Random Variables and Probability Distributions - PowerPoint PPT Presentation

1 / 15
About This Presentation
Title:

Random Variables and Probability Distributions

Description:

Random Variables and Probability Distributions Chapter 3 Probability and Statistics for engineering and scientists (6th edition) 3.1 Random Variables 3.1 Random ... – PowerPoint PPT presentation

Number of Views:163
Avg rating:3.0/5.0
Slides: 16
Provided by: 12897
Category:

less

Transcript and Presenter's Notes

Title: Random Variables and Probability Distributions


1
Random Variables and Probability Distributions
  • Chapter 3
  • Probability and Statistics
  • for engineering and scientists (6th edition)

2
3.1 Random Variables
  • Def.
  • Random variable is a real-valued function
  • defined on the sample space.

Ex 1 ) Toss two fair coins. Let X
the of heads. element x HH 2
HT 1 TH 1 TT 0
sample space
real numbers
X
3
3.1 Random Variables (cont)
Ex 2 ) Toss two fair dice. Let Y sum of
the two numbers. element y (1 , 1) 2
(1 , 2) , (2 , 1) 3 (1 , 3) , (2 , 2) ,
(3 , 1) 4 (6 , 6) 12 Ex 3 )
Flipping a coin until a head appears. Ex 4 )
Length of time between failures.
4
3.1 Random Variables (cont)
  • Types of Random Variables
  • Discrete R.V. count data , finite or countable
    (set of possible outcomes)
  • Continuous R.V. measured data, infinitely many
    values

Ex ) of IE majors at POSTECH in 2002 of
traffic accidents per year in Pohang weight of
grain produced per acre height of people over
20
5
3.2 Discrete Probability Distributions
  • probability mass function (pmf)
  • Properties 1) 2)
    3)

Ex 1 ) Toss two fair coins. X heads
element x probability HH 2 1/4
HT 1 1/4 TH 1 1/4 TT 0 1/4
x 0 1 2
f(x) P(X x ) ¼ ½ ¼
6
3.2 Discrete Probability Distributions (cont)
  • (Cumulative) distribution function (cdf or df)
  • Properties 1) 2)

for
3) 4) F(x) is nondecreasing
Ex 2) Toss two fair coins. X
heads x f(x) F(x) 0
1/4 1/4 1 1/2
3/4 2 1/4 1
7
3.3 Continuous Probability Distributions
  • P( X x ) 0 Why?
  • Calculate probabilities based on a range of
    values.
  • Probability Density Function (pdf) f(x)
  • Properties

Eg)

1)
2)
3)
8
3.3 Continuous Probability Distributions (cont)
Ex 1) (6 on p. 61) X shelf life of a
prescribed medicine.
, x gt 0
f(x)
0 , otherwise
f(x)
a ) P ( X gt 200 )
b ) P ( 80 ltX lt 120 )
x
9
3.3 Continuous Probability Distributions (cont)
  • Cumulative distribution function (cdf) F(x)
  • Properties

for
1)
2)
Ex 2) (20 on p. 62)
, 2 lt x lt 5
1) F(x)
2) P( 3 lt X lt 4)
10
3.5 Joint Probability Distributions
  • Record outcomes of several R.V.s.
  • eg ) P( X x, Y y) , P( a lt X lt b, c lt Y lt d)
  • Discrete Case
  • For any region A in the XY plane,

- Joint Probability Mass Function (or
joint pmf) if for all
1)
2)
3)
11
3.5 Joint Probability Distributions (cont)
  • Marginal Distributions
  • Conditional Distributions

, g(x) gt 0
, h(y) gt 0
12
3.5 Joint Probability Distributions (cont)
Ex 1) Quiz Scores X score on the first
quiz. Y score on the second quiz
a)
b)
c)
d)
e)
13
3.5 Joint Probability Distributions (cont)
  • Continuous Case
  • Marginal
  • Conditional

- Joint density function (Joint pdf)

1)
2)
3)
14
3.5 Joint Probability Distributions (cont)
Ex 2) (3.14 on p. 76) ,
, 0 , elsewhere
  • Find
  • P0ltXlt1, 0ltYlt1/2
  • g(x) and h(y)
  • f(xy)

15
3.5 Joint Probability Distributions (cont)
- Statistical Independence X Y are
independent if and only if f(x,y) g(x)h(y)
Generally, are
mutually statistically independent if and only
if
Ex 3) (3.14 on p. 76) X and Y are independent ?
Ex 4) Two balls are selected at random from a
box. (3.8 on p.70)
  • X blue balls Y red balls
  • Joint pmf of X and Y ?
  • Are they independent ?
Write a Comment
User Comments (0)
About PowerShow.com