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A Statistics Summary Cheat Sheet , Cheat Sheet of Statistics

Cheat Sheet of Statistics with Formulas, Distributions and Concepts

Typology: Cheat Sheet

2019/2020

Uploaded on 10/09/2020

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A Statistics Summary-sheet
Sampling Conditions Confidence Interval Test Statistic
σ2 is known
X
N (µ, σ2/n)
±n
ZX
σ
α
2/ n
X
Z/
0
σ
µ
=
Yes
σ2 is unknown
X
N (µ, σ2/n)
±n
s
ZX 2/
α
ns
X
Z/
0
µ
=
Is n is large, say over 30?
±n
pp
Zp )1(
2/
α
n
pp
pp
Z)1( 00
0
=
No X N (µ, σ2) and σ2 is known
X
N (µ, σ2/n)
±n
ZX
σ
α
2/ n
X
Z/
0
σ
µ
=
X N (µ, σ2) and σ2 is unknown
X
tn-1 (µ, σ2/n)
±n
s
tX n2/,1
α
ns
X
tn/
0
1
µ
=
If n is not large, say over 30 and X is not
N (µ
µµ
µ, σ
σσ
σ2), cannot proceed with parametric statistics.
pf3
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A Statistics Summary-sheet

Sampling Conditions

Confidence Interval

Test Statistic

(^2) σis known

⇒^

X^ ∼^

N (μ

(^2) , σ/n)

  ±^

n Z X

σ α^2 /

n X Z^

μ−^0 / σ

Yes

(^2) σis unknown

⇒^

X^ ∼

N (μ

(^2) , σ/n)

  ±^

s n Z X^

(^2) / α

ns X Z^

μ−^0 /

Is n is large, say over 30?

  ^ 

±^

pp n

Zp

) (^1) ( (^2) / α

pp pp n Z^

) (^1) (

0 0 −^0 − =

No^

X^ ∼^

N (μ

(^2) , σ) and

(^2) σis known

⇒^

X^ ∼

N (μ

(^2) , σ/n)

  ±^

n Z X

σ α^2 /

n X Z^

μ−^0 / σ

X^ ∼^

N (μ

(^2) , σ) and

(^2) σis unknown

⇒^

X^ ∼

tn-^

(μ,^ σ

2 /n)^

  ±^ −

s^ n t X^

n^

(^2) /, 1 α

ns X tn

(^0) / 1

μ− =−

If n is not large, say over 30 and X is not

∼∼∼∼^ N (

μμμμ ,^ σσσσ

2 ), cannot proceed with parametric statistics.

Formulas, Distributions, and Concepts

Counting and Probabilities

)!x !n n( Pxn

− =^

Permutations )!x !n n(!x

Cxn

− =^

Combinations )B( P

)B A(P )B| A(P

∩ =^

Conditional Probability^ )B(P) B|A (P )B A(P

= ∩^

Probability of an Intersection

Discrete Probability Distributions

xn x

x^

)p (^1) (p )!x !n n(!x )x( P^

− − − =^

Binomial Probability

! )( e x xP

x x

μ−^ μ =^

Poisson Probability

Continuous Probability Distributions Random Variable

∼^ Distribution (mean, variance)

Standard Normal

Z^ ∼

N(0,1)

s n

t X^

n^

) (^2) / , 1 (

α− ±^

If population is normal, population variance is unknown. p n p z p^

) (^2) / (

α^

If n^

≥30.^222 (^211) ) (^2) / ( ) (^

n n z Y X

α^

−^

If independent samples and either population variance known, or n

≥30 in which case, substitute sample

variance for population variance.

^ 

−^

2 1 2 ) (^2) / , 2

(

(^

n n s

t Y X^

Y nnX

α^

where

2 1

(^22) 2 (^21) 1 2

=^

n n

s n s n s^

If independent samples, population variances unknown, but statistically equal.

Estimating Sample Size

22 /2 2 E

z n

=^

For estimation and CI for the population mean, normal population,

(^2) σknown, or estimated by a pilot run. E = absolute error.

Hypothesis Testing 1. Set up the

appropriate

null which must be in equality form, always and alternative hypotheses.

  1. Define the rejection area. Take care as to whether the test is one-tailed or two-tailed. Look to the alternative hypothesis todetermine this.3. Calculate the test statistic.4. State Decision.5. Interpret your conclusion. Hypothesis Testing

(test statistics and their distributions under the null)

-^ n X^

0

μ^

z^^ α

When population variance known, or if n

≥30, substitute

s^ for

σ.

-^ n X^

0 μ s

tn-1,

When If population is normal, population variance unknown.α

or if the treatment sample sizes are all equal,

X k X

k j

j

∑^ =^1 =

(^1) − SSTR = k MSTR

(^

∑^ =

k = j

j j^

X Xn

SSTR

1

2

k SSEn MSE

T =^

∑^ =

k = j

j j^

s n

SSE

1

(^2) ) 1 (

MSTR^ MSE F^ =

∼^

knT F^ k

− −^ ,^1

Terms and Concepts Central Limit Theorem: If the sample size

n^ is large, say n

≥30 no matter what the population distribution is, the sampling

distribution of the sample mean tends towards the normal as

n^ gets large.