ka-fu wong © 2004 econ1003: analysis of economic data lesson4-1 lesson 4: discrete probability...
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Lesson4-1 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Lesson 4:
Discrete Probability Distributions
Lesson4-2 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Outline
Random variables and probability distribution
Features of univariate probability distribution
Features of bivariate probability distribution
Marginal distribution and Conditional distribution
Expectation and conditional expectation
Variance, Covariance and Correlation Coefficient
Binomial Probability Distribution
Hypergeometric Probability Distribution
Poisson Probability Distribution
Lesson4-3 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Random Variables and probability distribution
A random variable is a numerical value determined by the outcome of an experiment. A random variable is often denoted by a capital letter, e.g., X or Y.
A probability distribution is the listing of all possible outcomes of an experiment and the corresponding probability.
Lesson4-4 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Types of Probability Distributions
A discrete probability distribution can assume only certain outcomes (need not be finite) – for random variables that take discrete values. The number of students in a class. The number of children in a family.
A continuous probability distribution can assume an infinite number of values within a given range – for random variables that take continuous values. The distance students travel to class. The time it takes an executive to drive to work. The amount of money spent on your last haircut.
Lesson4-5 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Types of Probability Distributions
Number of random variables
Joint distribution
1 Univariate probability distribution
2 Bivariate probability distribution
3 Trivariate probability distribution
… …
n Multivariate probability distribution
Probability distribution may be classified according to the number of random variables it describes.
Lesson4-6 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Features of a Univariate Discrete Distribution
Let x1,…,xN be the list of all possible outcomes (N of them).
The main features of a discrete probability distribution are: The probability of a particular outcome, P(xi), is between
0 and 1.00. The sum of the probabilities of the various outcomes is
1.00. That is, P(x1) + … + P(xN) = 1
The outcomes are mutually exclusive. That is, P(x1and x2) = 0 and P(x1or x2) = P(x1)+ P(x2)
Generally, for all i not equal to k.P(xi and xk) = 0.
P(xi or xk) = P(xi)+ P(xk)
Outcome
Prob.
x1 P(x1)
x2 P(x2)
… …
xN P(xN)
Lesson4-7 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Features of a Univariate Discrete Distribution
x Prob.
1 0.2
2 0.3
3 0.1
1 0.4
Can the following be a probability distribution of a random variable?
x Prob.
1 0.6
2 0.3
3 0.1
event Prob.
1 or 2 0.6
2 or 3 0.3
3 or 1 0.1
Lesson4-8 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE: Univariate probability distribution
Consider a random experiment in which a coin is tossed three times. Let x be the number of heads. Let H represent the outcome of a head and T the outcome of a tail.
The possible outcomes for such an experiment will be: TTT, TTH, THT, THH, HTT, HTH, HHT, HHH.
Thus the possible values of x (number of heads) are
From the definition of a random variable, x as defined in this experiment, is a random variable.
P(x=0) =1/8P(x=1) =3/8P(x=2) =3/8P(x=3) =1/8
If the coin is fair
x=0: TTTx=1: TTH, THT, HTT x=2: THH, HTH, HHTx=3: HHH
Lesson4-9 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Features of a Bivariate Discrete Distribution
If X and Y are discrete random variables, we may define their joint probability function as PXY(xi,yi)
Let (x1,…,xR) and (y1,…,yS) be the list of all possible outcomes for X and Y respectively.
The main features of a bivariate discrete probability distribution are: The probability of a particular outcome, PXY(xi,yi) is
between 0 and 1. The sum of the probabilities of the various outcomes is
1.00. That is, PXY(x1,y1) + PXY(x2,y1) +…+ PXY(xR,y1) + + … + PXY(xR,yS) = 1
The outcomes are mutually exclusive. That is, if xi not equal to xk, or yi not equal to yk
PXY((xi,yi) and (xk,yk)) = 0 and PXY((xi,yi) or (xk,yk)) = PXY(xi,yi) + PXY(xk,yk)
Lesson4-10 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Example: Bivariate Discrete Distribution
y1 y2 y3 y4
x1 P(x1,y1) P(x1,y2) P(x1,y3) P(x1,y4)
x2 P(x2,y1) P(x2,y2) P(x2,y3) P(x2,y4)
x3 P(x3,y1) P(x3,y2) P(x3,y3) P(x3,y4)
X takes 3 possible values and Y takes 4 possible values.
