14-ma`ruza. Variance and Standard Deviation


Download 342.94 Kb.
bet3/3
Sana22.10.2023
Hajmi342.94 Kb.
#1715220
1   2   3
Bog'liq
14-ma`ruza.Variance and Standard Deviation

Theorem A.19 (limit theorem of de Moivre–Laplace)21 If the probability of the occurrence of an event A in n independent trials is constant and equal to p, 0 < p < 1, then the probability P (X = x) that, in these trials, the event A occurs exactly x times satisfies as n →∞ the relation



2π

2
np(1 − p)
,np(1 − p)P(X = x) 1 e 1 y2 → 1, where y = √ x np .


The convergence is uniform for all x for which y lies in an arbitrary finite inter- val (a, b).

This theorem allows us to approximate the probabilities of the binomial distribu- tion for large n by



= = −

n
x; 0 ≤ x n:
P (X x) px(1 p)nx x
1 (x np)2

2π np(1 − p) exp

P (X = x) Φ



2

Φ
x np + 1
or
2np(1 − p)



2

and
x np 1




np(1 − p)
x1, x2; 0 ≤ x1x2n:

P (x1X x2) Φ



2
x2np + 1



np(1 − p)

Φ



2

,
x1np 1




np(1 − p) np(1 − p)
where Φ is the distribution function of the standard normal distribution. The ap- proximation is reasonably good for np(1 − p) > 9.


        1. The χ2 Distribution


If one forms the sum of m independent, standard normally distributed random vari- ables (expected value 0 and variance 1), one obtains a random variable X with the density function

0 m


m


for x < 0,
x



fX(x; m) =
1
m
2 2 ·Г( 2 )
· x 2 1 · e 2 for x ≥ 0,

21This theorem bears its name in recognition of the French mathematicians Abraham de Moivre (1667–1754) and Pierre-Simon de Laplace (1749–1827).

    1. Inferential Statistics 349

where Г is the so-called Gamma function (generalization of the factorial)


Г(x) = ∫ ∞ tx1et dt

0


for x > 0. This random variable is said to be χ2-distributed with m degrees of free- dom. The expected value and variance are
E(X) = m; D2(X) = 2m.
The χ2 distribution plays an important role in the statistical theory of hypothesis testing (see Sect. A.4.3), for example, for independence tests.
        1. The Exponential Distribution


A random variable X with the density function




αe

αx for x > 0,
fX(x; α) = 0
for x ≤ 0,

with α > 0 is said to be exponentially distributed with parameter α. Its distribution function FX is

FX(x; α) = 0
for x ≤ 0,

1 − e
The expected value and variance are
αx for x > 0.


α

α2
μ = E(X) = 1 ; σ 2 = D2(X) = 1 .
The exponential distribution is commonly used to model the durations between the arrivals of people or jobs that enter a queue to wait for service or processing.
Download 342.94 Kb.

Do'stlaringiz bilan baham:
1   2   3




Ma'lumotlar bazasi mualliflik huquqi bilan himoyalangan ©fayllar.org 2024
ma'muriyatiga murojaat qiling