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Statistic course Cheat Sheet, Cheat Sheet of Statistics

Which test to use with given data? Correlation and regression, chi square test and more

Typology: Cheat Sheet

2020/2021

Uploaded on 04/26/2021

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STATS CHEAT SHEET
How do I decide which test to use?
What type of data do I have?
Continuous Data Only Categorical/Nominal data and Continuous data
Do I know the population and ?
Yes
Run a Z - Test
No
No
Do I know the population ?
Yes
Run a Single
Sample T-test
- Use Sample
St. Dev. to predict
Run Correlation and/
or Regression
analysis
Do I have Independent Samples/Conditions?
Yes
No
Run a Paired Samples
T-Test
- aka Matched, Dependent,
Test-Retest
Do I have 2 conditions
or More conditions?
2 Conditons
Run an Independent Samples T-Test
- Look for experimental groups
- Clues: Unequal N’s or Random
Assignment to one or other group
3 or more Conditions
Run an ANOVA
- Look for experimental groups
- Clues: Unequal N’s or Random
Assignment to one or other group
Nominal (Frequency) Data
Run a Chi Square
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STATS CHEAT SHEET

How do I decide which test to use?

What type of data do I have?

Continuous Data Only Categorical/Nominal data and Continuous data

Do I know the population  and ?

Yes

Run a Z - Test

No

No

Do I know the population ?

Yes

Run a Single

Sample T-test

  • Use Sample

St. Dev. to predict 

Run Correlation and/

or Regression

analysis

Do I have Independent Samples/Conditions?

Yes No

Run a Paired Samples

T-Test

  • aka Matched, Dependent,

Test-Retest

Do I have 2 conditions

or More conditions?

2 Conditons

Run an Independent Samples T-Test

  • Look for experimental groups
  • Clues: Unequal N’s or Random

Assignment to one or other group

3 or more Conditions

Run an ANOVA

  • Look for experimental groups
  • Clues: Unequal N’s or Random

Assignment to one or other group

Nominal (Frequency) Data

Run a Chi Square

Z-TESTS

In order to run a Z-Test you must be provided with

  • Population 
  • Population 

Equation:

N

Z X

 /

  

Critical Z-Test values:

1-Tailed 2-Tailed

α = .05 1.64 1.96/-1.

α = .01 2.33 2.58/-2.

PAIRED SAMPLES T-TEST

Paired Samples T-Tests:

  • Are also known as Dependent or Matched T-Tests
  • Do not utilize population parameters, rather are a comparison of scores from a single

sample measured across time

  • Look for key words such as “Test-retest”; “Pre-Post”; “Same individuals tested”

Equations:

S N

t D

D

/

  

   

1

/

2 2

 

N

D D N

S

D df = N - 1

Confidence Intervals: D  t  S N 

crit D

INDEPENDENT SAMPLES T-TEST

(N’s Equal)

Independent Samples T-Tests:

  • Are used to compare 2 Independent groups
  • Have experimental groups / conditions
  • May have unequal N’s
  • Look for key words such as “Experiment”; “Conditions”; “Random Assignment to

one condition or another”

Equations:

 

2

2

2

1

2

1

1 2

( )

n

S

n

S

t X X

2 2 2

N

S x x N

N = n 1

  • n 2

df = N - 2

Confidence Intervals:

2

2

2

1

2

1

1 2

n

S

n

S

X X t

crit

ANOVA

AN alysis O f VA rience:

  • Are virtually the same thing as an Independent T-Test except that there are more than

2 conditions

  • Accounts for possible inflation of the  level by dividing the  level between all

possible comparisons (i.e. 3 conditions = /3 .:  of 0.017 per comparison)

Equations:

Source

Sums of Squares

(SS)

df

Mean Square Error

(MS)
F

Between =

   

N

X

n

X

tot

k

i

i

2

1 1

2

k-1 =

Btwn

Btwn

df

SS

Within

Btwn

MS
MS

Within SS

Tot

- SS

Btwn

N-k

Within

Within

df

SS
OR

 

 

N

n S

i i

2

Total =

   

 

N

X X

tot tot

2 2

N-

Estimating the Magnitude of Experimental Effect:

(eta) =

TOT

TOT WITHIN

SS
SS  SS

2

(omega) =

   

TOT WITHIN

BTWN WITHIN

SS MS

SS k MS

2

CHI SQUARE

Chi Square:

 Is used when you have ordinal data

 You are using the obtained data to make a prediction about what the relationship

would have been if there were no difference between the groups

Equations:

E

O E

2

2

( )

N

R C

E

i j

ij

df ( R  1 )( C  1 )

Likelihood Ratio: 

 

ij

ij

R C ij

E

O

2 O ln

2

( 1 )( 1 )

Measures of Association:

 Used to test the strength of the relationship

Phi: (2 by 2)

N

2

 

Cramér’s Phi: (X by X)

( 1 )

2

N k

C

Odd’s Ratio: (2 by 2)

j

i

C
R
P 
POWER

Power Calculations:

 What is the probability of correctly rejecting a false H

0

 Power is a function of:

o

 level

o

H

1

o

Sample size

o

Test statistic used

 Where n is unknown, used the power table to estimate  on a given  level.

Power for 1 sample

Effect Size Noncentrality parameter Estimating Required Sample Size

1 0

d   dn

2

d

n

Power for 2 samples (N’s Equal)

Effect Size Noncentrality parameter Estimating Required Sample Size

1 0

d

2

n

 d

2

2 

 

d

n

Power for 2 samples (N’s Unequal)

Effect Size

*Where  is pooled

Harmonic N Noncentrality parameter Estimating Required Sample Size

1 0

d

1 2

1 2

n n

n n

n h

2

n h

 d

2

2 

 

d

n

Power when  is known

Effect Size Noncentrality parameter Estimating Required Sample Size

1

d   1

1

    N

1

2

1

n