Lesson4-11 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE: Bivariate distribution
Rainy Not Rainy Totals
HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
The joint distribution of the movement of Hang Seng Index (HSI) and weather is shown in the following table.
Lesson4-12 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE: Bivariate distribution
Rainy Not Rainy Totals
HSI falls 0 a
HSI rises 0 b
Totals 0
The joint distribution of the movement of Hang Seng Index (HSI) and weather is shown in the following table.
PX|Y(x | y) = P(X = x | Y = y)=P(x,y)/P(y) if P(Y = y) > 0PX|Y(x | y) =0 if P(Y = y) = 0
P(HSI falls|Rainy) = P(HSI falls, Rainy) / P(Rainy)= 0/0
Suppose …..
Forcing P(HSI falls|Rainy) in the definition eliminates the difficulty in interpreting 0/0.
Lesson4-13 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Marginal Distributions
The marginal probability function of X.PX(x) = yPXY(x, y) = PXY(x, y1) +PXY(x, y2) +…+ PXY(x, yn)
P(HSI falls)= P(HSI falls and rainy) + P(HSI falls and not rainy)P(HSI rises)= P(HSI rises and rainy) + P(HSI rises and not rainy)
The double sum xyPXY(x, y)
= P(HSI falls and rainy) + P(HSI falls and not rainy)+ P(HSI rises and rainy) + P(HSI rises and not rainy)
= P(HSI falls)+P(HSI rises)= 1
Y
Rainy Not Rainy Totals
X HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
Lesson4-14 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Marginal Distributions
The marginal probability function of X.yPXY(x, y) = PX(x).
The marginal probability function of Y.xPXY(x, y) = PY(y).
The double sum yxPXY(x, y) = 1
Y
Rainy Not Rainy Totals
X HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
Lesson4-15 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Conditional Distributions
The conditional probability function of X given Y:PX|Y(x | y) = P(X = x | Y = y) = PXY(x,y)/PY(y) if P(Y = y) >
0PX|Y(x | y) =0 if P(Y =
y) = 0
Y
Rainy Not Rainy Totals
X HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
Note that PX|Y(x | y) when P(Y = y) = 0 is undefined using the top formula.
Lesson4-16 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Conditional Distributions
For each fixed y this is a probability function for X, i.e. the conditional probability function is non-negative and
XPX|Y(x | y) = PX|Y(x1 | y)+ PX|Y(x2 | y)
= PX,Y(x1, y)/ PY(y) + PX,Y(x2, y)/ PY(y)
=[PX,Y(x1, y) + PX,Y(x2, y)]/ PY(y)
=1.
Y
Rainy Not Rainy Totals
X HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
Lesson4-17 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Conditional Distributions
The conditional probability function of X given Y:PX|Y(x | y) = P(X = x | Y = y) if P(Y = y) > 0
PX|Y(x | y) =0 if P(Y = y) = 0 For each fixed y this is a probability function for X, i.e.
the conditional probability function is non-negative and XPX|Y(x | y) = 1.
By the definition of conditional probability, PX|Y(x | y) = PX,Y(x, y)/ PY(y).
E.g., P(HSI rises| Rainy) = 0.2/0.35. When X and Y are independent,
PX|Y(x | y) is equal to PX(x).
Y
Rainy Not Rainy Totals
X HSI falls 0.15 0.4 0.55
HSI rises 0.2 0.25 0.45
Totals 0.35 0.65 1.0
Lesson4-18 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Example: Conditional Distributions
Y
Rainy Not Rainy Totals
P(X|Rainy) P(X| Not Rainy)
X HSI falls 0.15 0.4 0.55 0.15/0.35 0.4/0.65
HSI rises 0.2 0.25 0.45 0.2/0.35 0.25/0.65
Totals 0.35 0.65 1.0 1.0 1.0
P(Y|HSI falls)
0.15/0.55
0.4/0.55 1.0
P(Y|HSI rises)
0.2/0.45 0.25/0.45 1.0
PX|Y(x | y) = PX,Y(x, y)/ PY(y).
