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3. Random Variables
(Fig.3.1)
1
Random Variables
If A X 1 ( B) belongs to the associated field F, then the
probability of A is well defined .
in that case we can say :
Probabilit y of the event " X ( ) B " P( X 1 ( B)). (3-1)
Random Variable (r.v): A finite single valued
function X ( ) that maps the set of all experimental outcomes
into the set of real numbers R is said to be a r.v, if the set | X ( ) x
is an event ( F )for every x in R.
2
Random Variables
X :r.v, X 1 ( B) F
B represents semi-infinite intervals of the form { x a}
The Borel collection B of such subsets of R is the
smallest -field of subsets of R that includes all semiinfinite intervals of the above form.
if X is a r.v, then
(3-2)
| X ( ) x X x
is an event for every x.
3
Distribution Function
P | X ( ) x FX ( x) 0.
(3-3)
The role of the subscript X in (3-3) is only to identify the
actual r.v.
FX (x)
is said to the Probability Distribution
Function associated with the r.v X.
4
Properties of a PDF
if g(x) is a distribution function, then
(i) g ( ) 1, g ( ) 0,
(ii) if x1 x2 , then g ( x1 ) g ( x2 ),
(iii) g ( x ) g ( x ),for all x.
(3-4)
5
Properties of a PDF
Suppose FX (x) defined in (3-3)
(i) FX () P | X ( ) P() 1
(3-5)
(3-6)
and FX () P | X ( ) P( ) 0.
(ii) I f x1 x2 , then the subset (, x1 ) (, x2 ).
Consequently the event | X ( ) x1 | X ( ) x2 ,
since X ( ) x1 implies X ( ) x2 . As a result
FX ( x1 ) P X ( ) x1 P X ( ) x2 FX ( x2 ),
(3-7)
=>the probability distribution function is nonneg ative
and monotone nondecreasing.
6
Properties of a PDF
(iii) Let x xn xn1 x2 x1, and consider the event
since
Ak | x X ( ) xk .
(3-8)
x X ( ) xk X ( ) x X ( ) xk ,
(3-9)
using mutually exclusive property of events we get
P( Ak ) Px X ( ) xk FX ( xk ) FX ( x).
(3-10)
But Ak 1 Ak Ak 1 , and hence
lim Ak Ak and hence lim P( Ak ) 0.
k
k 1
k
(3-11)
7
Properties of a PDF
Thus
lim P( Ak ) lim FX ( xk ) FX ( x) 0.
k
k
lim
x
x
, the right limit of x, and hence
But k k
FX ( x ) FX ( x),
(3-12)
i.e., FX (x) is right-continuous, justifying all properties of
a distribution function.
8
Additional Properties of a PDF
(iv) If FX ( x0 ) 0 for some x0 , then FX ( x ) 0, x x0 .
(3-13)
This follows, since FX ( x0 ) P X ( ) x0 0 implies X ( ) x0
is the null set, and for any x x0 , X ( ) x will be a
subset of the null set.
(v) P X ( ) x 1 FX ( x).
(3-14)
We have X ( ) x X ( ) x
(vi) P x1 X ( ) x2 FX ( x2 ) FX ( x1 ), x2 x1.
(3-15)
The events X ( ) x1 and {x1 X ( ) x2} are mutually
exclusive and their union represents the event X ( ) x2 .
9
Additional Properties of a PDF
(vii)
Let
P X ( ) x FX ( x) FX ( x ).
x1 x , 0,
and x2 x. From (3-15)
lim P x X ( ) x FX ( x ) lim FX ( x ),
0
0
(3-16)
(3-17)
or P X ( ) x FX ( x) FX ( x ).
(3-18)
Thus the only discontinuities of a distribution function FX (x)
occur at points x0 where
P X ( ) x0 FX ( x0 ) FX ( x0 ) 0.
(3-19)
is satisfied.
10
continuous-type & discrete-type r.v
X is said to be a continuous-type r.v if FX ( x ) FX ( x)
And from P X ( ) x0 FX ( x0 ) FX ( x0 ) 0.
=>
If F
PX x 0.
(x) is constant except for a finite number of jump
discontinuities (piece-wise constant; step-type), then
X is said to be a discrete-type r.v. Ifxi is such a
discontinuity point, then
X
pi PX xi FX ( xi ) FX ( xi ).
(3-20)
11
Example
Example 3.1: X is a r.v such that X ( ) c, .Find FX (x).
