 0) 1
0.4900 0.5100 - Then P (X lt 1) P (X 0) 0.4900
- Then P (X gt 1) 1 - P (X 1) 1- 0.9100
0.0900
14Using symmetry properties to read Binomial tables
- In general,
- P (X k X Bin (n, p)) P (X n - k X
Bin (n,1 - p)) - P (X k X Bin (n, p)) P (X n - k X
Bin (n,1 - p)) - P (X k X Bin (n, p)) P (X n - k X
Bin (n,1 - p)) - Example n 8 , p 0.6
- Then P (X 1) P (X 7 p 0.4) P ( 1 - X
6 p 0.4) - 1 0.9915 0.0085
- Then P (X 1) P (X 7 p 0.4)
- P (X 7 p 0.4) - P (X 6 p
0.4) - 0.9935 0.9915 0.0020
- Then P (X 1) P (X 7 p 0.4) 0.9935
- Then P (X lt 1) P (X gt 7 p 0.4) P ( 1 - X
7 p 0.4) - 1 0.9935 0.0065
15Examples
- Given that n 12 , p 0.25. Then find
- P (X 3)
- P (X 7)
- P (X 5)
- P (X lt 2)
- P (X gt 10)
- Given that n 9 , p 0.7. Then find
- P (X 4)
- P (X 8)
- P (X 3)
- P (X lt 5)
- P (X gt 6)
16Example
- A large industrial firm allows a discount on any
invoice that is paid within 30 days. Of all
invoices, 10 receive the discount. In a company
audit, 12 invoices are sampled at random. - What is probability that fewer than 4 of 12
sampled invoices receive the discount? - Then, what is probability that more than 1 of the
12 sampled invoices received a discount.
17Example
- A report shows that 5 of Americans are afraid
being alone in a house at night. If a random
sample of 20 Americans is selected, find the
probability that - There are exactly 5 people in the sample who are
afraid of being alone at night - There are at most 3 people in the sample who are
afraid of being alone at night - There are at least 4 people in the sample who are
afraid of being alone at night
184.4 Poisson Distribution
- The Poisson distribution is a discrete
probability distribution that applies to
occurrences of some event over a specified
interval ( time, volume, area etc..) - The random variable X is the number of
occurrences of an event over some interval - The occurrences must be random
- The occurrences must be independent of each other
- The occurrences must be uniformly distributed
over the interval being used
- Example of Poisson distribution
- The number of emergency call received by an
ambulance control in an hour. - The number of vehicle approaching a bus stop in a
5 minutes interval. - 3. The number of flaws in a meter length of
material
19Poisson Probability Formula
- ?, mean number of occurrences in the given
interval is known and finite - Then the variable X is said to be
- Poisson distributed with
mean ? - X Po (?)
20Example
- A student finds that the average number of
amoebas in 10 ml of ponds water from a particular
pond is 4. Assuming that the number of amoebas
follows a Poisson distribution, find the
probability that in a 10 ml sample, - there are exactly 5 amoebas
- there are no amoebas
- there are fewer than three amoebas
21Example
- On average, the school photocopier breaks down 8
times during the school week (Monday - Friday).
Assume that the number of breakdowns can be
modeled by a Poisson distribution.
Find the probability that it breakdowns, - 5 times in a given week
- Once on Monday
- 8 times in a fortnight
22Solve Poisson problems by statistics table
- Given that X Po (1.6). Use cumulative Poisson
probabilities table to find - P (X 6)
- P (X 5)
- P (X 3)
- P (X lt 1)
- P (X gt 10)
- Find also the smallest integer n such that
P ( X gt n) lt 0.01
23Example
- A sales firm receives, on the average, three
calls per hour on its toll-free number. For any
given hour, find the probability that it will
receive the following - At most three calls
- At least three calls
- 5 or more calls
24Example
- The number of accidents occurring in a weak in a
certain factory follows a Poisson distribution
with variance 3.2. - Find the probability that in a given fortnight,
- exactly seven accidents happen.
- More than 5 accidents happen.
25Using the Poisson distribution as an
approximation to the Binomial distribution
- When n is large (n gt 50) and p is small (p lt
0.1), the Binomial distribution X Bin (n, p)
can be approximated using a Poisson distribution
with X Po (?) where mean, ? np lt 5. - The larger the value of n and the smaller the
value of p, the better the approximation.
26Example
- Eggs are packed into boxes of 500. On average 0.7
of the eggs are found to be broken when the
eggs are unpacked. - Find the probability that in a box of 500 eggs,
- Exactly three are broken
- At least two are broken
27Example
- If 2 of the people in a room of 200 people are
left-handed, find the probability that - exactly five people are left-handed.
- At least two people are left-handed.
- At most seven people are left-handed.