PY|X(y | x) = PX,Y(x, y)/ PX(x).
Lesson4-19 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Transformation of Random variables
A transformation of random variable(s) results in a new random variable.
For example, if X and Y are random variables, the following are also random variables: Z=2X Z=3+2X Z=X2
Z=log(X) Z=X+Y Z=X2+Y2
Lesson4-20 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The Expectation (mean) of a Discrete Probability Distribution
The expectation (mean): reports the central location of the data. is the long-run average value of the random
variable. That is, the average of the outcomes of many experiments.
is also referred to as its expected value, E(X), in a probability distribution.
Is also known as first moment of a random variable.
is a weighted average.
Lesson4-21 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Moments of a random variable
E(X) First moment
E(X2) Second moment
The n-th moment is defined as the expectation of the n-th power of a random variable: E(Xn)
E(X-)2 Second centralized moment
E(X-)3 Third centralized moment
The n-th centralized moment is defined as: E[X-E(X)]n
Lesson4-22 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The Expectation (Mean) of Discrete Probability Distribution
For univariate probability distribution, the expectation or mean E(X) is computed by the formula:
For bivariate probability distribution, the the expectation or mean E(X) is computed by the formula:
)P(xx ... )P(x x )P(x x
Σ[xP(x)]E(x)
nn2211
)y,(xPx )y,(xPx )y,(xPx
...
)y,(xPx )y,(xPx )y,(xP x
y)](x,[xPΣΣE(x)
nnYX,nn2YX,2n1YX,1
1nYX,n12YX,211YX,1
YX,XY
...
...
Lesson4-23 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Conditional Mean of Bivariate Discrete Probability Distribution
For bivariate probability distribution, the conditional expectation or conditional mean E(X|Y) is computed by the formula:
Unconditional expectation or mean of X, E(X)
)y|(xPx )y|(xPx )y|(xP x
)]y|(x[xPΣ)yY|E(X
inY|Xni2Y|X2i1Y|X1
iY|XXi
...
][
[
X
iYiY
μE
Y)]|E(XE
)(y)PyY|E(XΣ E(X)
Lesson4-24 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Expectation of a linear transformed random variable
If a and b are constants and X is a random variable, then E(a) = aE(bX) = bE(X)E(a+bX) = a+bE(X)
bE(x)a
] )P(xx ...)P(xx )P(xb[x)]P(x)P(x )a[P(x
)P(xbx )aP(x ...)P(xbx )aP(x )P(xbx )aP(x
))P(xx ... ))P(xx(a ))P(xbx(a
bx)P(x)]Σ[(a
bx)]bx)P(aΣ[(abx)E(a
nn2211n21
nnn222111
nn2211
...
( bab
Lesson4-25 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The Variance of a Discrete Probability Distribution
The variance measures the amount of spread (variation) of a distribution.
The variance of a discrete distribution is denoted by the Greek letter 2 (sigma squared).
The standard deviation is the square root of 2.
Lesson4-26 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The Variance of a Discrete Probability Distribution
For univariate discrete probability distribution
For bivariate discrete probability distribution
)P(xμ)(x ... )P(xμ)(x )P(xμ)(x
P(x)]μ)Σ[(x
]μ)E[(XXV
n2
n22
212
1
2
2
)(
)y,(xP)μ-x )y,(xP)μ-x )y,(xP)μ-(x
...
)y,(xP)μ-x )y,(xP)μ-x )y,(xP)μ-(x
y)](x,P)μ-[(xΣΣ
])μE[(XV
nnYX,2
Xnn2YX,2
X2n1YX,2
X1
1nYX,2
Xn12YX,2
X211YX,2
X1
YX,2
XXY
2X
(...(
(...(
)(
X
Lesson4-27 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Variance of a linear transformed random variable
If a and b are constants and X is a random variable, then V(a) = 0V(bX) = b2V(X)V(a+bX) = b2V(X)
V(X)b
] μ)(X E[ b
] μ)(Xb E[
] μ)b(X E[
] bμbX E[
] ) bμabXa E[bXaV
2
22
22
2
2
2
()(
Lesson4-28 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The Covariance of a Bivariate Discrete Probability Distribution
y)](x,)Pμ)(Yμ-[(xΣΣ
)]μ)(YμE[(XC
YX,YXXY
YX
),( YX
Covariance measures how two random variables co-vary.