Solution: For x c, X ( ) x , so that FX ( x) 0,
and for x c, X ( ) x , so that FX ( x) 1. (Fig.3.2)
FX (x)
1
c
x
Fig. 3.2
at a point of discontinuity we get
P X c FX (c) FX (c ) 1 0 1.
12
Example
Example 3.2: Toss a coin. H ,T .Suppose the r.v X is
such that X (T ) 0, X ( H ) 1. Find FX (x).
Solution: For x 0, X ( ) x , so that FX ( x) 0.
0 x 1, X ( ) x T , so that FX ( x) P T 1 p,
x 1, X ( ) x H , T , so that FX ( x) 1. (Fig. 3.3)
FX (x)
1
q
1
x
Fig.3.3
at a point of discontinuity we get
P X 0 FX (0) FX (0 ) q 0 q.
13
Example
Example:3.3 A fair coin is tossed twice, and let the r.v X
represent the number of heads. Find FX (x).
Solution: In this case
X ( HH ) 2, X ( HT ) 1, X (TH ) 1, X (TT ) 0.
x 0,
X ( ) x FX ( x) 0,
1
0 x 1, X ( ) x TT FX ( x) P TT P(T ) P(T ) ,
4
3
1 x 2, X ( ) x TT , HT , TH FX ( x) P TT , HT , TH ,
4
x 2, X ( ) x FX ( x) 1. (Fig. 3.4)
14
Example
FX (x)
1
3/ 4
1/ 4
1
x
2
Fig. 3.4
From Fig.3.4,
PX 1 FX (1) FX (1 ) 3 / 4 1 / 4 1 / 2.
15
Probability density function (p.d.f)
dFX ( x )
f X ( x)
.
dx
(3-21)
Since
dFX ( x )
FX ( x x ) FX ( x )
lim
0,
x 0
dx
x
from the monotone-nondecreasing nature of FX (x),
=>
f X ( x) 0
for all x
16
Probability density function (p.d.f)
f X (x) will be a continuous function, if X is a
continuous type r.v
if X is a discrete type r.v as in (3-20), then its p.d.f
f (x)
has the general form (Fig. 3.5)
X
f X ( x) pi ( x xi ),
xi
i
pi
xi
x
Fig. 3.5
represent the jump-discontinuity points in FX (x).
As Fig. 3.5 shows f X (x) represents a collection of
positive discrete masses, and it is known as the
probability mass function (p.m.f ) in the discrete
case.
17
Probability density function (p.d.f)
x
From (3-23),
FX ( x) f X (u)du.
Since FX () 1,
=>
f X ( x)dx 1,
P x1 X ( ) x2 FX ( x2 ) FX ( x1 ) f X ( x )dx. (3-22)
x2
x1
the area under f X (x) in the interval ( x1, x2 ) represents
the probability in (3-22).
FX (x)
f X (x)
1
x1 x2
(a)
x
x1 x2
(b)
x
18
Continuous-type random variables
1. Normal (Gaussian):
f X ( x)
1
2
FX ( x )
x
2
e
( x ) 2 / 2 2
1
2 2
e
(3-23)
.
( y ) 2 / 2 2
x
dy G
,
1 y /2
Where G ( x )
e
dy
2
the notation X N ( , 2 ) will be used to represent (3-23).
x
2
f X (x)
Fig. 3.7
x
19
Continuous-type random variables
2. Uniform:X U (a, b),
a b,
(Fig. 3.8)
1
, a x b,
f X ( x) b a
0, otherwise.
1
ba
(3.24)
f X (x)
a
b
x
Fig. 3.8
20
Continuous-type random variables
2. Exponential: X ( )
(Fig. 3.9)
1 x /
e
, x 0,
f X ( x)
0, otherwise.
f X (x)
(3.25)
note : X
x
Fig. 3.9
21
Exponential distribution
Assume the occurences of nonoverlapping
intervals are independent, and assume:
q(t): the probability that in a time interval t no
event has occurred.
x: the waiting time to the first arrival
Then we have: P(x>t)=q(t)
t1 and t2 : two consecutive nonoverlapping
intervals,
22
Exponential distribution
Then we have: q(t1) q(t2) = q(t1+t2)
The only bounded solution is:
q(t ) e t
Hence
FX (t ) P( X t ) 1 q(t ) 1 e t
So the pdf is exponential.
If
the occurrences of events over nonoverlapping intervals are
independent, the corresponding pdf has to be exponential.