E[X]E[Y]E[XY]
μμE[XY]
μμ μμμμE[XY]
μμ E[X]μE[Y]μE[XY]
]μμX μYμE[XY
)]μ)(YμE[(XC
YX
YXXYYX
YXYX
YXYX
YX
),( YX
Lesson4-29 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Covariance of linear transformed random variables
If a and b are constants and X is a random variable, then C(a,b) = 0C(a,bX) = 0C(a+bX,Y) = bC(X,Y)
Y)bC(X,
)μμ)(YE(X b
)μ](Y ) μb(X E[
)μ](Y bμbX E[
)μ](Y ) bμabXa E[YbX,aC
Y
YX
YX
YX
()(
Lesson4-30 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Variance of a sum of random variables
If a and b are constants and X and Y are random variables, then
V(X+Y) = V(X) + V(Y) + 2C(X,Y)V(aX+bY) =a2V(X) + b2V(Y) + 2abC(X,Y)
Y)C(X,
)]μ)(YμE[(X)μ(YE ]) μ(X E[
)]μ)(Yμ(X)μ(Y ) μ(X E[
)]μ(Y)μ(X E[
] )μ μY XE[YXV
YX2
Y2
X
YX2
Y2
X
2YX
2YX
2)()(
2[
2
()(
YVXV
Y)C(X,a
)]μ)(YμE[(X)μ(YE ]) μ(X E[a
)]μ)(bYμ(aX)μ(Y ) μ(Xa E[
)]μ(bY)μ(aX E[
] )μ μYaX E[YXV
22
YX2
Y22
X2
YX2
Y22
X2
2YX
2YX
abYVbXV
abb
bab
ba
babba
2)()(
2[
2
()(
Lesson4-31 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Correlation coefficient
The strength of the dependence between X and Y is measured by the correlation coefficient:
V(X)V(Y)Y)C(X,
Y)rr(X,C o
Lesson4-32 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
Dan Desch, owner of College Painters, studied his records for the past 20 weeks and reports the following number of houses painted per week:
Probability, P(x)
.25
.30
.35
.10
1.00
Number of houses painted, x W e e k s
10 5
11 6
12 7
13 2
Total 20
Lesson4-33 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
Compute the mean and variance of the number of houses painted per week and:
x P(x)
10 .25 11 .30
12 .35
13 .10 Total 1.00
11.3
(13)(.10)(12)(.35)(11)(.30)(10)(.25)
Σ[xP(x)]E(x)μ
0.91
0.28900.17150.02700.4225
(.10)11.3)(13...(.25)11.3)(10
P(x)]μ)Σ[(xσ22
22
Lesson4-34 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Binomial Probability Distribution
The binomial distribution has the following characteristics: An outcome of an experiment is classified into one of
two mutually exclusive categories, such as a success or failure.
The data collected are the results of counts in a series of trials.
The probability of success stays the same for each trial. The trials are independent.
For example, tossing an unfair coin three times. H is labeled success and T is labeled failure. The data collected are number of H in the three tosses. The probability of H stays the same for each toss. The results of the tosses are independent.
Lesson4-35 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Binomial Probability Distribution
To construct a binomial distribution, let n be the number of trials x be the number of observed successes be the probability of success on each trial
The formula for the binomial probability distribution is:
P(x) = nCx x(1- )n-x
Lesson4-36 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The density functions of binomial distributions with n=20 and different success rates p
Lesson4-37 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
x = number of patients who will experience nausea following treatment with Phe-Mycin
2 4-2 2 24!p(2) P(x=2)= (0.1) (0.9) =6(0.1) (0.9) =0.0486
2!(4-2)!
Find the probability that 2 of the 4 patients treated will experience nausea.
n = 4 , p = 0.1 , q = 1 – p = 1 - 0.1 = 0.9
Lesson4-38 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Binomial Probability Distribution
The formula for the binomial probability distribution is:P(x) = nCx x(1- )n-x
TTT, TTH, THT, THH, HTT, HTH, HHT, HHH.
X=number of heads The coin is fair, i.e., P(head) = 1/2.
P(x=0) = 3C0 0.5 0(1- 0.5)3-0 =3!/(0!3!) (1) (1/8)=1/8
P(x=1) = 3C1 0.5 1(1- 0.5)3-1 =3!/(1!2!) (1) (1/8)= 3/8
P(x=2) = 3C2 0.5 2(1- 0.5)3-2 =3!/(2!1!) (1) (1/8)= 3/8
P(x=3) = 3C3 0.5 3(1- 0.5)3-3 =3!/(3!0!) (1) (1/8)= 1/8
When the coin is not fair, simple counting rule will not work.
r)!(nr!n!
Crn
Lesson4-39 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Mean & Variance of the Binomial Distribution
The mean is found by:
The variance is found by:
n
)1(2 n
Lesson4-40 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
The Alabama Department of Labor reports that 20% of the workforce in Mobile is unemployed. From a sample of 14 workers, calculate the following probabilities: Exactly three are unemployed. At least three are unemployed. At least one are unemployed.
Lesson4-41 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
The probability of exactly 3:
The probability of at least 3 is:
The probability of at least one being unemployed:
2501.)0859)(.0080)(.364(
)20.1()20(.)3( 113314
CP
551.000....172.250.
)80(.)20(....)80(.)20(.)3( 0141414
113314
CCxP
.956.0441
.20)(1(.20)C1
P(0)11)P(x140
014
Lesson4-42 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
Since =.2 and n=14.
Hence, the mean is:= n = 14(.2) = 2.8.
The variance is:2 = n (1- ) = (14)(.2)(.8) =2.24.
Lesson4-43 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Finite Population
A finite population is a population consisting of a fixed number of known individuals, objects, or measurements. Examples include: The number of students in this class. The number of cars in the parking lot.
Lesson4-44 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Hypergeometric Distribution
The hypergeometric distribution has the following characteristics: There are only 2 possible outcomes. The probability of a success is not the same on
each trial. It results from a count of the number of
successes in a fixed number of trials.
Lesson4-45 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE
R1
B1
R2
B2
R2
B2
7/12
5/12
6/11
5/11
7/11
4/11
In a bag containing 7 red chips and 5 blue chips you select 2 chips one after the other without replacement.
The probability of a success (red chip) is not the same on each trial.
Lesson4-46 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Hypergeometric Distribution
The formula for finding a probability using the hypergeometric distribution is:
where N is the size of the population, S is the number of successes in the population, x is the number of successes in a sample of n observations.
nN
xnSNxS
C
CCxP
))(()(
Lesson4-47 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Hypergeometric Distribution
Use the hypergeometric distribution to find the probability of a specified number of successes or failures if: the sample is selected from a finite population
without replacement (recall that a criteria for the binomial distribution is that the probability of success remains the same from trial to trial)
the size of the sample n is greater than 5% of the size of the population N .
Lesson4-48 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
The density functions of hypergeometric distributions with N=100, n=20 and different success rates p (=S/N).
Lesson4-49 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE: Hypergeometric Distribution
The National Air Safety Board has a list of 10 reported safety violations. Suppose only 4 of the reported violations are actual violations and the Safety Board will only be able to investigate five of the violations. What is the probability that three of five violations randomly selected to be investigated are actually violations?
238.252
)15(4))((
))(()3(
510
2634
510
2541034
C
CC
C
CCP
Lesson4-50 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Poisson Probability Distribution
The binomial distribution becomes more skewed to the right (positive) as the probability of success become smaller.
The limiting form of the binomial distribution where the probability of success is small and n is large is called the Poisson probability distribution.
The formula for the binomial probability distribution is:P(x) = nCx x(1- )n-x
Lesson4-51 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Poisson Probability Distribution
The Poisson distribution can be described mathematically using the formula:
where is the mean number of successes in a particular interval of time, e is the constant 2.71828, and x is the number of successes.