23
Memoryless property of exponential distribution
Let s, t 0
. Consider the events
{x t s} and {x s}. Then
P{ X t s}
P{ X t s | X s}
P{ X s}
e
( t s )
s
e
(since {X t s} {X s})
e t P{ X t}
24
Continuous-type random variables
x
4. Gamma: X G( , ) if ( 0, 0) (Fig. 3.10)
x 1
x /
e
, x 0,
f X ( x ) ( )
0, otherwise.
( )
1 x
x
e dx
(3-26)
f X (x)
0
If
n an integer
(n ) (n 1)!.
Fig. 3.10
25
Continuous-type random variables
The exponential random variable is a special case of
gamma distribution with 1
The 2 (chi-square) random variable with n degrees
of freedom is a special case of gamma distribution
with
n / 2 and 2
26
Continuous-type random variables
5. Beta: X (a, b) if (a 0, b 0) (Fig. 3.11)
1
x a 1 (1 x )b1 , 0 x 1,
f X ( x ) ( a , b)
0,
otherwise.
(3-27)
where the Beta function (a, b) is defined as
( a, b)
1
0
f X (x )
0
x
1
Fig. 3.11
u a 1 (1 u ) b 1 du.
( a )(b)
( a b)
(3-28)
Beta distribution with a=b=1 is the uniform distribution on
(0,1).
27
6. Chi-Square: X 2 (n), if (Fig. 3.12)
1
x n / 21e x / 2 , x 0,
n/2
f X ( x ) 2 ( n / 2 )
(3-29)
0,
otherwise.
f X (x )
x
Fig. 3.12
Note that 2 (n) is the same as Gamma (n / 2, 2).
7. Rayleigh: X R( 2 ), if (Fig. 3.13)
2
2
x
2 e x / 2 , x 0,
f X ( x )
0, otherwise.
f X (x )
(3-30)
x
Fig. 3.13
8. Nakagami – m distribution:
2 m m 2 m 1 mx 2 /
x e
, x0
f X ( x ) ( m )
0
otherwise
(3-31)
28
f X (x )
9. Cauchy: X C ( , ), if (Fig. 3.14)
f X ( x)
/
(x )
2
2
, x .
x
(3-32)
Fig. 3.14
10. Laplace: (Fig. 3.15)
f X ( x)
1 |x|/
e
, x .
2
(3-33)
11. Student’s t-distribution with n degrees of freedom (Fig 3.16)
f T (t )
( n 1) / 2
t
1
n
n ( n / 2)
2
f X ( x)
( n 1) / 2
, t .
fT ( t )
x
Fig. 3.15
(3-34)
t
Fig. 3.16
29
12. Fisher’s F-distribution
{( m n ) / 2} m m / 2 n n / 2
z m / 2 1
, z0
(mn) / 2
f z ( z)
( m / 2) ( n / 2)
( n mz )
(3-35)
0
otherwise
30
Discrete-type random variables
1. Bernoulli: X takes the values (0,1), and
P( X 0) q,
P( X 1) p.
2. Binomial: X B(n, p), if (Fig. 3.17)
(3-36)
(3-37)
n k n k
P( X k )
, k 0,1,2,, n.
k
p q
P( X k )
12
n
k
The probability of k
successes in n experiments
with replacement (in ball
drawing)
Fig. 3.17
31
Discrete-type random variables
3. Poisson: X P( ) , if (Fig. 3.18)
P( X k ) e
k
k!
, k 0,1,2,, .
(3-38)
P( X k )
k
Fig. 3.18
32
Discrete-type random variables
Poisson distribution represents the number of
occurrences of a rare event in a large number of trials.
Pk P( X k )
Pk 1 e k 1 /( k 1)! k
k
Pk
e / k!
Pk Increasing with k from 0 to λ and decreasing after
that.
33
4. Hypergeometric:
P( X k )
m
k
N m
n k
,
N
n
max(0, m n N ) k min( m, n )
(3-39)
The probability of k successes in n experiments without
replacement (ball drawing)
5. Geometric: X g ( p ) if
P( X k ) pqk , k 0,1,2,, ,
q 1 p.
(3-40)
34
6. Negative Binomial: X ~ NB (r, p), if
k 1 r k r
P( X k )
p q ,
r 1
k r, r 1,
.
(3-41)
7. Discrete-Uniform:
1
P( X k )
, k 1,2,, N .
N
(3-42)
35