!)(
x
exP
x
Lesson4-52 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Poisson Probability Distribution
The mean number of successes can be determined in binomial situations by n , where n is the number of trials and the probability of a success.
The variance of the Poisson distribution is also equal to n .
X, the number of success generally has no specific upper limit.
Probability distribution always skewed to the right. Becomes symmetrical when gets large.
Lesson4-53 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
EXAMPLE: Poisson Probability Distribution
The Sylvania Urgent Care facility specializes in caring for minor injuries, colds, and flu. For the evening hours of 6-10 PM the mean number of arrivals is 4.0 per hour. What is the probability of 2 arrivals in an hour?
1465.!2
4!
)(42
e
xe
xPx
Lesson4-54 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Example: Poisson Probabilities
x = number of Cleveland air traffic control errors during one week
= 0.4 (expected number of errors per week)
Find the probability that 3 errors will occur in a week.
.0072=3!
)4.0(e=3)=P(x p(3)
34.-0
Lesson4-55 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Mean and Variance of a Poisson Random Variable
If x is a Poisson random variable with parameter , then
Standard Deviation 2xx =
=X Mean
=2x
Variance
Lesson4-56 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
Several Poisson Distributions
Lesson4-57 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
What distributions to use?
Poisson considers the number of times an event occurs over an INTERVAL of TIME or SPACE. Note that we are not considering a sample of given number of observations. Thus, if we are considering a sample of 10
observations and we are asked to compute the probability of having 6 successes, we should not use Poisson. Instead, we should consider Binomial or Hypergeometric.
Hypergeometric consider the number of successes in a sample when the probability of success varies across trials due to “without replacement” sampling strategy. To compute the Hypergeometric probability, one will need to know N and S separately. Suppose we know that the probability of success is
0.3. We are considering a sample of 10 observations and we are asked to compute the probability of having 6 successes. We cannot use Hypergeometric because we do not have N and S separately. Instead, we have to use Binomial.
Lesson4-58 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
What distributions to use?Example
First, we recognize that it is not Poisson because "4 of the disks are inspected" (i.e., sample size =4).
Second, it is sampling without replacement because if we were to inspect four disks for defects, we will not want to sample with replacement.
Third, both N (15 hard disks) and S (5 are defective) are given. Hence we will use Hypergeometric.
In a shipment of 15 hard disks, 5 are defective. If 4 of the disks are inspected, what is the probability that exactly 1 is defective?
Lesson4-59 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
What distributions to use?Example
First, we recognize that it is not Poisson because 8 cars are “inspected" (i.e., sample size =8).
Second, it is sampling without replacement because if we were to inspect all 8 cars for defects, we will not want to sample with replacement.
Third, both N (48 cars) and S (12 have defective radio) are given. Hence we will use Hypergeometric.
From an inventory of 48 cars being shipped to local automobile dealers, 12 have had defective radios installed. What is the probability that one particular dealership receiving 8 cars obtains all with defective radios?
Lesson4-60 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
What distributions to use?Example
First, we recognize that it is likely Poisson because “on a given day”.
Second, we are asked to compute the probability of the number of claims larger than some number. There is no limit on the number of claims that can arrive in a given day.
Third, “average per day” is given. Hence we will use Poisson.
The number of claims for missing baggage for a well-known airline in a small city averages nine per day. What is the probability that, on a given day, there will be fewer than three claims made?
Lesson4-61 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
What distributions to use?Example
First, we recognize that it is not Poisson because 20 customers place orders (i.e., sample size =20).
Second, the probability of drawing a particular type of customers appears the same across trials because “the probability of customers exceeding their credit limit is 0.05”.
Hence we will use Binomial.
When a customer places an order with Rudy’s on-Line Office Supplies, a computerized accounting information system (AIS) automatically checks to see if the customer has exceeded his or her credit limit. Past records indicate that the probability of customers exceeding their credit limit is 0.05. Suppose that, on a given day, 20 customers place orders. What is the probability that zero customers will exceed their limits?
Lesson4-62 Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data
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Lesson 4: Lesson 4: Discrete Probability Distributions